SAR Automatic Target Recognition Using Discriminative Graphical Models
The problem of automatically classifying sensed imagery such as synthetic aperture radar (SAR) into a canonical set of target classes is widely known as automatic target recognition (ATR). A typical ATR algorithm comprises the extraction of a meaningful set of features from target imagery followed b...
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description | The problem of automatically classifying sensed imagery such as synthetic aperture radar (SAR) into a canonical set of target classes is widely known as automatic target recognition (ATR). A typical ATR algorithm comprises the extraction of a meaningful set of features from target imagery followed by a decision engine that performs class assignment. While ATR algorithms have significantly increased in sophistication over the past two decades, two outstanding challenges have been identified in the rich body of ATR literature: 1) the desire to mine complementary merits of distinct feature sets (also known as feature fusion), and 2) the ability of the classifier to excel even as training SAR images are limited. We propose to apply recent advances in probabilistic graphical models to address these challenges. In particular we develop a two-stage target recognition framework that combines the merits of distinct SAR image feature representations with discriminatively learned graphical models. The first stage projects the SAR image chip to informative feature spaces that yield multiple complementary SAR image representations. The second stage models each individual representation using graphs and combines these initially disjoint and simple graphs into a thicker probabilistic graphical model by leveraging a recent advance in discriminative graph learning. Experimental results on the benchmark moving and stationary target acquisition and recognition (MSTAR) data set confirm the benefits of our framework over existing ATR algorithms in terms of improvement in recognition rates. The proposed graphical classifiers are particularly robust when feature dimensionality is high and number of training images is small, a commonly observed constraint in SAR imagery-based target recognition. |
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A typical ATR algorithm comprises the extraction of a meaningful set of features from target imagery followed by a decision engine that performs class assignment. While ATR algorithms have significantly increased in sophistication over the past two decades, two outstanding challenges have been identified in the rich body of ATR literature: 1) the desire to mine complementary merits of distinct feature sets (also known as feature fusion), and 2) the ability of the classifier to excel even as training SAR images are limited. We propose to apply recent advances in probabilistic graphical models to address these challenges. In particular we develop a two-stage target recognition framework that combines the merits of distinct SAR image feature representations with discriminatively learned graphical models. The first stage projects the SAR image chip to informative feature spaces that yield multiple complementary SAR image representations. The second stage models each individual representation using graphs and combines these initially disjoint and simple graphs into a thicker probabilistic graphical model by leveraging a recent advance in discriminative graph learning. Experimental results on the benchmark moving and stationary target acquisition and recognition (MSTAR) data set confirm the benefits of our framework over existing ATR algorithms in terms of improvement in recognition rates. The proposed graphical classifiers are particularly robust when feature dimensionality is high and number of training images is small, a commonly observed constraint in SAR imagery-based target recognition.</description><identifier>ISSN: 0018-9251</identifier><identifier>EISSN: 1557-9603</identifier><identifier>DOI: 10.1109/TAES.2013.120340</identifier><identifier>CODEN: IEARAX</identifier><language>eng</language><publisher>New York: IEEE</publisher><subject>Algorithms ; Feature extraction ; Graphical models ; Graphs ; Probabilistic logic ; Recognition ; Representations ; Synthetic aperture radar ; Target recognition ; Training ; Tree graphs ; Unmanned aerial vehicles</subject><ispartof>IEEE transactions on aerospace and electronic systems, 2014-01, Vol.50 (1), p.591-606</ispartof><rights>Copyright The Institute of Electrical and Electronics Engineers, Inc. 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A typical ATR algorithm comprises the extraction of a meaningful set of features from target imagery followed by a decision engine that performs class assignment. While ATR algorithms have significantly increased in sophistication over the past two decades, two outstanding challenges have been identified in the rich body of ATR literature: 1) the desire to mine complementary merits of distinct feature sets (also known as feature fusion), and 2) the ability of the classifier to excel even as training SAR images are limited. We propose to apply recent advances in probabilistic graphical models to address these challenges. In particular we develop a two-stage target recognition framework that combines the merits of distinct SAR image feature representations with discriminatively learned graphical models. The first stage projects the SAR image chip to informative feature spaces that yield multiple complementary SAR image representations. The second stage models each individual representation using graphs and combines these initially disjoint and simple graphs into a thicker probabilistic graphical model by leveraging a recent advance in discriminative graph learning. Experimental results on the benchmark moving and stationary target acquisition and recognition (MSTAR) data set confirm the benefits of our framework over existing ATR algorithms in terms of improvement in recognition rates. The proposed graphical classifiers are particularly robust when feature dimensionality is high and number of training images is small, a commonly observed constraint in SAR imagery-based target recognition.</description><subject>Algorithms</subject><subject>Feature extraction</subject><subject>Graphical models</subject><subject>Graphs</subject><subject>Probabilistic logic</subject><subject>Recognition</subject><subject>Representations</subject><subject>Synthetic aperture radar</subject><subject>Target recognition</subject><subject>Training</subject><subject>Tree graphs</subject><subject>Unmanned aerial vehicles</subject><issn>0018-9251</issn><issn>1557-9603</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2014</creationdate><recordtype>article</recordtype><sourceid>RIE</sourceid><recordid>eNpdkMFLwzAUh4MoOKd3wUvBi5fO95qmTY5lblOYCFs9hyxLZ0bXzKYV_O_NqHjw9Hjw_R6_9xFyizBBBPFYFrP1JAGkE0yApnBGRshYHosM6DkZASCPRcLwklx5vw9rylM6IvN1sYqKvnMH1VkdlardmS5aGe12je2sa6J3b5td9GS9bu3BNgH7MtGiVccPq1Udvbqtqf01uahU7c3N7xyTcj4rp8_x8m3xMi2WsaZJ2sU8U1wkqCujRc4x5xpAV6gyJhjjoCqDuNFiu0XKRJpmIICajVJ5XhkR3hqTh-HssXWfvfGdPIRepq5VY1zvJWYJgOCQJQG9_4fuXd82oZxEljJBeWgQKBgo3TrvW1PJY_hStd8SQZ68ypNXefIqB68hcjdErDHmD884CEFz-gM7AHI2</recordid><startdate>201401</startdate><enddate>201401</enddate><creator>Srinivas, Umamahesh</creator><creator>Monga, Vishal</creator><creator>Raj, Raghu G.</creator><general>IEEE</general><general>The Institute of Electrical and Electronics Engineers, Inc. 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A typical ATR algorithm comprises the extraction of a meaningful set of features from target imagery followed by a decision engine that performs class assignment. While ATR algorithms have significantly increased in sophistication over the past two decades, two outstanding challenges have been identified in the rich body of ATR literature: 1) the desire to mine complementary merits of distinct feature sets (also known as feature fusion), and 2) the ability of the classifier to excel even as training SAR images are limited. We propose to apply recent advances in probabilistic graphical models to address these challenges. In particular we develop a two-stage target recognition framework that combines the merits of distinct SAR image feature representations with discriminatively learned graphical models. The first stage projects the SAR image chip to informative feature spaces that yield multiple complementary SAR image representations. The second stage models each individual representation using graphs and combines these initially disjoint and simple graphs into a thicker probabilistic graphical model by leveraging a recent advance in discriminative graph learning. Experimental results on the benchmark moving and stationary target acquisition and recognition (MSTAR) data set confirm the benefits of our framework over existing ATR algorithms in terms of improvement in recognition rates. The proposed graphical classifiers are particularly robust when feature dimensionality is high and number of training images is small, a commonly observed constraint in SAR imagery-based target recognition.</abstract><cop>New York</cop><pub>IEEE</pub><doi>10.1109/TAES.2013.120340</doi><tpages>16</tpages></addata></record> |
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subjects | Algorithms Feature extraction Graphical models Graphs Probabilistic logic Recognition Representations Synthetic aperture radar Target recognition Training Tree graphs Unmanned aerial vehicles |
title | SAR Automatic Target Recognition Using Discriminative Graphical Models |
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