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摘要


Regarding the hotspot model of GAN, first introduces the research status of GAN; then introduces the principle of GAN and the problems in the training process of GAN; then discusses the derivative model of GAN from the improvement of network structure and loss function, and its typical The improvement points, applicable scenarios, advantages and disadvantages of GAN model, and finally summarizes the application of GAN and future research directions.

參考文獻


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