Feature learning for SAR target recognition with unknown classes by using CVAE-GAN

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Abstract

Even though deep learning (DL) has achieved excellent results on some public data sets for synthetic aperture radar (SAR) automatic target recognition(ATR), several problems exist at pre-sent. One is the lack of transparency and interpretability for most of the existing DL networks. An-other is the neglect of unknown target classes which are often present in practice. To solve the above problems, a deep generation as well as recognition model is derived based on Conditional Varia-tional Auto-encoder (CVAE) and Generative Adversarial Network (GAN). A feature space for SAR-ATR is built based on the proposed CVAE-GAN model. By using the feature space, clear SAR images can be generated with given class labels and observation angles. Besides, the feature of the SAR image is continuous in the feature space and can represent some attributes of the target. Further-more, it is possible to classify the known classes and reject the unknown target classes by using the feature space. Experiments on the MSTAR data set validate the advantages of the proposed method.

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APA

Hu, X., Feng, W., Guo, Y., & Wang, Q. (2021). Feature learning for SAR target recognition with unknown classes by using CVAE-GAN. Remote Sensing, 13(18). https://doi.org/10.3390/rs13183554

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