SPIE Defence, Security+Sensing
25 - 29 April 2011
Orlando World Center Marriott Resort & Convention Center
Orlando, Florida, USA
Hyperspectral Optics and Systems request
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Long-wave infrared (8 to 14 μm) hyperspectral imager based on an uncooled
thermal camera and the traditional CI block interferometer
Paper 8012-108 of Conference 8012
Date: Friday, 29 April 2011
Author(s): Dario Cabib, Moshe Lavi, Amir Gil, CI Systems (Israel) Ltd.
(Israel)
Since the early '90's CI has been involved in the development of FTIR
hyperspectral imagers based on a Sagnac or similar type of interferometer.
CI also pioneered the commercialization of such hyperspectral imagers in
those years. After having developed a visible version based on a CCD and a 3
to 5 micron infrared version based on a cooled InSb camera, it has now
developed an LWIR version based on an uncooled infrared camera for the 8 to
14 microns range. The system has applications in gas cloud imaging among
others. In this paper we will present the design and performance of the
system.
Compact high-resolution VIS/NIR hyperspectral sensor
Paper 8032-31 of Conference 8032
Date: Tuesday, 26 April 2011
Author(s): Timo Hyvärinen, Esko Herrala, Specim Spectral Imaging Ltd.
(Finland)
This paper presents an extremely compact and high performance push-broom
hyperspectral imager operating in the VIS/NIR region (380 to 1000 nm). The
imager weighs only 1.4 kg, and has a format optimized for installation in
small UAV payload compartments and gimbals. It features high light
throughput, negligible keystone and smile distortion, 1300 spatial pixels
and image rate of 200 Hz. A higher resolution version with 2000 spatial
pixels runs at up to 120 images/s. The camera achieves, with spectral
sampling of 5 nm, an outstanding SNR of 800:1, orders of magnitude higher
than any current compact VIS/NIR imager.
Visible/near-infrared hyperspectral sensing of solids under controlled
environmental conditions
Paper 8018-20 of Conference 8018
Date: Wednesday, 27 April 2011
Author(s): Bruce E. Bernacki, Norman C. Anheier, Jr., Albert Mendoza,
Bradley G. Fritz, Timothy J. Johnson, Pacific Northwest National Lab.
(United States)
We describe the use of a wind tunnel for conducting controlled passive
hyperspectral imaging experiments. Passive techniques are potentially useful
for detecting explosives, solid-phase chemicals and other materials of
interest from a distance so as to provide operator safety. The Pacific
Northwest National Laboratory operates a wind tunnel facility that can
generate and circulate artificial atmospheres to control lighting, humidity,
temperature, aerosol burdens, and obscurants. We will present recent results
describing optimized sensing of solids over tens of meters distance using
both visible and near-infrared cameras, as well as the effects of certain
environmental parameters on data retrieval.
Toward integration of AOTF-based hyperspectral imager in visual surveillance
applications
Paper 8048-25 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Sergiy Fefilatyev, Univ. of South Florida (United States); Ronald
G. Rosemeier, Brimrose Corp. of America (United States)
Such characteristics as small form-factor, portability, and low-cost have
made AOTF-based hyperspectral imagers attractive for use in many
applications. This paper explores several aspects of the use of AOTF-based
hyperspectral imagers in visual surveillance. We present the implementation
of the low-cost miniaturized hyperspectral imaging device based on
AOTF-filter. The techniques of calibration, image acquisition, and
hyperspectral data processing for such device are shown. In experimental
part we report on the results of experiments to discriminate materials in
hyperspectral images of static outdoor scenes and discuss the extension of
such application to certain dynamic scenes by integrating it with
conventional surveillance equipment.
Visualization of hyperspectral images using bilateral filtering with
spectral angles
Paper 8050-70 of Conference 8050
Date: Tuesday, 26 April 2011
Author(s): Jai-Hoon Lee, Ayoung Heo, Won-Chul Choi, Seo Hyun Kim, Dong-Jo
Park, KAIST (Korea, Republic of)
In this paper, a new bilateral filter with spectral angles and a
visualization scheme for hyperspectral images are presented. The
conventional bilateral filter used to be implemented using a position vector
and the intensity value at each pixel in the scene. Since hyperspectral
image data can provide a spectrum vector which has hundreds of bands at each
pixel, we propose a bilateral filter by using spectral angles. This
bilateral filter with spectral angles can be used for extracting and
preserving the spectrum edges of the hyperspectral image. The visualization
scheme for hyperspectral images exploiting the bilateral filter with
spectral angles has been also proposed. The simulation results show that the
proposed scheme facilitates the anomaly detection and classification of
objects in the hyperspectral scenes.
Generalized fusion: a new framework for hyperspectral detection
Paper 8048-1 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Peter Bajorski, Rochester Institute of Technology (United States)
The purpose of this paper is to introduce a general type of detection fusion
that allows combining a set of basic detectors into one, more versatile,
detector. The new approach shown in this paper is especially promising in
the context of recent geometric and topological approaches that produce
complex structures for the background and target spaces. We show specific
examples of generalized fusion and present some results on false alarm rates
and probabilities of detection of fused detectors. We show that Alan
Schaum's continuum fusion is a special case of generalized fusion.
Log-linear Laplacian ratio (LLLR) algorithm for spectral detection using
laboratory signatures
Paper 8048-3 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Brian J. Daniel, Alan P. Schaum, U.S. Naval Research Lab. (United
States)
The potential of a new class of detection algorithms is demonstrated with
the publically available RIT test data set. The continuum fusion (CF)
methodology is applied to an affine target subspace model, which assumes
that uncertainty in prediction of in-situ signature spectra from laboratory
spectra is mostly confined to a one-dimensional region. The new algorithm
results from imposing a CF methodology on a conventional GLRT-based
algorithm. Performance is enhanced in two ways. First the Gaussian clutter
model is replaced by a Laplacian distribution, which is not only more
realistic in its tail behavior but, when used in a hypothesis test, also
creates decision surfaces more selective than the hyperplanes associated
with linear matched filters. Second, a log-Laplacian fusion flavor is
devised that further increases the selectivity of decision surfaces to the
point where outliers are also rejected.
Algorithm for detecting anomaly in hyperspectral imagery using factor
analysis
Paper 8048-4 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Edisanter Lo, Susquehanna Univ. (United States)
Hyperspectral imaging is particular useful in remote sensing to identify a
small number of unknown man-made objects in a large natural background. An
algorithm based on factor analysis for detecting such anomalies in a
high-dimensional data set from hyperspectral imagery and its performance in
comparison with conventional algorithms are presented in this talk. Under
the factor model, each observable component of the background pixel is
postulated to be a linear function of a few unobservable common factors with
unknown factor loadings plus a single latent specific variate. The
covariance of the pixel is assumed to be in factored form which is a product
of the loading matrix and its transpose plus the diagonal covariance matrix
of the specific variates. The anomaly detector is defined to be the
Mahalanobis distance of the resulting residual between the pixel and its
predicted value. Experimental results using Visible-Near-Infra-Red
hyperspectral imagery are presented.
Extension and implementation of model-based hyperspectral change detection
Paper 8048-5 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Joseph Meola, Air Force Research Lab. (United States)
Within the hyperspectral community, change detection is a continued area of
interest as it provides an avenue for detecting subtle CC&D targets in
complex environments. Complicating the problem of change detection is the
presence of shadow differences and parallax/misregistration error between
the scenes which often produce the appearance of change. The change
detection problem can be formulated using a physical model describing the
illumination reaching the sensor on separate occasions. Here the model-based
approach is extended to include spatial information present in the scene to
help with the problems associated with misregistration/parallax and to help
improve shadow estimates associated with the model.
Hierarchical image segmentation for context-dependent anomalous change
detection
Paper 8048-6 of Conference 8048
Date: Monday, 25 April 2011
Author(s): James Theiler, Lakshman Prasad, Los Alamos National Lab. (United
States)
The challenge of finding small targets in big images lies in the
characterization of the background clutter. The more homogeneous the
background, the more distinguishable a typical target will be from its
background. One way to homogenize the background is to segment the image
into distinct regions, each of which is individually more homogeneous, and
then to treat each region separately. In this paper we will report on
experiments in which the target is an anomalous change, and the segmentation
strategy is a hierarchical tree-based scheme.
Change detection using mean-shift and outlier-distance metrics
Paper 8048-7 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Joshua D. Zollweg, Rochester Institute of Technology (United
States); David B. Gillis, U.S. Naval Research Lab. (United States); Ariel
Schlamm, David W. Messinger, Rochester Institute of Technology (United
States)
Change detection with application to wide-area search seeks to identify
where interesting activity has occurred between two images. Since there are
many different classes of change, one metric may miss a particular type of
change. Therefore, it is potentially beneficial to select metrics with
complementary properties. With this idea in mind, a new change detection
scheme was created using mean-shift and outlier-distance metrics. Using
these metrics in combination should identify change more completely than
either individually. An algorithm using both metrics was developed and
tested using registered sets of multi and hyperspectral imagery.
Large scale micro-Fabry-Perot optical filter arrays
Paper 8054-4 of Conference 8054
Date: Monday, 25 April 2011
Author(s): Ali A. Abtahi, Aerospace Missions Corp. (United States); Peter B.
Griffin, Stanford Univ. (United States); Ricky J. Morgan, Usha Raghuram,
Aerospace Missions Corp. (United States); Francisco Tejada, Sensing Machines
(United States); Frida S. Vetelino, Aerospace Missions Corp. (United States)
Fabry-Perot filter arrays have been fabricated comprised of six million
individual filters using standard semiconductor processing techniques. The
current 3000 x2000 array consists of 5x5 subarrays in which each of the nine
micron wide Fabry-Perot filters in the subarray has a different color
response. The 5x5 subarray is replicated to create a 600x400 matrix of 5x5
micro Fabry-Perot filter subarrays. This Fabry-Perot matrix has been
integrated with a commercially available panchromatic 6 megapixel CCD focal
plane array to create a 25 color hyperspectral camera with 600x400 imaging
pixels. Near- UV, visible and NIR filter arrays have been fabricated.
Anomaly detection of man-made objects using spectro-polarimetric imagery
Paper 8048-11 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Brent D. Bartlett, Ariel Schlamm, Carl Salvaggio, David W.
Messinger, Rochester Institute of Technology (United States)
In the task of automated anomaly detection, it is desirable to find regions
within imagery that contain man-made structures or objects. In the task of
automated anomaly detection, it is desirable to find regions within imagery
that contain man-made structures or objects. The task of separating these
signatures from the scene background and other naturally occurring anomalies
can be challenging. This task is even more difficult when the spectral
signatures of the man-made objects are designed to closely match the
surrounding background. As new sensors emerge that can image both spectrally
and polarimetrically, it is possible to utilize the polarimetric signature
to discriminate between many types of man-made and natural anomalies. In
this work, an anomaly detection scheme is implemented which makes use of the
spectral Stokes imagery collected of a real scene to find man-made objects.
Smart compression using high-dimensional imagery
Paper 8063-10 of Conference 8063
Date: Monday, 25 April 2011
Author(s): Dalton S. Rosario, U.S. Army Research Lab. (United States)
We present a method for the disadvantaged user (Warfighter remotely carrying
low bandwidth devices), featuring "smart" compression of high dimensional
imagery from passive hyperspectral (HS) sensors. The method uses the
application of anomaly detection closer to the sources, transmitting only
the essential information (spectral anomalies) to the users for further
analysis. The method's uniqueness relies on a binomial distribution model
for spectral sampling. Its advantages over existing methods, includes (i) no
prior imagery segmentation requirement, (ii) little sensitivity to its free
parameter, and (iii) no prior knowledge of target scales. Experimentation
results using HS imagery are promising for smart compression.
Target detection using multiple hyperspectral imagers and physics-based
models
Paper 8048-13 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Emmett Ientilucci, John P. Kerekes, Rochester Institute of
Technology (United States); Arnab Shaw, Gitam Technologies (United States)
The use of multiple hyperspectral imagers will be explored with applications
to target detection.
An automated method for identification and ranking of hyperspectral target
detections
Paper 8048-14 of Conference 8048
Date: Monday, 25 April 2011
Author(s): William F. Basener, Rochester Institute of Technology (United
States)
The basic process of target detection is to apply a detection filter to a
hyperspectral image to produce a detection plane for each target. We will
present a new method for target detection that includes additional spatial
processing, multiple detection and identification metrics such as F-Test,
ACE, unmixing and sub-pixel spectral visualization to build a more complete
understanding of the image. The result is a draft detection report of the
objects in the image ranked according to the confidence of the
identification of each object. This method can be used for faster ground
processing as well as on board processing, and the detection reports are
much smaller than the image files enabling fast communication to users.
Enhancement of flow-like structures in hyperspectral imagery using
anisotropic diffusion
Paper 8048-15 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Maider Marin-McGee, Miguel Velez-Reyes, Univ. de Puerto Rico
Mayagüez (United States)
In this work, we are studying nonlinear anisotropic diffusion filtering for
enhancement of flow-like structures, or coherence enhancement, in
hyperspectral and multispectral imagery. Anisotropic diffusion is commonly
used for edge enhancement by promoting diffusion in the direction of highest
fluctuation of the contrast average within a neighborhood. For CE, the
diffusion is promoted along the direction of lowest fluctuation in the
neighborhood to account for the coherence of the structures in the image.
This paper presents the theoretical development for the coherence
enhancement algorithm using a diffusion PDE. Examples using hyperspectral
and multispectral imagery are presented.
Image mapping spectrometry: a novel hyperspectral platform for rapid
snapshot imaging
Paper 8048-21 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Tomasz S. Tkaczyk, Rice Univ. (United States)
This paper presents the Image Mapping Spectrometry a new snapshot
hyperspectral imaging platform. Its applications span from basic science
microscopy implementations through endoscopic diagnostics and reach to
remote sensing use. The IMS replaces the camera in a digital imaging system,
allowing one to add parallel spectrum acquisition capability and to maximize
the signal collection. As such the IMS allows obtaining full spectral
information in the image scene instantaneously at rates of 100 frames/second
or higher. This presentation provides fundamentals of IMS operations based
on image mapping, describes examples of designs and demonstrates the
platform flexibility for use in numerous applications.
A Fabry-Perot interferometer with a spatially variable resonance gap
employed as a Fourier transform spectrometer
Paper 8048-22 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Paul G. Lucey, Univ. of Hawai'i (United States); Jason Akagi,
Spectrum Photonics, Inc. (United States)
We demonstrate a Fourier transform spectrometer (FTS) using a stationary
Fabry-Perot interferometer with the gap between its partially reflecting
layers varying orthogonal to the optical axis to produce a gradient in
optical path different at a detector. The gradient produces a period fringe
pattern that can be analyzed with standard FTS techniques. The device has
some limitations in spectral resolution owing to the influence of incidence
angle on the Fabry-Perot interferometer and these are quantified.
Experiments in the visible and IR demonstrate the feasibility of this method
for spectroscopy.
Estimation of the attenuation coefficient of the water body using
polarimetric observations
Paper 8030-2 of Conference 8030
Date: Tuesday, 26 April 2011
Author(s): Alberto Tonizzo, Tristan Harmel, Amir Ibrahim, Alex Gilerson,
Samir Ahmed, The City College of New York (United States)
The degree of polarization (DOP) of the underwater light field in oceanic
waters is related to the single scattering albedo of suspended particles
which in turn represents the ratio of the scattering coefficient to the
attenuation coefficient. The validity of the above approach for the whole
visible spectral range was recently confirmed by us using experimental data
obtained with our recently developed underwater polarimeter. This then opens
up the possibility for estimation of attenuation coefficients from
measurements of the Stokes components of the upwelling underwater light
field which is not possible from unpolarized measurements of the remote
sensing reflectance. Results of simulations using vector radiative transfer
code are compared with below and above water experimental observations to
assess the validity of the results.
The enhanced MODIS airborne simulator hyperspectral imager
Paper 8048-23 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Daniel Guerin, Ted Graham, John Fisher, Brandywine Optics, Inc.
(United States)
The NASA Enhanced MODIS Airborne Simulator Hyperspectral Imager (EMAS-HSI)
is designed to augment the resolution and monitor the radiometric stability
of the existing MODIS Airborne Simulator (MAS). The system is designed for
missions on the ER-2 and Global Hawk platforms. EMAS-HSI is a push-broom
system that uses two Offner spectrometers to cover the 380-2400 nm spectral
range, sharing the FOV of an all-reflective telescope with at 50° full
field-of-view. The EMAS-HSI system performance trades optimize system
performance in the spectral regions used by the multi-spectral MODIS
satellite, with land, cloud, atmospheric and water bands given the greatest
deference.
An interference microfilter array with tunable spectral response for each
pixel
Paper 8048-24 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Frida E. Strömqvist Vetelino, Ali A. Abtahi, Aerospace Missions
Corp. (United States); Peter B. Griffin, Stanford Univ. (United States);
Ricky J. Morgan, Usha Raghuram, Aerospace Missions Corp. (United States);
Francisco Tejada, Sensing Machines (United States)
A MEMS standing wave spectrometer is turned into a wavelength tunable
band-pass filter by the addition of a reflective coating. It results in the
standing wave filter (SWF), a miniaturized Fabry-Perot band-pass filter with
a semi-transparent detector that can be incorporated into a pixel-tunable
focal plane array, suitable for hyperspectral imaging applications. The
performance of the SWF is optimized with thin film optics modeling and FDTD
simulations. The SWF concept is taken from an ideal device to a design that
can be fabricated. The limiting factors of the SWF are discussed. A
comparison between design and fabricated components is included.
Standoff identification and quantification of flare emissions using infrared
hyperspectral imaging
Paper 8024-29 of Conference 8024
Date: Tuesday, 26 April 2011
Author(s): Kevin C. Gross, Air Force Institute of Technology (United
States); Simon Savary, Telops (Canada); Pierre Tremblay, Univ. Laval
(Canada); Jean-Philippe Gagnon, Vincent Farley, Martin Chamberland, Telops
(Canada)
There is growing interest in measuring gaseous emissions to understand their
environmental impact. It is thus desired to identify and quantify such
emissions, ideally from standoff distances. AFIT and Telops have performed
several field experiments, using the Telops Hyper-Cam infrared hyperspectral
imager to perform identification and quantification of gaseous emissions
from various pollution sources. Recent experiments have focused on turbulent
gaseous emissions from sources of great interest from the environmental
protection community, such as emergency flares. It is of interest to
understand the flare emissions under varying operating conditions. This
paper presents the first results of flare emission measurements with the
Hyper-Cam.
Hyperspectral processing in graphical processing units
Paper 8048-27 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Michael E. Winter, Edwin Winter, Technical Research Associates,
Inc. (United States)
With the advent of the commercial 3D video card in the mid 1990s, we have
seen an order of magnitude performance increase with each generation of new
video cards. While these cards were designed primarily for visualization and
video games, it became apparent after a short while that they could be used
for scientific purposes. These Graphical Processing Units (GPUs) are rapidly
being incorporated into data processing tasks usually reserved for general
purpose computers. It has been found that many image processing problems
scale well to modern GPU systems. We have implemented four popular
hyperspectral processing algorithms (N-FINDR, linear unmixing, Principal
Components, and the RX anomaly detection algorithm). These algorithms show
an across the board speedup of at least a factor of 10, with some special
cases showing extreme speedups of a hundred times or more.
Modeling of pixel edge effects in a novel micro-filter array for the visible
spectrum
Paper 8014-1 of Conference 8014
Date: Tuesday, 26 April 2011
Author(s): Frida E. Strömqvist Vetelino, Ali A. Abtahi, Aerospace Missions
Corp. (United States); Peter B. Griffin, Stanford Univ. (United States);
Ricky J. Morgan, Usha Raghuram, Aerospace Missions Corp. (United States)
The modeling of a novel hyperspectral filter array for the visible spectrum,
constructed of an array of micron sized Fabry-Perot band-pass filters, is
presented. Each filter forms a squared cavity pixel, less than 10 µm wide,
resonating at a different wavelength than the neighboring pixels. To study
pixel edge effects and pixel cross-talk, 2D FDTD simulations were carried
out. Extensive modeling was done for a cavity array with several pixels, and
sloped cavity edges were compared to vertical ones. Comparisons of the peak
power and spectral bandwidth were made between a finite pixel cavity and a
cavity of infinite extent.
A thermal infrared hyperspectral imager for small satellites
Paper 8044-24 of Conference 8044
Date: Tuesday, 26 April 2011
Author(s): Sarah T. Crites, Paul G. Lucey, Robert Wright, Univ. of Hawai'i
(United States)
The Thermal Hyperspectral Imager (THI) is a sensor funded by the NASA EPSCOR
(Experimental Project to Stimulate Competitive Research) program and fits
into the niche for low-cost, short-lived experimental missions created by
the growth of the small satellite market. THI is a low-mass, power efficient
thermal hyperspectral imager integrated with a pressure vessel to enable the
use of COTS components. THI is based on a Sagnac interferometer, uses a
320x256 microbolometer array, and will collect data at thermal infrared
wavelengths in 230-meter pixels with 20 wavenumber spectral resolution from
a 400-km Earth orbit.
Evaluation of the GPU architecture for the implementation of target
detection algorithms for hyperspectral imagery
Paper 8048-28 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Blas Trigueros-Espinosa, Miguel Velez-Reyes, Nayda G.
Santiago-Santiago, Univ. de Puerto Rico Mayagüez (United States)
Target detection in hyperspectral imagery involves processing of large
volumes of data, which require hardware platforms with high computational
power. In this work, we study the use of Graphics Processing Units (GPUs) as
a computing platform for the implementation of target detection algorithms.
The GPU implementation was done using the Compute Unified Device
Architecture (CUDA) of the NVIDIA GPUs and compared with a multi-core
CPU-based implementation. The detection accuracy of the implemented
algorithms was evaluated using a set of phantom images simulating traces of
different materials on clothing as models for detection of traces of
explosives.
Parallel implementation of nonlinear dimensionality reduction methods using
CUDA in GPU architecture
Paper 8048-29 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Romel Campana, Vidya B. Manian, Univ. de Puerto Rico Mayagüez
(United States)
Manifold learning are important techniques to preserve a nonlinear structure
and the objects geometry of nonlinear high-dimensional data in the lower
dimension.Manifold learning algorithms are very slow (high computational
algorithms) and time consuming in estimating the solution. The goal of this
work is to parallelize the three most important manifold learning algorithms
to reduce the dimensionality of the hyperspectral images for subsequent
application in object segmentation. These three methods are ISOMAP, Local
Linear Embedding and Laplacian Eigenmap. The parallelization consists of
implementing the bottleneck parts like k-nearest neighbor, shortest path for
geodesic distance, Graph Laplacian and other features in the Compute Unified
Device Architecture (CUDA) in GPU developed by NVIDIA.
AOTF hyperspectral microscopic imaging for foodborne pathogenic bacteria
detection
Paper 8027-6 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Bosoon Park, Jaya Sundaram, Gerald W. Heitschmidt, Seung Chul
Yoon, Kurt C. Lawrence, William R. Windham, U.S.D.A. Agricultural Research
Service (United States)
The objective of this research is to develop a hyperspectral microscopic
imaging (HMI) method to evaluate spectral characteristics of foodborne
bacteria. The HMI system consists of a Nikon upright microscope,
acousto-optic tunable filters (AOTF), high performance cooled CCD camera,
and bright-filed and dark-field illumination. The HMI system was used to
scan Salmonella typhimurium with different dilutions. The hyperspectral
microscopic images were collected at the wavelength ranges from 450 to 850
nm. In this paper, the AOTF-based hyperspectral microscope imaging method to
characterize optical properties of Salmonella typhimurium to apply for rapid
detection of foodborne pathogen will be presented.
Real-time georeferencing for an airborne hyperspectral imaging system
Paper 8048-31 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Thomas O. Opsahl, Trym V. Haavardsholm, Atle Skaugen, Ingebrigt
Winjum, Norwegian Defence Research Establishment (Norway)
We describe the georeferencing part of FFIs real-time hyperspectral
demonstrator system. Using a highly efficient representation of the digital
elevation model and raytracing methods from modern computer graphics we are
able to georeference high resolution images in real time. By adapting the
calculations to match the ground resolution of the digital terrain model,
the cameras field of view and typical flight altitude, the method has
potential to provide real time georeferencing of even HD video at 60Hz on a
DEM with 5 meter resolution when a graphics processor unit is used for
processing.
Identification and mapping of night lights signatures using hyperspectral
data
Paper 8048-32 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Fred A. Kruse, Naval Postgraduate School (United States);
Christopher D. Elvidge, National Oceanic and Atmospheric Administration
(United States)
This research demonstrates the use of imaging spectrometer (hyperspectral)
data to identify, characterize, and map urban lighting based on spectral
emission lines unique to specific lighting types. Spectral features
extracted from ProSpecTIR hyperspectral data of Las Vegas, Nevada were
compared to measurements made with an Analytical Spectral Devices
spectroradiometer. Specific types identified included blue and red neon,
high pressure sodium, and metal halide lights. There were also indications
spectral mixing or variants of these specific light types. The nature and
distribution of lights were used as a surrogate for measurement of urban
development.
Advances in hyperspectral LWIR pushbroom imagers
Paper 8032-32 of Conference 8032
Date: Tuesday, 26 April 2011
Author(s): Hannu Holma, Antti-Jussi Mattila, Timo Hyvärinen, Specim Spectral
Imaging Ltd. (Finland)
Two designs of hyperspectral imagers have been under extensive development:
one utilizing a microbolometer and another with an MCT FPA. The design and
implementation of the high performance, extremely compact imager with MCT
FPA and 8 to 12 um spectral range has been completed. The performance with
84 spectral bands and 384 spatial samples has been experimentally verified
and NESR of 18 mW/(m2srum) at 10 um wavelength for 300 K target has been
achieved. This results SNR of more than 500. The second design based on
microbolometer FPA was introduced in 2009. Its improved design has now been
finalized with sensitivity improved by a factor of 3 and SNR by 15%.
Validation of technique to hyperspectrally characterize the lower atmosphere
with limited surface observations
Paper 8038-7 of Conference 8038
Date: Tuesday, 26 April 2011
Author(s): Robb M. Randall, Steven T. Fiorino, Michelle F. Gerling, Adam D.
Downs, Air Force Institute of Technology (United States)
This paper demonstrates the capability of AFIT/CDE's Laser Environmental
Effects Definition and Reference (LEEDR) model to accurately characterize
the meteorological parameters and radiative transfer effects of the
atmospheric boundary layer with only surface observations of temperature,
pressure, and humidity. The LEEDR model is a fast-calculating, first
principles, worldwide surface to 100 km, atmospheric propagation and
characterization package. This research compares the LEEDR vertical profiles
created from input surface observations to actual observations from balloon
launches, aircraft, and satellites. Additional comparisons are made to
vertical profiles derived from short range numerical weather forecasts.
Development of narrow-band fluorescence indices for the detection of
aflatoxin contaminated corn
Paper 8027-12 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Haibo Yao, Zuzana Hruska, Russell Kincaid, Ambrose E. Ononye,
Mississippi State Univ. (United States); Robert L. Brown, Deepak Bhatnagar,
Thomas E. Cleveland, U.S.D.A. Agricultural Research Service (United States)
Corn contaminated with aflatoxin is toxic to domestic animals as well as
humans and thus is of major concern to the food and feed industry.
Currently, aflatoxin detection and quantification methods are based on
analytical tests. These tests require the destruction of samples, and can be
costly and time consuming. This paper describes how narrow-band fluorescence
indices were developed for the detection of aflatoxin contamination in corn.
It is anticipated that the results would be helpful in the development of
real-time detection instrumentation for the corn industry.
Analysis of multispectral signatures of shot
Paper 8019-33 of Conference 8019
Date: Tuesday, 26 April 2011
Author(s): Mariusz Kastek, Rafal Dulski, Tadeusz Piatkowski, Henryk Madura,
Jaroslaw Barela, Henryk Polakowski, Military Univ. of Technology (Poland)
The paper presents some practical aspects of sniper IR signature
measurements. Description of particular signatures for sniper shot in
typical scenarios has been presented. The measurements were made at field
test ground. High precision laboratory measurements were also performed.
Several infrared cameras were used during measurements to cover all
measurement assumptions. The registration was made in NWIR, SWIR and LWIR
spectral bands simultaneously. The infrared cameras have possibilities
install optical filters for multispectral measurement. Exemplary sniper IR
signatures for typical situation were presented. During the experiments in
laboratory and test field was used LWIR imaging spectroradiometer HyperCam.
The signatures collected by HyperCam were useful for determination of
spectral characteristics of shot.
Aflatoxin contaminated chili pepper detection by hyperspectral imaging and
machine learning
Paper 8027-14 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Musa Atas, Yasemin Yardimci Cetin, Alptekin Temizel, Middle East
Technical Univ. (Turkey)
Mycotoxins are the toxic secondary metabolites of certain filamentous fungi.
They have been demonstrated to cause various health problems in humans,
including immunosuppression and cancer. Chili pepper is also prone to
aflatoxin contamination during harvesting, production and storage periods.
Hyperspectral and multispectral imaging are becoming increasingly important
for rapid and nondestructive testing for the presence of such contaminants.
We propose a compact machine vision system which employs a neural network
with inputs from hyperspectral images for detection of aflatoxin
contaminated chili peppers. Feature selection scheme is compared with an
information-theoretic approach. It demonstrated robust performance with
higher classification accuracy.
A Raman chemical imaging system for detection of contaminants in food
Paper 8027-38 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Kaunglin Chao, Jianwei Qin, Moon S. Kim, U.S.D.A. Agricultural
Research Service (United States)
Raman chemical imaging technique combines Raman spectroscopy and machine
vision to visualize the composition and structure of a target, and it offers
great potential for food safety research. Commercially available systems
generally perform Raman measurements at a microscopic level, and
consequently cannot easily meet the requirements for evaluating whole
surfaces of individual food items. A bench-top point-scanning Raman chemical
imaging system was designed and developed in the laboratory for food safety
inspection. This work demonstrates that Raman scattering information can be
useful for mapping spatial distribution of constituents in complex food
systems.
Generalized accelerated hyperspectral, and multiframe algorithm for
nondestructive micro-electromechanical systems (MEMS) microscope metrology
Paper 8056-35 of Conference 8056
Date: Tuesday, 26 April 2011
Author(s): Wojtek J. Walecki, Fanny Szondy, Sunrise Optical LLC (United
States)
We have constructed a system employing accelerated Richardson Lucy algorithm
for three dimensional mapping of the thin membranes in Micro
Electro-Mechanical Systems (MEMS) pressure sensing devices. System is
collecting data at several wavelengths bands. Several frames representing
image of the device allow combining multi-frame spectral, and spacial
information. Our algorithm uses this information together with prior
information from thin film model of membranes, and Baysian model for point
spread function the microscope to obtain the enhanced spacial resolution
image, and the enhanced thickness maps of measured membranes.
Hyperspectral band selection using statistical models
Paper 8048-67 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Jochen M. Maerker, Alfons Ebert, Wolfgang Middelmann,
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung (Germany)
No abstract available
Hyserspectral imaging for nondestructive quality and maturity evaluation in
tomatoes
Paper 8027-36 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Sukwon Kang, National Academy of Agriculture Science (Korea,
Republic of); Moon S. Kim, U.S.D.A. Agricultural Research Service (United
States); Kangjin Lee, National Academy of Agriculture Science (Korea,
Republic of)
The fresh-market tomatoes are one of the major vegetables in the world.
Color in tomato (Lycopersicon esculentum) is one of the important external
characteristic to assess ripeness and shelf-life of tomato. Usually, the
degree of maturity has been estimated by human graders comparing the tomato
color to a chart that classify fresh tomatoes into six maturity stages based
on the USDA standard classification. This tomato maturity classification
often results into errors due to human subjectivity, visual stress and
tiredness. Color camera has been used to classify the tomato but it is not
easy to define the six maturity stage based on color. Hyperspectral imaging
system was used to find the relationship between the tomato maturity and
hyperspectal reflectance images. Also, hyperspectal reflectance images were
used to evaluate the quality and maturity in tomatoes.
Noise reduction of hyperspectral images by using joint bilateral filter
Paper 8048-68 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Ayoung Heo, Jai-Hoon Lee, Eun-Jin Choi, Won-Chul Choi, Seo Hyun
Kim, Dong-Jo Park, KAIST (Korea, Republic of)
In this paper, we propose a new noise reduction method for hyperspectral
images by using the joint bilateral filter. The Gaussian range kernel of the
joint bilateral filter is applied to a sharp-edged image. In this proposed
method, the sharp-edged image is constructed by the weighted summation of
all bands of a hyperspectral image cube. Since the obtained sharp-edged
image has high-frequency details, the joint bilateral filter plays a role
not only to reduce noise but also to preserve the edge. We have evaluated
the performance of the proposed denoising method on the hyperspectral
imaging systems which we have developed for visible and near-infrared
spectral regions. Simulation results show that the proposed method
outperforms the conventional approaches.
Subpixel target detection and enhancement in hyperspectral images
Paper 8048-70 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): Kailash C. Tiwari, Military Engineering Services (India)
Hyperspectral data due to its higher information content afforded by higher
spectral resolution is increasingly being used for various remote sensing
applications including information extraction at subpixel level. Whenever an
object /class gets spectrally resolved but not spatially, mixed pixels
result. Spectral unmixing models are used to recover components of a mixed
pixel which output both the endmember spectrum and their corresponding
abundance fractions but do not provide their spatial distribution. A new
inverse Euclidean distance based super-resolution mapping method has been
presented that achieves subpixel target detection by adjusting spatial
distribution of abundance fraction within a pixel.
Miniaturization of a SWIR hyperspectral imager
Paper 8020-1 of Conference 8020
Date: Wednesday, 27 April 2011
Author(s): Christopher P. Warren, William R. Pfister, Detlev M. Even, Arleen
Velasco, Joseph Naungayan, Selwyn M. Yee, David S. Breitwieser, NovaSol
(United States)
A new approach for the design and fabrication of a miniaturized SWIR
Hyperspectral imager is described. This design uses the Offner design form,
and solid optical blocks for light propagation, providing excellent, low
distortion imaging. The microHSI SWIR Hyperspectral sensor is capable of
operating in the 850-1700 nm wavelength range. The blazed diffraction
grating was embedded in the glass blocks, and resulted in a high diffraction
efficiency. This spectrometer can support slit lengths of up to 25.6 mm. The
application of skin detection is discussed; and test results are shown for
matched filter skin detections in the SWIR wavelength region.
Small unmanned aerial system high performance payload
Paper 8020-2 of Conference 8020
Date: Wednesday, 27 April 2011
Author(s): Ricky J. Morgan, Ali A. Abtahi, Usha Raghuram, Frida E.
Strömqvist Vetelino, Aerospace Missions Corp. (United States)
A unique, hyperspectral imaging plane "on-a-chip" developed for deployment
as a High Performance Payload (HPP) on a micro or small unmanned aerial
vehicle is described. HPP employs nanophotonics technologies to create a
focal plane array with very high fill factor fabricated using standard
integrated circuit techniques. The spectral response of each pixel can be
independently tuned and controlled over the entire spectral range of the
camera. While the current HPP is designed to operate in the visible, the
underlying physical principles of the device are applicable and potentially
implementable from the UV through the long-wave infrared.
Fast and accurate image recognition algorithms for fresh produce food safety
sensing
Paper 8027-15 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Chun-Chieh Yang, Moon S. Kim, Kuanglin Chao, U.S.D.A.
Agricultural Research Service (United States)
The research reported the development of image recognition algorithms to
detect fecal pollution on fresh produce using hyperspectral line-scan
images. The algorithms were developed to satisfy the requirements of fast
operation and calculation as well as accurate detection and sensing
performance. The algorithms could be easily installed and calibrated to
manage the machine vision system. With the algorithms, the line-scan machine
vision system can be applied to the real-world food processing line to
ensure food safety.
Real-world noise in hyperspectral imaging systems
Paper 8020-3 of Conference 8020
Date: Wednesday, 27 April 2011
Author(s): Richard L. Wiggins, Lovell E. Comstock, Jeffry J. Santman,
Corning NetOptix (United States)
It is well known that non-uniform illumination of a spectrometer changes the
measured spectra. Laboratory calibration of hyperspectral imaging systems is
careful to minimize this effect by providing repeatable, uniform
illumination. In actual hyperspectral measurements the real world images
result in non-uniform illumination. We define the resulting variation as
real-world noise and we compare real-world noise to other noise sources.
Both in-flight performance and calibration transfer between instruments
degrade significantly because of real-world noise.
Hyperspectral imaging technique for determination of pork freshness
Paper 8027-16 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Yankun Peng, Leilei Zhang, China Agricultural Univ. (China)
Freshness of pork is an important quality attribute. The specific objectives
of this research were to develop a hyperspectral imaging system to predict
pork freshness. Hyperspectral scattering images were collected from the pork
surface at the range of 400-1100 nm. The spectral scattering profiles at
individual wavelengths were fitted by a three-parameter Lorentzian
distribution (LD) function; and, reflectance spectra were extracted from the
scattering images. A prediction model for pork freshness was established by
using a combination of TVB-N, pH and color parameters. It could give a good
prediction with r = 0.90 and SEP = 5.05 for pork freshness.
Improved classification using image data fused via nonlinear dimensionality
reduction
Paper 8050-49 of Conference 8050
Date: Wednesday, 27 April 2011
Author(s): Colin C. Olson, Jonathan M. Nichols, K. Peter Judd, Frank
Bucholtz, U.S. Naval Research Lab. (United States)
We present a process for fusing multiple sensor modalities that leverages
nonlinear dimensionality reduction. In particular, diffusion map is used to
embed high-dimensional images (or features from those images) as
low-dimensional manifolds in an embedding space. Images of the same or
similar scenes taken with different sensors are individually mapped into the
space. Once embedded, the manifolds derived from each sensor are aligned and
fused. Thus, image registration and fusion are accomplished in the same
step. We present results pertaining to two sensors, one capturing visible
wavelengths, the other infrared. Improved classification results are found
using the fused images.
Detection of fruit fly infestation in pickling cucumbers using hyperspectral
imaging
Paper 8027-19 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Renfu Lu, Agricultural Research Service (United States); Diwan P.
Ariana, Michigan State Univ. (United States)
Fruit fly infestation is a serious problem in some pickling cucumber
producing regions. Currently, processors have to rely on humans to detect
and remove fruit fly-infested cucumbers. In this research, hyperspectral
images in an integrated mode of reflectance (450-740 nm) and transmittance
(740-1000 nm) were acquired from normal and fruit fly-infested pickling
cucumbers. Mean spectra calculated for each pickling cucumber were used for
classification of the cucumbers. Hyperspectral transmittance imaging mode
achieved an overall classification accuracy of 87.8%, compared with 75.4%
from human inspection. The research demonstrated the usefulness of
hyperspectral imaging for detection of fruit fly infested pickling
cucumbers.
Multiclass sub-pixel target detection using functions of multiple instances
Paper 8048-41 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Alina Zare, Univ. of Missouri-Columbia (United States); Paul
Gader, Univ. of Florida (United States)
The Functions of Multiple Instances (FUMI) method learns target prototypes
from data points that are functions of both target and non-target
prototypes. In this paper, a multi-class case of FUMI is considered where,
given data points which are convex combinations of a target prototype and
several non-target prototypes. The Multi-class Convex-FUMI (C-FUMI) method
learns the target and non-target signatures, the number of non-target
signatures, and determines the proportions of the all prototypes for each
data point. For this method, training data need only binary labels and the
specific target proportions for the training data are not needed. In the
case of hyperspectral image analysis, this provides a method for multi-class
sub-pixel target detection when the spectral signatures of the target
classes are unknown.
Dried fruits quality assessment by hyperspectral imaging
Paper 8027-23 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Silvia Serranti, Giuseppe Bonifazi, Univ. degli Studi di Roma La
Sapienza (Italy)
Dried fruits products, such as hazelnuts and almonds, present different
market values according to their quality. Such a quality is usually
quantified in terms of freshness of the products, as well as presence of
contaminants (pieces of shell, husk, small stones) and defects, mould and
decays. Reflectance spectra of selected dried fruits of different quality
and characterized by the presence of different contaminants and defects have
been acquired by a laboratory device equipped with two hyperspectral imaging
systems working in two different spectral ranges: visible-near infrared
field (400-1000 nm) and near infrared field (1000-1700 nm). The spectra have
been processed and results evaluated adopting both a simple and fast
wavelength band ratio approach and a more sophisticated classification logic
based on principal component (PCA) analysis.
Joint segmentation and reconstruction of hyperspectral images from a single
snapshot
Paper 8048-47 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Peter Qiang Zhang, Robert J. Plemmons, Wake Forest Univ. (United
States); David J. Brady, David Kittle, Duke Univ. (United States)
This work describes numerical methods for the joint reconstruction and
segmentation of a hyperspectral image cube from a single snapshot taken by a
coded aperture snapshot spectral imager (CASSI). For this highly
underdetermined inverse problem, we seek a particular form of solution that
assumes spectrally homogeneous segments in the two spatial dimensions, and
greatly reduces the number of unknowns, often turning the underdetermined
system into an overdetermined. The proposed method generalizes popular
active contour segmentation algorithms such as the Chan-Vese model and also
enables one to jointly segment and reconstruct the hyperspectral cube. The
results are illustrated on simulated and real data.
Improved real-time processing of hyperspectral imaging data
Paper 8017-44 of Conference 8017
Date: Wednesday, 27 April 2011
Author(s): Robert Schweitzer, Matthew P. Nelson, Robert J. D'Agostino,
Patrick J. Treado, ChemImage Corp. (United States)
Sensor systems that can rapidly detect explosives at standoff distances in
operationally relevant sensor configurations are achieving a state of
robustness and reliability. ChemImage has developed algorithms and software
strategies that are the foundation of a Real Time Toolkit (RTTK) that
currently supports data from Raman, LIBS, SWIR, and RGB sensors. The RTTK
takes advantage of multiple sensors, spectral and spatial information,
multiple scenes allowing the use of persistence based algorithms, and the
use of software techniques that take advantage of advances in multi-core
computer processing. This presentation will describe several of these
algorithmic advances.
Stand-off detection of explosive particles by imaging Raman spectroscopy
Paper 8017-45 of Conference 8017
Date: Wednesday, 27 April 2011
Author(s): Markus Nordberg, Hanna Ellis, Anneli Ehlerding, Henric Oestmark,
Torgny Carlsson, Swedish Defence Research Agency (Sweden)
Explosive particles from a fingerprint have been detected and identified at
stand-off distanced using multispectral imaging Raman scattering.
Fingerprints containing particles of DNT, TNT and ammonium nitrate were
placed on a brick at a distance of 12 m, and image sequences measured at
different Raman shift were recorded. The images sequence was processed for
each pixel and the spectral data where compared with reference spectra. By
using false color coding the pixels were marked with different colors
corresponding to the detected substances in the fingerprint.
A new deblurring morphological filter for hyperspectral images
Paper 8048-51 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Ezz E. Ali, Military Technical College (Egypt)
In this paper, we introduce a new method to deblurr the hyperspectral images
keeping edges as sharp as possible. Motivated by the success of threshold
decomposition, gradient-based operators are used to detect the locations of
edges followed by an adaptive morphological filter to sharpen these detected
edges. Experimental results demonstrated that the performance of the
proposed deblurring filter is promising for hyperspectral images in target
detection applications.
Fusion of hyperspectral and ladar data for autonomous target detection
Paper 8064-7 of Conference 8064
Date: Wednesday, 27 April 2011
Author(s): Andrey V. Kanaev, Thomas J. Walls, U.S. Naval Research Lab.
(United States)
Robust fusion of data from disparate sensor modalities can provide improved
target detection performance over those attainable with the individual
sensors. We have developed a novel fusion algorithm enabling detection of
difficult targets when the HSI data is simultaneously collected with ladar
data. As a part of fusion processing we have also developed an algorithm for
automatic co-registration of ladar and HSI imagery, based on the
maximization of mutual information, which can provide accurate, sub-pixel
registration even in the case when the imaging geometries for the two
sensors differ.
Implications of model mismatch and covariance contamination on chemical
detection algorithms
Paper 8048-54 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Dimitris Manolakis, Steven E. Golowich, MIT Lincoln Lab. (United
States); Sidi Niu, Vinay K. Ingle, Northeastern Univ. (United States)
In this paper we investigate the impact of these factors on the performance
of chemical plume detection algorithms. The analytical investigations are
limited to the classical matched filter detector. However, using a
plume-embedding procedure to embed plumes into real backgrounds, we can
study the performance of the matched filter and various other detectors (for
example, the widely used adaptive cosine estimator) by estimating their
receiver operating characteristic (ROC) curves. Preliminary theoretical and
experimental results show that a limited amount of background data, spectral
heterogeneity, and background corruption by plume may lead to significant
performance degradation. Therefore, understanding the impact of these issues
and developing robust practical algorithms for their minimization or
avoidance is critical to the successful deployment of systems that protect
the warfighter.
Performance limits of LWIR gaseous plume quantification
Paper 8048-55 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Steven E. Golowich, Dimitris Manolakis, MIT Lincoln Lab. (United
States)
The central parameter in the quantification of chemical vapor plumes via
remote sensing is the mean concentration-path length (CL) product, which can
lead to estimates of the absolute gas quantity present. The goal of this
paper is to derive Cramer-Rao lower bounds on the variance of an unbiased
estimator of CL in concert with other parameters of a general non-linear
radiance model. These bounds offer a guide to feasibility of CL estimation
that is not dependent on any given algorithm. In addition, the derivation of
the bounds yields great insight into the physical and phenomenological
mechanisms that control plume quantification.
Remote quantification of smokestack total effluent mass flow rates using
imaging Fourier-transform spectroscopy
Paper 8018-39 of Conference 8018
Date: Wednesday, 27 April 2011
Author(s): Jacob L. Harley, Kevin C. Gross, Air Force Institute of
Technology (United States)
An infrared (1.5-5.5 µm) imaging Fourier-transform spectrometer (IFTS) was
used to estimate industrial smokestack total effluent mass flow rates
(kg/hr) by combining spectrally-determined species concentrations with flow
rates estimated via analysis of sequential images in the raw interferogram
cube. At a stand-off distance of 350 m, 200 hyperspectral images were
collected on a 128 x 64 pixel sub-window (11.4 x 11.4 cm^2 per pixel) at
high spectral resolution (0.5/cm). Strong emissions from H2O, CO2, CO, SO2,
and NO were observed in the spectrum, and concentrations will be retrieved
and compared with in situ measurements. The turbulent nature of the flow
field results in instantaneous fluctuations in scene radiance; these
fluctuations lead to brightness patterns which are captured in the DC-level
imagery. A simple analysis of sequential imagery will be presented which
enables an estimation of the flow velocity.
Multi- and hyperspectral scene modeling
Paper 8048-56 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Christoph C. Borel, Ronald F. Tuttle, Air Force Institute of
Technology (United States)
Often it is prohibitive or even impossible to obtain hyper-spectral data
over real targets with existing sensors and under a number of conditions. In
this paper we describe how a public domain raytracer with its own scene
description language (POVRAY) can be used to model multi- and hyper-spectral
scenes in the visible and also thermal. The advantage of using POVRAY is
that the scene can be rendered using various rendering options from simple
Gouraud type shading, single bounce raytracing, multiple bounce raytracing,
radiosity and photon-mapping.
An empirical estimate of the multivariate normality of spectral image data
Paper 8048-59 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Ariel Schlamm, David W. Messinger, Rochester Institute of
Technology (United States)
Historically, much of spectral image analysis revolves around assumptions of
multivariate normality. If the background spectral distribution can be
assumed to be multivariate normal, then algorithms for anomaly detection,
target detection, and classification can be developed around that
assumption. However, as the current generation of sensors typically have
higher spatial and/or spectral resolution, the spectral distribution
complexity of the data collected is increasing and these assumptions are no
longer adequate, particularly image-wide. A new empirical method for
accessing the multivariate normality of a hyperspectral distribution is
presented here.
Next generation signature-based hyperspectral detection: a challenge to
atmospheric modelers
Paper 8040-11 of Conference 8040
Date: Thursday, 28 April 2011
Author(s): Alan P. Schaum, Brian J. Daniel, U.S. Naval Research Lab. (United
States)
A new class of hyperspectral algorithms has been developed for detection
based on a re-flectance signature. These promise performance levels superior
to state-of-the-art meth-ods employed in real systems, by creating selective
decision surfaces that can be sculpted to mitigate the usual plague of
ubiquitous outliers. The new class of detectors is based on an affine target
subspace model and a continuum fusion interpretation of the generalized
likelihood ratio test. The challenge to atmospheric modelers is to create a
method for pre-dicting, from a given reflectance spectrum, a low-dimensional
radiance subspace lying closer to the sensed target spectrum than the target
is to the whitened clutter mean.
Interactive visualization of hyperspectral images on a hyperbolic disk
Paper 8048-60 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Adam A. Goodenough, Ariel Schlamm, Rochester Institute of
Technology (United States)
We look at developing an interactive, intuitive hyperspectral visualization
and analysis tool based on using a Poincare disk as a window into a high
dimensional spectral space. The Poincare disk represents an infinite,
two-dimensional hyperbolic space such that distances and areas increase
exponentially as you move farther from the center of the disk. By projecting
N-dimensional data into this space using a non-linear, yet relative distance
metric preserving projection (such as the Sammon projection), we can
simultaneously view the entire data set while maintaining natural clustering
and spacing. The disk also provides a means of interacting with the data for
classification, analysis and instruction.
Adaptive hyperspectral sensing with carbon nanotubes
Paper 8058-26 of Conference 8058
Date: Thursday, 28 April 2011
Author(s): Harold Szu, U.S. Army Night Vision & Electronic Sensors
Directorate (United States); Yin-Lin Shen, Kenneth H. Ou, The George
Washington Univ. (United States); Reinhardt Kit, Air Force Office of
Scientific Research (United States)
Adaptive sensing is possible to achieve a compressive sensing, when we
reverse the direction of Einstein photo-electric effect of Nano Solar Cells
for imaging. Each pixel will be designed as a fireman staircase, of which
each run is made of Carbon Nanotubes (CNT) at a different diameter.
Saito-Wallace bandgap formula may be understood as de Broglie matter wave
around the circumference. Thus, the band gap may be re-derived as follows:
ε_BG=C_Fermi P=C_Fermi h/λ=C_graphene h/πd, and λ=2πR=πd of the CNT diameter
, where use is made of Geim and Novoselov result (2010 Nobel Laureates) that
single wall CNT enjoys a ballistic propagation C_Fermi identically to one
thousandth of the speed of light in the single sheet grapheme
C_graphene=〖10〗^(-3) C_o. We control the grid field effect of CNT to turn
current signal on or off. We evaluate the dark current, the polarization,
the quantum efficiency and the SNR
Metrics for the selection of frequency bands from hyperspectral data for
image fusion and sensor development
Paper 8064-15 of Conference 8064
Date: Thursday, 28 April 2011
Author(s): Jack E. Fulton, Jr., Naval Surface Warfare Ctr. Crane Div.
(United States)
The application of imagers in security is to provide a clear warning of
potential threats to the end users. Hyperspectral imagers (HSI) are not used
in security applications due to the high cost and the need for extensive
processing. A proposed set of objective and subjective metrics along with
fusion techniques for specific applications is presented. The selection
criteria create a basis set of frequencies to be used in a fieldable, threat
specific, affordable imager.
Hyperspectral antireflective coatings for infrared windows
Paper 8016-26 of Conference 8016
Date: Thursday, 28 April 2011
Author(s): Donald E. Patterson, Byron G. Zollars, Steve M. Savoy, Nanohmics
(United States)
Using conical "moth-eye" structures, a hyperspectral antireflective coating
is being developed for use with ZnS (Cleartran) infrared windows. In this
work, we are using the emerging technique of imprint lithography to create
moth‐eye structures on the surface of Cleartran windows with transverse
scales from 200‐300 nm and with aspect ratios >10. The surface features, in
conjunction with a conformal protective coating of amorphous AlN, can serve
as anti‐reflection surface treatments spanning the wavelength range from the
visible through the long‐wave infrared. Cleartran windows with imprinted
moth‐eye structures can potentially be used in numerous aerospace
applications.
High-spatial resolution hyperspectral spatially adaptive endmember selection
and spectral unmixing
Paper 8048-64 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Kelly Canham, Ariel Schlamm, William F. Basener, David W.
Messinger, Rochester Institute of Technology (United States)
Spectral unmixing results in hyperspectral imagery are dependent on the
number of estimated endmembers. Previous statistical and geometric
approaches have been developed to estimate the number of endmembers using
the global dataset, which do not take into consideration local area
endmember variability. Here, the number of endmembers is estimated by using
a spatially adaptive approach. Each pixel is unmixed using locally
identified endmembers, and global abundance maps are generated by
classifying the locally derived endmembers. Comparisons are made to
established unmixing methodologies using multiple high-spatial resolution
hyperspectral datasets and the residual unmixing error.
Spectral variations in HSI signatures of thin fabrics for detecting and
tracking of dismounts
Paper 8040-15 of Conference 8040
Date: Thursday, 28 April 2011
Author(s): Jared Herweg, Rochester Institute of Technology (United States)
and Air Force Institute of Technology (United States); John P. Kerekes,
Emmett Ientilucci, Rochester Institute of Technology (United States);
Michael T. Eismann, Air Force Research Lab. (United States)
This work extends the understanding of the induced spectral variation in
dismount spectral signatures in cluttered environments. The goal of this
work was to isolate the spectral reflectivity of highly transmissive targets
independent of the background. Using a linear mixing model, the effects of
reflective backing materials on the signature of a thin fabric are
presented. Also, an issue with tracking a pedestrian from full illumination
into the shadow is considered. Reflectance factor signatures were measured
using target reflectivity measured both in the lab and in the field to
assess spectral variability and detectability.
Kernel-based weighted abundance constrained linear spectral mixture analysis
Paper 8048-65 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Keng-Hao Liu, Englin Wong, Univ. of Maryland, Baltimore County
(United States); Chein-I Chang, Univ. of Maryland, Baltimore County (United
States) and National Chung Hsing Univ. (Taiwan)
This paper presents a Kernel-based Weighted Abundance Constrained-LSMA
(KWAC-LSMA) which includes Least Squares-based Linear Spectral Mixture
Analysis (LS-LSMA), Fisher's LSMA (FLSMA), Weighted Abundance
Constrained-LSMA (WAC-LSMA) and Kernel-based LSMA as its special cases. In
order to demonstrate utility of the KWAC-LSMA multispectral and
hyperspectral experiments are conducted for performance analysis.
MRi dual-band MWIR imaging FTS
Paper 8014-35 of Conference 8014
Date: Thursday, 28 April 2011
Author(s): Louis M. Moreau, Claude B. Roy, Stéphane Lantagne, Florent Prel,
Christian A. Vallieres, ABB Analytical Measurement (Canada)
MRi is an imaging version of the ABB Bomem MR Fourier-Transform
spectroradiometer. This field instrument generates spectral datacubes in the
MWIR and LWIR. It is designed to be sufficiently fast to acquire the
spectral signatures of rapid events. Overview of the instrument capabilities
will be presented. Test results and results from field trials for a
configuration with two MWIR cameras will be presented. That specific system
is dedicated to the characterization of airborne targets. The two MWIR
cameras are used to expand the dynamic range and simultaneously measure the
spectral signature of the coldest and warmest elements of the scene.
Crude oil and refined petroleum product detection on terrestrial substrates
with airborne imaging spectroscopy
Paper 8040-20 of Conference 8040
Date: Thursday, 28 April 2011
Author(s): C. Scott Allen, George Mason Univ. (United States); Mark P. S.
Krekeler, Miami Univ. (United States)
One of the most prominent portions of oil spill response is mapping spill
extent. Yet, the most common method of detecting oil in a crisis remains
visual spotting. Employing spectral libraries for material identification,
imaging spectroscopy supplements traditional techniques by providing more
accurate petroleum detection and discrimination from water on terrestrial
backgrounds. This effort applies a new hydrocarbon-substrate spectral
library to airborne imaging spectroscopy data from the Hurricane Katrina
disaster in 2005. Future efforts anticipate applying the same methods to
data from the Deepwater Horizon incident.
Formatting research and development sensors for data interoperability and
fusion with GIS
Paper 8053-10 of Conference 8053
Date: Thursday, 28 April 2011
Author(s): Karmon M. Vongsy, Air Force Institute of Technology (United
States); Eric Cincotta, ITT Corp. Geospatial Systems (United States); Tom
Jones, ITT Visual Information Solutions (United States)
No abstract available
Investigation of the potential use of hyperspectral imaging for stand-off
detection of person-borne IEDs
Paper 8017-69 of Conference 8017
Date: Thursday, 28 April 2011
Author(s): Catherine C. Cooksey, David W. Allen, National Institute of
Standards and Technology (United States)
Advances in hyperspectral sensors and algorithms in numerous fields of
research have opened up new possibilities and may also improve the detection
of person-borne IEDs. While portions of the electromagnetic spectrum, such
as the x-ray and terahertz regions, have been investigated for this
application, the spectral region of the ultraviolet (UV) through shortwave
infrared (SWIR) (250 nm to 2500 nm) has received little attention. The
purpose of this work was to investigate what, if any, potential there may be
for exploiting the spectral region of the UV through SWIR for the detection
of hidden objects under the clothing of individuals. The optical properties
of both common fabrics and threat objects were measured. The approach,
measurement methods, and results are described in this paper, and the
potential for hyperspectral imaging is addressed.
A novel infrared hyperspectral imager for passive standoff detection of
explosives and explosive precursors
Paper 8018-59 of Conference 8018
Date: Thursday, 28 April 2011
Author(s): Jean-Marc Theriault, Eldon Puckrin, Hugo Lavoie, Francois
Bouffard, Defence Research and Development Canada (Canada); Paul Lacasse,
AEREX avionique inc. (Canada); Alexandre Vallières, Vincent Farley, Martin
Chamberland, Telops (Canada)
The passive standoff detection of vapors from particular explosives and
precursors emanating from a location under surveillance can provide early
detection and warning of illicit explosives fabrication. DRDC Valcartier
recently initiated the development and field-validation of a novel R&D
prototype, MoDDIFS (Multi-Option Differential and Imaging Fourier
Spectrometer) to address and solve this security vulnerability. The proposed
methodology combines the clutter suppression efficiency of the differential
detection approach with the high spatial resolution provided by the
hyperspectral imaging approach. This consists of integrating an imaging
capability of the Hyper-Cam advanced IR imager developed by Telops with a
differential CATSI-type sensor. This paper presents the MoDDIFS sensor
methodology and first investigation results that were recently obtained.
Kernel and stochastic expectation maximization fusion for target detection
in hyperspectral imagery
Paper 8055-25 of Conference 8055
Date: Thursday, 28 April 2011
Author(s): Mohamed I. Elbakary, Mohammad S. Alam, Univ. of South Alabama
(United States)
In this paper, we present a new algorithm for target detection using
hyperspectral imagery. The proposed algorithm is inspired by the outstanding
performance of nonlinear RX-algorithm and the robustness of the stochastic
expectation maximization (SEM) algorithm. The traditional technique of using
SEM algorithm for target detection in hyperspectral imagery is associated
with dimensionality reduction of the input data using binning or principal
components analysis (PCA) algorithm. To facilitate detection of the target
by using the entire targets information and simultaneously reducing the
computational burden on SEM algorithm, we propose a new scheme for data
reduction based on using Kernels. The proposed scheme for fusion the kernel
with SEM algorithm has been tested using real life hyperspectral imagery and
the results show superior performance compared to alternate algorithms.
Multi-field-of-view hyperspectral imager
Paper 8020-39 of Conference 8020
Date: Thursday, 28 April 2011
Author(s): Lovell E. Comstock, Richard L. Wiggins, Corning NetOptix (United
States)
There is increasing interest in imaging spectrometers working in the SWIR
and LWIR wavelength bands. Commercially available detectors are not only
expensive, but have a limited number of pixels, compared with visible band
detectors. Typical push broom hyperspectral imaging systems consist of a
fore optic imager, a slit, a line spectrometer, and a two dimensional focal
plane with a spatial and spectral direction. To improve the spatial field
coverage at a particular resolution, multiple systems are incorporated,
where the "linear fields of view" of the systems are aligned end to end.
This solution is prohibitive for many applications due to the costs of the
multiple detectors, coolers, spectrometers, or the space, weight, or power
constraints. Corning will present a cost effective solution utilizing
existing detectors combined with innovative design and manufacturing
techniques.
QUEST hierarchy for hyperspectral face recognition
Paper 8029B-60 of Conference 8029B
Date: Monday, 25 April 2011
Author(s): David Ryer, U.S. Air Force (United States); Trevor J. Bihl,
Kenneth W. Bauer, Air Force Institute of Technology (United States); Steven
K. Rogers, Air Force Research Lab. (United States)
A face recognition methodology employing an efficient fusion hierarchy for
hyperspectral imagery (HSI) is presented. A Matlab-based graphical user
interface (GUI) has been developed to aid processing and to display results.
Adaptive feedback loops are incorporated to improve performance thru the
reduction of candidate subjects in the gallery as well as the injection of
additional probe image samples. Algorithmic results and performance
improvements are presented as spatial, spectral, and temporal effects are
considered in this Qualia Exploitation of Sensor Technology (QUEST)
motivated methodology.
Selecting training and test images for optimized anomaly detection and
material identification algorithms in hyperspectral imagery through robust
parameter design
Paper 8048-12 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Frank M. Mindrup, Trevor J. Bihl, Kenneth W. Bauer, Air Force
Institute of Technology (United States)
There are numerous anomaly detection and material identification algorithms
proposed for hyperspectral imagery. Robust parameter design (RPD) techniques
have been applied to some of these algorithms in an attempt to choose robust
settings capable of operating consistently across a large variety of image
scenes. Previous research developed a framework for optimizing anomaly
detection in HSI by considering specific image characteristics as noise
variables. Typically, the characteristics available in sets of images do not
provide orthogonal noise designs assumed in RPD. This paper describes a
method for selecting hyperspectral image training and test subsets yielding
consistent RPD results.
GPGPU-based real-time conditional dilation for robust target detection in
multispectral and hyperspectral imagery
Paper 8048-71 of Conference 8048
Date: Tuesday, 26 April 2011
Author(s): James P. Morgenstern, Vision4ce LLC (United States)
A significant topic in many image processing systems is the derivation of a
threshold to enable the detection of targets, the detection of classes of
objects which are different than the background clutter or the automated
analysis of the output of spectral filters and/or anomaly filters. In many
cases the background signals are uni-modal and the estimation of a robust
threshold is a straightforward problem with known solution. There are some
cases where the signals of interest have local contrast against their
immediate surroundings but the application of a global threshold over the
entire image produces poor results. In such cases an adaptive or local
threshold operator offers a more robust solution. One particular local
threshold function is the conditional dilation [originally due to Serra]
which produces a second image by a series of dilations but conditioned on
not exceeding the signal levels in the original. In the limit this second
image becomes a threshold surface where only locally contrasty areas or
objects remain after application of the threshold. Algorithms have been
introduced which enable use of conditional dilation in realtime systems by
reducing the unbounded series of dilations to a small, fixed number of
operations. In the present work we present an adaptation of this algorithm
to a GPGPU device which enables highly parallel version of the algorithm
subject to the unique architecture constraints of the GPGPU.
Anomaly detection in hyperspectral imagery using stable distribution
Paper 8049-31 of Conference 8049
Date: Tuesday, 26 April 2011
Author(s): Suat Mercan, Univ. of Nevada, Reno (United States); Mohammad S.
Alam, Univ. of South Alabama (United States)
In hyperspectral imaging applications, the background generally exhibits a
clearly non-Gaussian impulsive behavior, where valuable information stays in
the tail. In this work, we propose a new technique, where the background is
modeled using the stable distribution for robust detection of outliers. The
outliers of the distribution can be considered as potential anomalies or
regions of interests (ROIs). We effectively utilize the stable model for
detecting targets in impulsive hyperspectral data. To decrease the false
alarm rate, it is necessary to compare the ROI with the known reference
using a suitable technique, such as the Euclidian distance. This
representation compensates a drawback of the Gaussian model, which is not
well suited for describing signals with impulsive behavior. In addition,
thresholding is considered to avoid misclassification of targets. Test
results using real life hyperspectral image datasets are presented to verify
the effectiveness of the proposed technique.
Course: Multispectral and Hyperspectral Image Sensors
Date: Wednesday, 27 April 2011
Instructor(s): Terrence S. Lomheim, The Aerospace Corp. (United States)
This course will describe the imaging capabilities and applications of the
principal types of multispectral (MS) and hyperspectral (HS) sensors. The
focus will be on sensors that work in the visible, near-infrared and
shortwave-infrared spectral regimes, but the course will touch on
longwave-infrared applications. A summary of the salient features of
classical color imaging (human observation) will also be provided in an
appendix.
Object classification using discriminating features derived from
higher-order spectra of multi- and hyperspectral imagery
Paper 8048-37 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Karen N. Zachery, Jiangying Zhou, Yuwei Liao, Teledyne Scientific
& Imaging, LLC (United States)
This paper describes a novel approach for the detection and classification
of man-made objects using discriminating features derived from higher-order
spectra (HOS) of multi- and hyperspectral signals. Our proposed algorithm
exploits the fact that HOS is insensitive to symmetrically distributed noise
(e.g., Gaussian, uniform); exhibits the capability of detecting and
characterizing nonlinear structures in spectral signature and is invariant
to translation, rotation, and scaling. By exploiting these HOS properties,
we have devised a robust method for classifying man-made objects that are
affected by different noise distributions and the presence of spectrally
similar signatures (confusers) as well as variable signal-to-noise ratios.
Peach maturity/quality assessment using hyperspectral imaging-based
spatially resolved technique
Paper 8027-20 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Haiyan Cen, Renfu Lu, Fernando A. Mendoza, Diwan P. Ariana,
Michigan State Univ. (United States)
In order to develop an effective optical system for maturity/quality
assessment of peaches, it is important to understand their optical
absorption and scattering properties as related to the physiological states.
The objective of this research was to measure the absorption and scattering
properties of peaches for their maturity and quality assessment. A optical
property measuring instrument was used in this study. Five hundred peaches,
harvested at four different dates in 2010, were used in the experiment.
Measurements for the optical properties and maturity/quality indices were
performed on the same day of harvest. Spatially-resolved hyperspectral
images were first acquired from each sample followed by the reference
measurements. An inverse algorithm was used to extract the spectra of
absorption and reduced scattering coefficients of peaches at 500-1,000 nm.
Predictive and classification models relating the measured optical
properties to maturity/quality indices were established.
Hyperspectral anomaly detection using sparse kernel-based ensemble learning
Paper 8048-52 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Prudhvi Gurram, Heesung Kwon, U.S. Army Research Lab. (United
States)
In this paper, the principle of Sparse Kernel-based Ensemble Learning (SKEL)
is extended to hyperspectral anomaly detection to obtain Sparse Kernel-based
Anomaly Detection (SKAD). In SKAD, a one class classifier based on support
vector data description (SVDD) is used as a sub-classifier. Each
sub-classifier first finds the most compact enclosing hypersphere of the
local background spectra within the corresponding randomly selected spectral
subspace. Optimal sparse weighting of the kernels that minimizes the volume
of the enclosing ball of the combined kernel is then obtained by optimizing
the kernel weights under an L-1 constraint. The optimal hypersphere defines
the support of the local normalcy data and the pixels with spectral
signatures outside the hypersphere are considered outliers/targets.
Effect of random measurements on the performance of classical hyperspectral
target detection algorithms
Paper 8048-53 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Yi Chen, The Johns Hopkins Univ. (United States); Nasser M.
Nasrabadi, U.S. Army Research Lab. (United States); Trac D. Tran, The Johns
Hopkins Univ. (United States)
In this paper, we study the effect of random measurements of spectral pixels
on the performance of hyperspectral imagery (HSI) target detection. The
N-dimensional spectral pixels are projected onto an M-dimensional
measurement space, where M is much smaller than N, using some measurement
matrix whose entries are usually i.i.d. Gaussian or Bernoulli random
variables. The classical target detector algorithms are then directly
applied to the M-dimensional measurement vectors to detect the targets of
interests. Through extensive experiments on several real HSI, we demonstrate
the minimal compression ratio M/N under various types of random projections
that are necessary to achieve detection performance comparable to that
obtained by exploiting the original N-dimensional pixels.
Course: Target Detection Algorithms for Hyperspectral Imagery
Date: Thursday, 28 April 2011
Instructor(s): Nasser M. Nasrabadi, U.S. Army Research Lab. (United States)
This course provides a broad introduction to the basic concept of automatic
target and object detection and its applications in Hyperspectral Imagery
(HSI). The primary goal of this course is to introduce the well known target
detection algorithms in hyperspectral imagery. Examples of the classical
target detection techniques such as spectral matched filter, subspace
matched filter, adaptive matched filter, orthogonal subspace, support vector
machine (SVM) and machine learning are reviewed. Construction of invariance
subspaces for target and background as well as the use of regularization
techniques are presented. Standard atmospheric correction and compensation
techniques are reviewed. Anomaly detection techniques for HSI and dual band
FLIR imagery are also discussed. Applications of HSI for detection of mines,
targets, humans, chemical plumes and anomalies are reviewed.
The target implant method for predicting target difficulty and detector
performance in hyperspectral imagery
Paper 8048-57 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): William F. Basener, John P. Kerekes, Rochester Institute of
Technology (United States); C. Eric Nance, Raytheon Intelligence &
Information Systems (United States)
In this paper we apply a method of inserting target spectra in real
hyperspectral images for the purpose of determining top performing
algorithms for a given image and target, and the relative difficulty for
detection of targets in a given image with a given detector. Comparisons of
predictions from this method to detection performance on real target pixels
showed that the target implant method provides accurate relative predictions
in terms of both target difficulty and detector performance, but reliably
predicting the actual number of false alarms for a given target at a given
fill fraction is difficult or impossible.
Dynamic dimensionality reduction for hyperspectral imagery
Paper 8048-58 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Haleh Safavi, Keng-Hao Liu, Chein-I Chang, Univ. of Maryland,
Baltimore County (United States)
This paper introduces a new concept of dynamic dimensionality reduction
(DDR) which considers the dimensionality to be retained, p as a parameter so
that it can adapt its value to meet various applications. It is quite
different from the commonly used DR, referred to as static dimensionality
reduction (SDR) with the p fixed at a constant value regardless of
applications. In order to materialize the DDR another new concept, referred
to as progressive DR (PDR) is also developed so that the DR can be performed
progressively with dimensionality varying the value of p.
Simultaneous sparse recovery for unsupervised hyperspectral unmixing
Paper 8048-62 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Dzung T. Nguyen, Yi Chen, Timothy S. Han, Trac D. Tran, The Johns
Hopkins Univ. (United States)
Unsupervised Endmember Extraction and Unmixing in Hyperspectral Images (HSI)
is often done using iterative algorithms which use a greedy suboptimal
approach of collecting one endmember at a time. We propose a method which
does the extraction and unmixing problem concurrently by solving a
simultaneous sparse recovery problem. This approach is able to give a global
optimum solution while requiring no prior knowledge of the representing
signatures or the intrinsic dimension of the HSI. Our proposed algorithm
uses the l1-l2 norm to promote simultaneous sparsity of abundance vectors
while imposing important non-negativity and sum-to-one constraints.
Preliminary results are competitive with other methods in terms of
correctness of extracted endmembers and abundances.
Joint sparsity for target detection
Paper 8048-63 of Conference 8048
Date: Thursday, 28 April 2011
Author(s): Yi Chen, The Johns Hopkins Univ. (United States); Nasser M.
Nasrabadi, U.S. Army Research Lab. (United States); Trac D. Tran, The Johns
Hopkins Univ. (United States)
In this paper, we propose a joint sparsity model for target detection in
hyperspectral imagery. Hyperspectral pixels within a small neighborhood in
the test image are simultaneously represented by a linear combination of a
few common training samples, but weighted with a different set of
coefficients for each pixel. The joint sparsity model automatically
incorporates the inter-pixel correlation within the hyperspectral imagery by
assuming that neighboring pixels usually consists of similar materials. The
sparse representations of the neighboring pixels are obtained by
simultaneously decomposing the pixels over a given dictionary consisting of
background and target training samples. The recovered sparse coefficient
vectors are then directly used for determining the label of the test pixels.
Simulation results on several real hyperspectral images show that the
proposed algorithm outperforms the classical target detection algorithms.
An adaptive algorithm for subpixel target detection using the spectral
information divergence measure
Paper 8049-14 of Conference 8049
Date: Monday, 25 April 2011
Author(s): Wesam A. Sakla, U.S. Dept. of Defense (United States); Adel A.
Sakla, Univ. of South Alabama (United States)
No abstract available
Hyperspectral and multispectral above-water radiometric measurements to
monitor satellite data quality over coastal area
Paper 8030-1 of Conference 8030
Date: Tuesday, 26 April 2011
Author(s): Samir Ahmed, The City College of New York (United States); Robert
Arnone, U.S. Naval Research Lab. (United States); Curtiss O. Davis, Oregon
State Univ. (United States); Alex Gilerson, Tristan Harmel, Soe Min Hlaing,
Alberto Tonizzo, The City College of New York (United States); Alan
Weidemann, U.S. Naval Research Lab. (United States)
The Long Island Sound Coastal Observational platform (LISCO) near Northport,
New York, has been recently established to support satellite data
validation. LISCO has both multispectral SeaPRISM and hyperspectral HyperSAS
radiometers for ocean color measurements. LISCO offers the potential for
improving the calibration and validation activities of current and future
Ocean Color satellite missions, as well as for satellite intercomparisons
and spectral characterization of coastal waters. Results of measurements
made by both the multi- and hyper-spectral instruments, in operation since
October 2009, are presented, evaluated and compared with MODIS and MERIS
ocean color satellite data and with hyperspectral imagery provided by the
HICO satellite mission.
Chemical agent detection with low-resolution scanning FTIR sensors
Paper 8018-41 of Conference 8018
Date: Wednesday, 27 April 2011
Author(s): Eric R. Larrieux, Dimitris Manolakis, MIT Lincoln Lab. (United
States); Francis M. D'Amico, U.S. Army Edgewood Chemical Biological Ctr.
(United States)
Typical standoff sensors for chemical warfare agent detection utilize
passive imaging spectroscopy in the long wave infrared (LWIR) atmospheric
window (8 - 13um). Low-resolution scanning spectrometers provide a small
number of spectra by sampling the area surrounding a chemical plume. The
limited amount of background training data and their spatial-temporal
nonstationarity pose a unique challenge to the development of algorithms
that exploit these data. The purpose of this paper is to analyze data from
the JSLSCAD and low-resolution Aerospace scanning FTIR sensors to
investigate the effects of limited background training data, background
nonstationarity, and registration on the performance of chemical detection
algorithms.
Characterization of turbulence in smokestack plumes via imaging
Fourier-transform spectroscopy
Paper 8048-10 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Jennifer L. Massman, Kevin C. Gross, Air Force Institute of
Technology (United States)
An imaging Fourier transform spectrometer was used to collect hyperspectral
imagery of a coal-burning smokestack in the midwave infrared (1.5-5.5 µm).
The instrument was positioned approximately 350 meters from the stack exit,
giving each pixel a field of view (FOV) of approximately 11.4 cm of the
plume. The instrument collected hyperspectral images on a 128 x 128 pixel
sub-window at a spectral resolution of 20/cm. Approximately 5000 data cubes
were collected in 30 minutes. When acquiring interferograms of a turbulent
source, however, rapid fluctuations in radiance due to sudden temperature
changes in the plume introduce scene change artifacts (SCA) and corrupt the
spectra. Sorting an ensemble of interferograms (AC+DC) into quantiles prior
to Fourier transformation minimizes SCAs. This method enables unbiased
spectral retrievals of concentrations and temperature and reveals
information about the temperature distribution.
Influence of aerosol estimation on coastal water products retrieved from
HICO images
Paper 8030-4 of Conference 8030
Date: Tuesday, 26 April 2011
Author(s): Karen W. Patterson, Gia M. Lamela, U.S. Naval Research Lab.
(United States)
The Naval Research Laboratory has been developing the Coastal Water
Signatures Toolkit (CWST) to estimate water column constituents, depth and
bottom type from hyperspectral imagery using a look-up table approach. To
succeed, the remote sensing reflectances (RRS) must be accurate which means
the atmospheric correction must be accurate. Varying the user determined
aerosol thickness in the Correction of Coastal Ocean Atmospheres software
results in magnitude changes to the RRS and thus, CWST retrievals. This is
an illustration of CWST retrieval variability from Hyperspectral Imager for
the Coastal Ocean images due to inaccurate aerosol estimation during
atmospheric correction.
Evaluating carotenoid changes in tomatoes during postharvest ripening using
Raman chemical imaging
Paper 8027-2 of Conference 8027
Date: Tuesday, 26 April 2011
Author(s): Jianwei Qin, Kuanglin Chao, Moon S. Kim, U.S.D.A. Agricultural
Research Service (United States)
Evaluating carotenoid content in tomatoes can be used for monitoring their
ripeness. This research was aimed to assess carotenoid changes in tomatoes
during postharvest ripening using Raman chemical imaging technique. A
benchtop point-scanning Raman chemical imaging system was developed to
acquire hyperspectral images from tomatoes at different ripeness stages.
Raman spectra of pure carotenoid standards were measured as references. A
hyperspectral image classification method was developed to identify the
carotenoids on the cross sections of the tomato fruits. Raman chemical
images were created to visualize quantity and spatial distribution of the
carotenoids at different ripeness stages of the tomatoes.
Course: Introduction to Optical and Infrared Sensor Systems
Date: Friday, 29 April 2011
Instructor(s): Joseph A. Shaw, Montana State Univ.-Bozeman (United States)
This course provides a broad introduction to optical (near UV-visible) and
infrared sensor systems, with an emphasis on systems used in defense and
security. Topics include both passive imagers and active laser radars
(lidar/ladar). We begin with a discussion of radiometry and radiometric
calculations to determine how much optical power is captured by a sensor
system. We survey atmospheric propagation and phenomenology (absorption,
emission, scattering, and turbulence) and explore how these issues affect
sensor systems. Finally, we perform signal calculations that consider the
source, the atmosphere, and the optical system and detector, to arrive at a
signal-to-noise ratio for typical passive and active sensor systems. These
principles of optical radiometry, atmospheric propagation, and optical
detection are combined in examples of real sensors studied at the
block-diagram level. Sensor system examples include passive infrared
imagers, polarization imagers, and hyperspectral imaging spectrometers, and
active laser radars (lidars or ladars) for sensing distributed or hard
targets. The course organization is approximately one third on the
radiometric analysis of sensor systems, one third on atmospheric
phenomenology and detector parameters, and one third on example calculations
and examination of sensor systems at the block-diagram level.
Sofradir latest developments for infrared space detectors
Paper 8012-1 of Conference 8012
Date: Monday, 25 April 2011
Author(s): Philippe Chorier, Patricia Pidancier, Yoanna-Reine
Nowicki-Bringuier, Anne Delannoy, Bruno Fieque, SOFRADIR (France)
Sofradir is one of the leading companies that develop and produce infrared
detectors. Space applications have become a significant activity. In this
paper, we present a review of latest Sofradir's development for infrared
space applications. A presentation of Sofradir infrared detectors answering
hyperspectral needs from visible up to VLWIR waveband will be made. In
addition a particular emphasis will be placed on the different programs
currently running, with a presentation of the associated results as they
relate to performances and qualifications for space use.
Issues in algorithm fusion
Paper 8048-2 of Conference 8048
Date: Monday, 25 April 2011
Author(s): Alan P. Schaum, U.S. Naval Research Lab. (United States)
We require that a new theory of detection for composite hypothesis problems
meet several requirements: It should: (1) be invariant to an arbitrary
transformation of coordinates; (2) produce optimal algorithms for problems
admitting uniformly most powerful solutions; (3) be superior to prior
methods in at least some cases. The new theory of continuum fusion (CF),
which was developed for hyperspectral detection applications, is examined in
the light of these requirements.
Hyperspectral near-infrared imaging for detection of cuticle cracks on
tomatoes
Paper 8027-18 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Hoon-Soo Lee, Chungnam National Univ. (Korea, Republic of);
Danhee Jeong, Moon S. Kim, Agricultural Research Service, USDA (United
States); Byoung-Kwan Cho, Chungnam National Univ. (Korea, Republic of);
Stephen R. Delwiche, Kuanglin Chao, Agricultural Research Service, USDA
(United States)
Cuticle cracks on tomatoes could be potential harbor sites of pathogenic
infection which may cause deleterious consequences to consumer health in
fresh cut markets. The feasibility of hyperspectral near-infrared imaging
technique with the spectral range of 1000 nm to 1700 nm was investigated for
detecting defects on tomatoes. Spectral information obtained from the
regions of interest on both defected and whole areas were analyzed to
determine optimal wavebands ratio used for further image processing to
discriminate the defected areas from the whole tomato surfaces. Unsupervised
multivariate analysis method, such as principal component analysis was also
explored to improve the detection accuracy. Results showed that the defected
tomatoes could be differentiated from the sound ones with accuracy of 94.4%.
Estimation of low-resolution visible spectra from RGB imagery II:
simulation results
Paper 8048-48 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Harvey C. Schau, Meridian Systems LLC (United States)
In a previous paper [Schau, H.C.,"Estimation of Low Resolution Visible
Spectra from RGB Imagery", Proc. Algorithms and Technology for
Multispectral, Hyperspectral, and Ultraspectral Imagers X ,SPIE,Orlando
(2009)] , it was demonstrated that an estimate of a low resolution visible
spectra of a naturally illuminated outdoor scene can be estimated from RGB
values measured by a conventional color imager. In this paper we present a
refined algorithm and document results in a study to estimate visible source
spectra from solar illumination scenes using reflectance spectra generated
from the USGS data base.
Generalized statistics framework for lagrange constraint neural networks
Paper 8058-22 of Conference 8058
Date: Wednesday, 27 April 2011
Author(s): Ravi C. Venkatesan, Systems Research Corp. (India); Arun Sharma,
SecureALL Corp. (United States)
The theory of Lagrange Constraint Neural Networks is re-formulated within
the framework of generalized statistics of Tsallis. A numerical algorithm
for unmixing endmembers in hyperspectral imaging is formulated. Numerical
results exemplifying the theory are presented. A self-consistent methodology
to assign values to the Lagrange multipliers based on the theory of phase
transitions is presented.
Graph theoretic metrics for spectral imagery with application to change
detection
Paper 8048-8 of Conference 8048
Date: Monday, 25 April 2011
Author(s): James A. Albano, David W. Messinger, Ariel Schlamm, William F.
Basener, Rochester Institute of Technology (United States)
A new model for spectral data is presented that is based on graph theory.
The spectral graph is constructed by joining a pixel with its m-nearest
neighbors with an undirected weighted edge. The weight of each edge
corresponds to the spectral Euclidean distance between the connected pixels.
We then apply different graph theoretic metrics, such as the Normalized Edge
Volume (NEV), to quantify important structural characteristics of the
resulting graph. Finally, a graph-based spectral change detection algorithm
is presented that is based on the NEV metric. Results are shown for both
multispectral and hyperspectral data sets.
Trilateral filter on multispectral imagery for classification and
segmentation
Paper 8048-38 of Conference 8048
Date: Wednesday, 27 April 2011
Author(s): Weihua Sun, David W. Messinger, Rochester Institute of Technology
(United States)
We present a new approach to filtering high spatial resolution multispectral
(MSI) or hyperspectral imagery (HSI) for classification and segmentation.
Our approach is inspired by the bilateral filtering method (Tomasi 1998)
that smooths images while preserving important edges. To achieve a similar
goal for MSI/HSI, we build a nonlinear tri-lateral filter that takes into
account both spatial and spectral similarities. Our approach works on a
pixel by pixel basis; the spectrum of each pixel in the filtered image is
the combination of the spectra of its adjacent pixels in the original image
weighted by the three factors: geometric closeness, spectral Euclidean
distance and spectral angle separation. Our approach reduces small clutter
across the image while keeping edges with strong contrast. A k-means
classifier is applied to the filtered image and its results show our
approach can produce a much less cluttered class map.
Infrared imaging technology for detection of bruising damages of 'Singo'
pear
Paper 8027-17 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): Byoung-Kwan Cho, Chungnam National Univ. (Korea, Republic of);
Moon S. Kim, U.S.D.A. Agricultural Research Service (United States);
Hoon-Soo Lee, Chungnam National Univ. (Korea, Republic of); Stephen R.
Delwiche, U.S.D.A. Agricultural Research Service (United States)
Of the quality attributes of pear bruising damage is the most crucial
external quality factor which should be detected in sorting processes.
Development of sensitive detection methods for the defects is necessary to
ensure accurate quality measurement. Infra-red imaging technique has good
potentials for identifying and detecting anomalies due to defects on
agricultural materials. In this study, feasibility of hyperspectral
infra-red imaging technique for the detection of bruising damages underneath
the pear skin was investigated. Damages exist underneath the skin are not
easily discernable by using conventional imaging technique at visible
wavelength ranges. Simple image combination methods as well as multivariate
image analyses were explored to develop optimal image analysis algorithm to
detect bruising damages of pear. Results demonstrated good potential of the
infra-red imaging for detection of bruising damages underneath the pear
skin.
LED induced fluorescence imaging technology for detection of cuticle
cracking on cherry tomatoes
Paper 8027-22 of Conference 8027
Date: Wednesday, 27 April 2011
Author(s): In-Suck Baek, Byoung-Kwan Cho, Chungnam National Univ. (Korea,
Republic of); Moon S. Kim, U.S.D.A. Agricultural Research Service (United
States); Young-Sik Kim, SangMyung Univ. (Korea, Republic of)
Nondestructve quality measurement is one of the most important postharvest
processes in cherry tomato industry. Of the quality attributes of cherry
tomatoes, cuticle cracking which are fine hair-like cracks on surfaces
produces quality and safety problems. Cracking is the main cause of
retailers' rejection and common site for pathogenic penetration and
infection. Hence, the cherry tomatoes exposed on the defects should be
discriminated in quality sorting processes. In this study, optimal
excitation wavelength was investigated using fluorescence emission and
excitation matrix of sound and defected areas on cherry tomatoes. High power
LEDs of the optimal wavelength were used for hyperspectral fluorescence
imaging system to explore the best combination of the emission spectral
images. The LED induced fluorescence imaging technique showed excellent
potential for discriminating cracked cherry tomatoes.
iCATSI: a multi-pixel imaging differential standoff chemical detection
sensor
Paper 8018-40 of Conference 8018
Date: Wednesday, 27 April 2011
Author(s): Louis M. Moreau, Florent Prel, ABB Analytical Measurement
(Canada); Hugo Lavoie, Defence Research and Development Canada (Canada);
Claude B. Roy, Christian A. Vallieres, ABB Analytical Measurement (Canada);
Jean-Marc Theriault, Defence Research and Development Canada (Canada)
iCATSI is a combination of the CATSI instrument, a standoff differential
FTIR optimised for the characterisation of chemicals and the MRi, the
hyperspectral imaging spectroradiometer of ABB Bomem. The instrument is
equipped with a dual-input telescope to perform optical background
subtraction. With that method, the signal from the background is
automatically removed from the signal of the object of interest. The
instrument is capable of sensing in the VLWIR (cut-off near 14 µm) to
support research related to standoff chemical detection. Overview of the
capabilities of the instrument and results from tests and field trials will
be presented.