This letter proposes a complex-valued convolutional gated recurrent unit (CV-ConvGRU) network for the 3-D rotation refocusing task of a synthetic aperture radar (SAR) ship target. To take advantage of the… Click to show full abstract
This letter proposes a complex-valued convolutional gated recurrent unit (CV-ConvGRU) network for the 3-D rotation refocusing task of a synthetic aperture radar (SAR) ship target. To take advantage of the amplitude and phase information of complex SAR images, all the elements of CV-ConvGRU, including the convolutional layer, activation function, update gate, and reset gate, are extended to the complex domain. Based on CV-ConvGRU, a complex-valued SAR ship refocusing network (CV-SSRN) architecture is designed for refocusing experiments. To verify the robustness of the proposed CV-ConvGRU over ConvGRU on information perception, this letter also raises a real-valued SAR ship refocusing network (RV-SSRN), which has the same degree of freedom as CV-SSRN. Finally, experiments are carried out, and all the results show the superiority of the proposed method on refocusing accuracy.
               
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