2022
DOI: 10.1155/2022/7537732
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Highly Robust Synthetic Aperture Radar Target Recognition Method Based on Simulation Data Training

Abstract: Sufficient synthetic aperture radar (SAR) data is the key element in achieving excellent target recognition performance for most deep learning algorithms. It is unrealistic to obtain sufficient SAR data from the actual measurements, so SAR simulation based on electromagnetic scattering modeling has become an effective way to obtain sufficient samples. Simulated and measured SAR images are nonhomologous data. Due to the fact that the target geometric model of SAR simulation is not inevitably consistent with the… Show more

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