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New AI app promises to improve bad photos, but it has side effects

New AI app promises to improve bad photos, but it has side effects
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A History of A I in Art, From Ancient Inca Data Systems to the New Battlefield of Algorithmic Bias

Training Computer Vision Models on Random Noise Instead of Real Images

Training Computer Vision Models on Random Noise Instead of Real Images
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The Unintended Benefit of Mapping a GAN s Latent Space

The Unintended Benefit of Mapping a GAN s Latent Space
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Determining learning direction via multi-controller model for stably s by Yi Fan, Quoqiang Zhou et al

The data generated by Generative Adversarial Network (GAN) inevitably contains noise, which can be reduced by searching and optimizing the architecture of GAN. To search for generative adversarial networks architectures stably, a neural architecture search (NAS) method, StableAutoGAN, is proposed based on the existing algorithm, AutoGAN. The stability of conventional reinforcement learning (RL)-based NAS methods for GAN is adversely influenced by the uncertainty of direction, where the controller will go forward once receiving inaccurate rewards. In StableAutoGAN, a multi-controller model is employed to mitigate this problem via comparing the performance of controllers after receiving rewards. During the search process, each controller independently learns the sampling policy. Meanwhile, the learning effect is measured by the credibility score, which further determines the usage of controllers. Our experiments show that the standard deviation of Frchet Inception Distance (FID) scores o

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