Self-Supervised GAN to Counter Forgetting

作者: Neil Houlsby , Ting Chen , Xiaohua Zhai

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摘要: GANs involve training two networks in an adversarial game, where each network's task depends on its adversary. Recently, several works have framed GAN training as an online or …

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