The Journal of Engineering (Jul 2019)

MF-SarNet: Effective CNN with data augmentation for SAR automatic target recognition

  • Yikui Zhai,
  • Hui Ma,
  • He Cao,
  • Wenbo Deng,
  • Jian Liu,
  • Zhongyi Zhang,
  • Huixin Guan,
  • Yihang Zhi,
  • Jinxing Wang,
  • Jihua Zhou

DOI
https://doi.org/10.1049/joe.2019.0218

Abstract

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An effective Max-Fire CNN model MF-SarNet for synthetic aperture radar (SAR) automatic target recognition (ATR) is presented, here. By selecting the convolution kernel of the Fire module in the network, the parameters are reduced to obtain the effective convolutional neural network of less parameter. In view of the requirement of deep learning for large-scale data, an augmentation method is proposed, which can learn the features of large database better. The results based on MSTAR database show that the model is effective and the result is encouraging. The accuracy of SAR image recognition is 98.53%.

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