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Accelerated WGAN update strategy with loss change rate balancing

机译:加速WGAN更新策略,损失变化率平衡

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Optimizing the discriminator in Generative Adversarial Networks (GANs) to completion in the inner training loop is computationally prohibitive, and on finite datasets would result in overfitting. To address this, a common update strategy is to alternate between k optimization steps for the discriminator D and one optimization step for the generator G. This strategy is repeated in various GAN algorithms where k is selected empirically. In this paper, we show that this update strategy is not optimal in terms of accuracy and convergence speed, and propose a new update strategy for networks with Wasserstein GAN (WGAN) group related loss functions (e.g. WGAN, WGAN-GP, Deblur GAN, and Super resolution GAN). The proposed update strategy is based on a loss change ratio comparison of G and D. We demonstrate that the proposed strategy improves both convergence speed and accuracy.
机译:在内部训练循环中优化生成的对冲网络(GAN)的鉴别器在计算上进行计算,在计算上禁止,并且在有限数据集上会导致过度拟合。 为了解决此问题,常见的更新策略是在鉴别器D的K优化步骤之间交替,以及发电机G的一个优化步骤。在经验上选择K的各种GAN算法中重复该策略。 在本文中,我们表明,在准确性和收敛速度方面,此更新策略并不是最佳,并为Wasserstein GaN(WAN)组相关损失功能(例如WAN,WGAN-GP,DEBLUR GAN)提出了新的更新策略 和超级分辨率GaN)。 拟议的更新策略基于G和D的损失变化比较比较。我们证明拟议的策略提高了收敛速度和准确性。

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