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Paper Abstract and Keywords
Presentation 2018-01-25 14:50
Deep Learning for End-to-End Automatic Target Recognition from Synthetic Aperture Radar Imagery
Hidetoshi Furukawa (Toshiba Infrastructure Systems & Solutions)
Abstract (in Japanese) (See Japanese page) 
(in English) The standard architecture of synthetic aperture radar (SAR) automatic target recognition (ATR) consists of three stages: detection, discrimination, and classification. In recent years, convolutional neural networks (CNNs) for SAR ATR have been proposed, but most of them classify target classes from a target chip extracted from SAR imagery, as a classification for the third stage of SAR ATR. In this report, we propose a novel CNN for end-to-end ATR from SAR imagery. The CNN named verification support network (VersNet) performs all three stages of SAR ATR end-to-end. VersNet inputs a SAR image of arbitrary sizes with multiple classes and multiple targets, and outputs a SAR ATR image representing the position, class, and pose of each detected target. This report describes the evaluation results of VersNet which trained to output scores of all 12 classes: 10 target classes, a target front class, and a background class, for each pixel using the moving and stationary target acquisition and recognition (MSTAR) public dataset.
Keyword (in Japanese) (See Japanese page) 
(in English) automatic target recognition (ATR) / multiple targets / detection / classification / pose estimation / convolutional neural network (CNN) / deep learning / synthetic aperture radar (SAR)  
Reference Info. IEICE Tech. Rep., vol. 117, no. 403, SANE2017-92, pp. 35-40, Jan. 2018.
Paper # SANE2017-92 
Date of Issue 2018-01-18 (SANE) 
ISSN Print edition: ISSN 0913-5685  Online edition: ISSN 2432-6380

Conference Information
Committee SANE  
Conference Date 2018-01-25 - 2018-01-26 
Place (in Japanese) (See Japanese page) 
Place (in English) Nagasaki Prefectural Art Museum 
Topics (in Japanese) (See Japanese page) 
Topics (in English) Positioning, navigation, Radar and general 
Paper Information
Registration To SANE 
Conference Code 2018-01-SANE 
Language English 
Title (in Japanese) (See Japanese page) 
Sub Title (in Japanese) (See Japanese page) 
Title (in English) Deep Learning for End-to-End Automatic Target Recognition from Synthetic Aperture Radar Imagery 
Sub Title (in English)  
Keyword(1) automatic target recognition (ATR)  
Keyword(2) multiple targets  
Keyword(3) detection  
Keyword(4) classification  
Keyword(5) pose estimation  
Keyword(6) convolutional neural network (CNN)  
Keyword(7) deep learning  
Keyword(8) synthetic aperture radar (SAR)  
1st Author's Name Hidetoshi Furukawa  
1st Author's Affiliation Toshiba Infrastructure Systems & Solutions Corporation (Toshiba Infrastructure Systems & Solutions)
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Speaker
Date Time 2018-01-25 14:50:00 
Presentation Time 25 
Registration for SANE 
Paper # IEICE-SANE2017-92 
Volume (vol) IEICE-117 
Number (no) no.403 
Page pp.35-40 
#Pages IEICE-6 
Date of Issue IEICE-SANE-2018-01-18 


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