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This PDF file contains the front matter associated with SPIE
Proceedings Volume 6977, including the Title Page, Copyright
information, Table of Contents, Introduction (if any), and the
Conference Committee listing.
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We review the potential of optical techniques in security tasks and propose to combine some of them in the design of
new optical ID tags for automatic vehicle identification and authentication. More specifically, we propose to combine
visible and near infrared imaging, optical decryption, distortion-invariant ID tags, optoelectronic devices, coherent image
processor, optical correlation, and multiple authenticators. A variety of images and signatures, including biometric and
random sequences, can be combined in an optical ID tag for multifactor identification. Encryption of the information
codified in the ID tag allows increasing security and deters from unauthorized usage of optical tags. A novel NIR ID tag
is designed and built by using commonly available materials. The ID tag content cannot be visually perceived at naked
eye; it cannot be copied, scanned, or captured by any conventional device. The identification process encompasses
several steps such as detection, information decoding and verification which are all detailed in this work. Design of
rotation and scale invariant ID tags is taken into account to achieve a correct authentication even if the ID tag is captured
in different positions.
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We note several key general pattern recognition (GPR) issues that have been ignored in all prior distortion-invariant
kernel filter (kernel DIF) work. These include: the unrealistic assumption of centered test data, the lack of a fast FFTbased
on-line implementation, the significantly larger storage and on-line computation requirements, incorrect
formulation of the kernel filter in the FT domain, incorrect formulation of prior image-domain kernel SDF and Mace
filters, and the unrealistic use of test set data for parameter selection. We present several improvements to prior kernel
DIF work. Our primary objective is to examine the viability of kernel DIFs for GPR and automatic target recognition
(ATR) applications (where the location of the object in the test input is not known). Thus, in this paper, we apply our
improved kernel DIFs to CAD ATR data. We address range and full 360° aspect view variations; we also address
rejection of unseen confuser objects and clutter. We use training and validation set data (not test set data) to select the
kernel parameter. We show that kernel filters (higher-order features) can improve classification and confuser rejection
performance. We consider only kernel SDF filters, since their on-line computation requirements are reasonable; we
present test results for both polynomial and Gaussian kernels. The main purposes of this paper are to: note issues of
importance ignored in all prior kernel DIF work, detail how to properly perform energy minimization in kernel DIFs,
show that kernel SDF filters can correct errors for ATR data, and compare the performance of kernel SDF filters and
standard Minace DIFs. We also introduce our new Minace-preprocessed kernel SDF filter.
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This paper describes JPL's recent work on high-performance automatic target recognition (ATR) processor consisting of
a Grayscale Optical Correlator (GOC) and neural network for various Computer Aided Detection and Computer Aided
Classification (CAD/CAC) applications. A simulation study for sonar mine and mine-like target detection and
classification is presented. Applications to periscope video ATR is also presented.
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Most integrated target detection and tracking systems employ state-space models to keep track of an explicit
number of individual targets. Recently, a non-state-space framework was developed for enhancing target detection
in video by applying probabilistic motion models to the soft information in correlation outputs before
thresholding. This framework has been referred to as multi-frame correlation filtering (MFCF), and because it
avoids the use of state-space models and the formation of explicit tracks, the framework is well-suited for handling
scenes with unknown numbers of targets at unknown positions. In this paper, we propose to use quadratic
correlation filters (QCFs) in the MFCF framework for robust target detection. We test our detection algorithm
on real and synthesized single-target and multi-target video sequences. Simulation results show that MFCF can
significantly reduce (to zero in the best case) the false alarm rates of QCFs at detection rates above 95% in the
presence of large amounts of uncorrelated noise. We also show that MFCF is more adept at rejecting those false
peaks due to uncorrelated noise rather than those due to clutter and compression noise; consequently, we show
that filters used in the framework should be made to favor clutter rejection over noise tolerance.
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A generic nonlinear dynamic range compression deconvolver (DRCD) is proposed. We have performed the dynamic
range compression deconvolution using three forms of nonlinearities: (a) digital implementation- A-law/μ-law, (b)
hybrid digital-optical implementation- two-beam coupling photorefractive holography, and (c) all optical
implementation- MEMS deformable mirrors. The performance of image restoration improves as the saturation
nonlinearity increases. The DRCD could be used as a preprocessor for enhancing Automatic Target Recognition (ATR)
system performance. In imaging through atmosphere, factors such as rain, snow, haze, pollution, etc. affect the received
information from a target; therefore the need for correcting these captured images before an ATR system is required. The
DRCD outperforms well-established image restoration filters such as the inverse and the Wiener filters.
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Multispectral imagery is used for a wide variety of military and commercial applications,
including object detection such as mines. The main reason for using multispectral imagery is that
it reveals spectral information about the scene which cannot be obtained from a single spectral
band. This paper introduces a new algorithm for mine detection in multispecral imagery using
the constrained energy minimization (CEM) approach. The CEM approach is introduced as
classifier. The novelty of this idea is that this classifier uses only the information of the mines for
training and enabling the potential mines without using information about the clutter in the
scene. Using only mines information for detection is a major advantage of the CEM approach.
In addition, the CEM approach is modified such that recomputing the autocorrelation matrix is
not necessary and using the algorithm became scene independent Then, to reduce the false alarm
further, morphological processing and stochastic expectation maximization (SEM) algorithm are
employed for post-processing. The results of the proposed algorithm were promising when the
algorithm is tested using real multispectral imagery.
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In this paper we propose the use of discrete pseudorandom phase mask for a spatially efficient phase encoded JTC. In the proposed JTC system the reference image is phase encoded using a pseudorandom phase mask to eliminate extraneous peaks cluttering or overshadowing the correlation output. The phase encoding scheme also eliminates the need for a spatial separation in the joint input image resulting in the full use of the SLM. An optoelectronic architecture of the proposed system is presented. To relax the need for a phase-only SLM with a high phase resolution we proposed the use of discrete pentary pseudorandom phase mask.
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The use of Fisher ratio (FR) algorithm to predict a pattern in an input seen has been applied in several
applications in the literature with different success rate, depending on how close is the similarity of
the statistical parameters between the background and the patterns. We propose a modification to the
FR ratio algorithm that is dependent on the probability density function (PDF). The modified PDF-FR
algorithm provides good improvements over that of the PDF used alone. We further enhance the
performance of the PDF-FR using polarization-enhanced imagery.
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Pattern recognition for real-time applications requires the detection scheme be a simple architecture, fast in
operation, able to detect all the potential targets without generating any false alarms, and invariant to noise and
distortion. Though several target detection algorithms have been proposed in the literature over the years, but
most of them are found to be not as efficient in meeting all the above-mentioned objective requirements. A new
Gaussian-filtered, shifted phase-encoded fringe-adjusted joint transform correlation technique has been
developed in this paper for an optical pattern recognition system. The input noisy image is first filtered by using
a Gaussian filter, which helps in overcoming the effect of background noise and distortions. Then the filtered
image is correlated with the reference image using the proposed joint transform correlator, which eliminates the
problems of duplicate correlation heights, false alarms and low discrimination ratio. The architecture involves
optical devices including lenses and spatial light modulators, which guarantees the very fast operation required
for real-time applications. Computer simulation results show that the algorithm can successfully discriminate
between targets and non-targets contained in the input scene even in the presence of noise and can also make the
best utilization of the correlation space.
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This paper contains the results of synthesis and realization of linear phase coefficient composite (LPCC) filters in 4-f
correlator. LPCC filters application allows achieving invariance of correlation peak in the presence of geometric
distortions of contour objects. LPCC filters were realized as computer generated binary amplitude holograms for
application in optical correlator. Experimental results of invariant pattern recognition are presented.
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A technique for 6-degree-of-freedom (6DOF) pose estimation of space vehicles is being developed. This technique
draws upon recent developments in implementing optical correlation measurements in a nonlinear estimator, which
relates the optical correlation measurements to the pose states (orientation and position). For the optical correlator, the
use of both conjugate filters and binary, phase-only filters in the design of synthetic discriminant function (SDF) filters
is explored. A static neural network is trained a priori and used as the nonlinear estimator. New commercial animation
and image rendering software is exploited to design the SDF filters and to generate a large filter set with which to train
the neural network. The technique is applied to pose estimation for rendezvous and docking of free-flying spacecraft
and to terrestrial surface mobility systems for NASA's Vision for Space Exploration. Quantitative pose estimation
performance will be reported. Advantages and disadvantages of the implementation of this technique are discussed.
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In a FLIR image sequence, a target may disappear permanently or may reappear after some frames and
crucial information such as direction, position and size related to the target are lost. If the target reappears at a
later frame, it may not be tracked again because the 3D orientation, size and location of the target might be
changed. To obtain information about the target before disappearing and to detect the target after reappearing,
distance classifier correlation filter (DCCF) is trained manualy by selecting a number of chips randomly. This
paper introduces a novel idea to eliminates the manual intervention in training phase of DCCF. Instead of
selecting the training chips manually and selecting the number of the training chips randomly, we adopted the
K-means algorithm to cluster the training frames and based on the number of clusters we select the training
chips such that a training chip for each cluster. To detect and track the target after reappearing in the field-ofview
,TBF and DCCF are employed. The contduced experiemnts using real FLIR sequences show results
similar to the traditional agorithm but eleminating the manual intervention is the advantage of the proposed
algorithm.
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The context-driven target recognition requires the object-of-interest (OOI) to be first detected. We use the multiscale beamlet transform to detect airport runways as the OOI for detecting the aircraft. The up-to-down strategy in the beamlet graph structure is used for the connectivity and directional continuation of the edges, which are first detected in a coarse scale and are then refined at several finer scales.
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Remote sensing offers an important means of detecting and analyzing temporal
changes occurring in our landscape. This research used remote sensing to quantify land use/land
cover changes at the Nanggroe Aceh Darussalam (Nad) province, Indonesia on a regional scale.
The objective of this paper is to assess the changed produced from the analysis of Landsat TM
data. A Landsat TM image was used to develop land cover classification map for the 27 March
2005. Four supervised classifications techniques (Maximum Likelihood, Minimum Distance-to-
Mean, Parallelepiped and Parallelepiped with Maximum Likelihood Classifier Tiebreaker
classifier) were performed to the satellite image. Training sites and accuracy assessment were
needed for supervised classification techniques. The training sites were established using
polygons based on the colour image. High detection accuracy (>80%) and overall Kappa (>0.80)
were achieved by the Parallelepiped with Maximum Likelihood Classifier Tiebreaker classifier
in this study. This preliminary study has produced a promising result. This indicates that land
cover mapping can be carried out using remote sensing classification method of the satellite
digital imagery.
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In this paper, we propose the use of directional Gabor filtering and multifractal analysis based quality control (QC) to
provide accurate identification of precipitation in weather data collected from meteorological-radar volume scans. The
QC algorithm is an objective algorithm that minimizes human interaction. The algorithm utilizes both textural and
intensity information obtained from the two lower-elevation reflectivity maps. Computer simulations are provided to
show the effectiveness of this algorithm.
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As we published in the last three years, we can use the continuity threshold and the geometric projection methods to
eliminate the background noise and the cloud-obscuring noise in an edge-detected 2D color picture for the topological
pattern recognition system developed by the author. Preliminary computer experiments showed that the background
noise elimination is thorough and the reconstruction of the obscured part of the original image is 90%+ accurate.
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Digital watermarking is a vital process for protecting the copyright of images. This paper presents a method of
embedding a private robust watermark into a digital image. The full complex form the Wiener filter is used to
extract the signal from the watermarked image. This is shown to outperform the more conventional approximate
notation. The results are shown to be extremely noise insensitive.
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The problem of wide area persistent surveillance presents imaging problems which cannot be
addressed by traditional sensing. We consider a coded aperture approach to imaging a wide area
with high resolution for an object tracking application. Coded aperture imaging systems are
generally designed for obtaining images of static scenes. For exploitation of dynamic scenes, the
coding approach must be modified to not only reconstruct the image, but also to facilitate the
detection of moving objects over this large area. We present a multi-scale framework that describes
a multiplexed sensing and image reconstruction process. A novel method is introduced for learning
a "motion model" for a given scene, and using it to handle the ambiguity induced by object motion.
The results of initial simulations are presented.
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This paper describes a novel method used to extract planar surfaces from a stream of 3D images in near real-time. The
method currently operates on 3D images acquired from a MESA SwissRanger SR-3000 infrared time of flight camera,
which operates in a manner similar to flash-ladar sensors; the camera provides the user with range and intensity value for
each pixel in the 176 by 144 image frame. After application of the camera calibration the range measurement associated
with each pixel can be converted to a Cartesian coordinate.
First, the proposed method splits the focal image plane into sub-images or sub-windows. The method then operates in
the 3D parameter space to find an estimate of the planar equation best describing the point cloud associated with the
window pixels and to compute a metric that defines how well the sub-window points fit to the planar estimate. The best
fit sub-window is then used as an initialization to one of two investigated methods: a parameter based search technique
and cluster validation using histogram thresholding to extract the entire plane from the 3D image frame. Once a plane is
extracted, a feature vector describing that plane along with their describing statistics can be generated. These feature
vectors can then be used to enable feature-based navigation.
The paper will fully describe the feature extraction method and will provide application results of this method to extract
features from indoor 3D video data obtained with the MESA SwissRanger SR-3000. Also provided is a brief overview
of the generation of feature statistics and their importance.
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Vescent Photonics Inc. and Jet Propulsion Lab are jointly developing an innovative ultra-compact (volume < 10 cm3),
ultra-low power (<10-3 Watt-hours per measurement and zero power consumption when not measuring), completely
non-mechanical electro-optic Fourier transform spectrometers (EO-FTS) that will be suitable for a variety of remoteplatform,
in-situ measurements. These devices are made possible by a novel electro-evanescent waveguide architecture,
enabling "chip-scale" EO-FTS sensors. The potential performance of these EO-FTS sensors include: i) a spectral range
throughout 0.4-5 μm (25000 - 2000 cm-1), ii) high-resolution (▵λ≤ 0.1 nm), iii) high-speed (< 1 ms) measurements, and
iv) rugged integrated optical construction. This performance potential enables the detection and quantification of a large
number of different atmospheric gases simultaneously in the same air mass and the rugged construction will enable
deployment on previously inaccessible platforms. The sensor construction is also amenable for analyzing aqueous
samples on remote floating or submerged platforms. To date a proof-of-principle prototype EO-FTS sensor has been
demonstrated in the near-IR (range of 1450-1700 nm) with a 5 nm resolution. This performance is in good agreement
with theoretical models, which are being used to design and build the next generation of EO-FTS devices.
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A novel model predictive control (MPC) technique is used as a general framework for resource management
in sensor networks. The MPC formulation adapts the sensor network system parameters that impact the energy
consumption rate (such as sensor sampling rates) to variations in the criticality of the phenomenon being monitored. This
approach is illustrated using two examples. The first is based on a sensor network where the data is temporal in nature.
The second is based on an coastal environment monitoring network where the data is spatiotemporal in nature and event
criticality shows variation in both space and time. Simulation results from both these applications are presented that
demonstrate the functioning of the proposed predictive controller in sensor network control.
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Poster Session: Pattern Recognition Filters and Applications
In optical-digital correlators for pattern recognition, linear registration of correlation signals is significant for
both of recognition reliability and possible input image restoration. This usually achieves with scientific graduated
technical cameras, but most of commercial digital cameras now have an option of RAW data output.
With appropriate software and parameters of processing, it is possible to get linearized image data from photo
camera's RAW file. Application of such photo cameras makes optical-digital systems cheaper, more flexible and
brings along their wider propagation.
For linear registration of correlation signals, open-source Dave Coffins's RAW converter DCRAW was used in
this work. Data from photo camera were linearized by DCRAW converter in "totally RAW documental mode"
with 16-bit output.
Experimental results of comparison between linearized and non-linearized correlation signals and digitally restored
input scene images are presented. It is shown, that applied linearization allows to increase linear dynamic
range for used Canon EOS 400D camera more that 3 times.
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We attempted to investigate the potential of using satellite image for
acquiring data for remote sensing application. This study investigated the potential of
using digital satellite image for land cover mapping over AlQasim, Saudi Arabia.
Satellite digital imagery has proved to be an effective tool for land cover studies.
Supervised classification technique (Maximum Likelihood, ML, Minimum Distance-to-
Mean, MDM, Parallelepiped, P) techniques were used in the classification analysis to
extract the thematic information from the acquired scenes. Besides that, neutral network
also performed in this study. The accuracy of each classification map produced was
validated using the reference data sets consisting of a large number of samples collected
per category. The study revealed that the ML classifier produced better result. The best
supervised classifier was chosen based on the highest overall accuracy and Kappa
statistic. The results produced by this study indicated that land cover features could be
clearly identified and classified into a land cover map. This study suggested that the land
cover types of AlQasim, Saudi Arabia can be accurately mapped.
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It is analyzed the important and actual problem of the defective images of scenes restoration. The proposed
approach provides restoration of scenes by a system on the basis of human intelligence phenomena reproduction
used for restoration-recognition of images. The cognitive models of the restoration process are elaborated. The
models are realized by the intellectual processors constructed on the base of neural networks and associative
memory using neural network simulator NNToolbox from MATLAB 7.0. The models provides restoration and
semantic designing of images of scenes under defective images of the separate objects.
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There are presented the results of investigation of the algorithms of invariant face recognition of masked persons. There
are described 3 algorithms based on Image Moments Features, Principal Component Analyses algorithm and
Correlation algorithm. It is presented the description of the elaborated software for PC based face recognition, created
in Borland C++ Builder environment. There are presented the data of the face recognition in conditions of masking,
change of the rotation, scale of the images.
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