Recognition of ship types from an infrared image using moment invariants and neural networks
Approved for public release; distribution is unlimited. === Autonomous object recognition is an active area of interest for military and commercial applications: Given an input image from an infrared or range sensor, find interesting objects in those images and then classify those objects. In this w...
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Monterey, California. Naval Postgraduate School
2012
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ndltd-nps.edu-oai-calhoun.nps.edu-10945-27622017-05-24T16:07:58Z Recognition of ship types from an infrared image using moment invariants and neural networks Alves, Jorge Amaral Rowe, Neil C. McGhee, Robert B. Computer Science Approved for public release; distribution is unlimited. Autonomous object recognition is an active area of interest for military and commercial applications: Given an input image from an infrared or range sensor, find interesting objects in those images and then classify those objects. In this work, automatic target recognition of ship types in an infrared image is explored. The first phase segments the original infrared image in order to obtain the ship silhouette. The second phase calculates moment functions of those silhouettes that guarantee invariance with respect to translation, rotation and scale. The third phase applies those invariant features to a backpropagation neural network and classifies the ship as one of five types. The algorithm was implemented and experimentally validated using both simulated three-dimensional ship model images and real images derived from video of an AN/ AAS-44V Forward Looking Infrared (FLIR) sensor. Lieutenant Commander, Brazilian Navy 2012-03-14T17:36:10Z 2012-03-14T17:36:10Z 2001-03 Thesis http://hdl.handle.net/10945/2762 Copyright is reserved by the copyright owner. xi, 108 p. ; application/pdf Monterey, California. Naval Postgraduate School |
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Approved for public release; distribution is unlimited. === Autonomous object recognition is an active area of interest for military and commercial applications: Given an input image from an infrared or range sensor, find interesting objects in those images and then classify those objects. In this work, automatic target recognition of ship types in an infrared image is explored. The first phase segments the original infrared image in order to obtain the ship silhouette. The second phase calculates moment functions of those silhouettes that guarantee invariance with respect to translation, rotation and scale. The third phase applies those invariant features to a backpropagation neural network and classifies the ship as one of five types. The algorithm was implemented and experimentally validated using both simulated three-dimensional ship model images and real images derived from video of an AN/ AAS-44V Forward Looking Infrared (FLIR) sensor. === Lieutenant Commander, Brazilian Navy |
author2 |
Rowe, Neil C. |
author_facet |
Rowe, Neil C. Alves, Jorge Amaral |
author |
Alves, Jorge Amaral |
spellingShingle |
Alves, Jorge Amaral Recognition of ship types from an infrared image using moment invariants and neural networks |
author_sort |
Alves, Jorge Amaral |
title |
Recognition of ship types from an infrared image using moment invariants and neural networks |
title_short |
Recognition of ship types from an infrared image using moment invariants and neural networks |
title_full |
Recognition of ship types from an infrared image using moment invariants and neural networks |
title_fullStr |
Recognition of ship types from an infrared image using moment invariants and neural networks |
title_full_unstemmed |
Recognition of ship types from an infrared image using moment invariants and neural networks |
title_sort |
recognition of ship types from an infrared image using moment invariants and neural networks |
publisher |
Monterey, California. Naval Postgraduate School |
publishDate |
2012 |
url |
http://hdl.handle.net/10945/2762 |
work_keys_str_mv |
AT alvesjorgeamaral recognitionofshiptypesfromaninfraredimageusingmomentinvariantsandneuralnetworks |
_version_ |
1718453649208770560 |