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Research of the ATR system based on the 3-D models and L-M BP neural network

Research of the ATR system based on the 3-D models and L-M BP neural network
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摘要 Automatic target recognition (ATR) is an important issue for military applications, the topic of the ATR system belongs to the field of pattern recognition and classification. In the paper, we present an approach for building an ATR system with improved artificial neural network to recog- nize and classify the typical targets in the battle field. The invariant features of Hu invariant moments and roundness were selected to be the inputs of the neural network because they have the invari- ances of rotation, translation and scaling. The pictures of the targets are generated by the 3-D mod- els to improve the recognition rate because it is necessary to provide enough pictures for training the artificial neural network. The simulations prove that the approach can be implement ed in the ATR system and it has a high recognition rate and can be applied in real time. Automatic target recognition (ATR) is an important issue for military applications, the topic of the ATR system belongs to the field of pattern recognition and classification. In the paper, we present an approach for building an ATR system with improved artificial neural network to recog- nize and classify the typical targets in the battle field. The invariant features of Hu invariant moments and roundness were selected to be the inputs of the neural network because they have the invari- ances of rotation, translation and scaling. The pictures of the targets are generated by the 3-D mod- els to improve the recognition rate because it is necessary to provide enough pictures for training the artificial neural network. The simulations prove that the approach can be implement ed in the ATR system and it has a high recognition rate and can be applied in real time.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2014年第3期306-310,共5页 北京理工大学学报(英文版)
基金 Supported by the Ministerial Level Advanced Research Foundation(9140A01010411BQ01) the National Twelfth Five-Year Project(40405050303)
关键词 ATR system 3-D models pictures generation pattern recognition Hu invariant round- ness BP neural networ ATR system 3-D models pictures generation pattern recognition Hu invariant round- ness BP neural networ
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参考文献7

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