“…Recently, there has been a significant interest in deep learning models, such as autoencoder (AE) [25], generative adversarial network (GAN) [26], and convolutional neural networks (CNN) [27], due to their remarkable ability to automatically extract features and process data. GAN is an effective generative model based on game theory, and various GAN versions have been proposed for different tasks, such as image-to-image translation [28], speech enhancement [29], classification [30][31][32], sample generation [33,34], redundant information mitigation [35][36][37], and image dehazing [38]. Moreover, GAN has been applied to various radar systems, such as synthetic aperture radar (SAR) [39][40][41][42], inverse synthetic aperture radar [43,44], LPI radar [45], and weather radar [46].…”