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Comparative Analysis of Generative Adversarial Networks and their Variants

机译:生成对抗网络的比较分析及其变种

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Generative Adversarial Networks (GAN) [1] is a generative modeling approach with a potential to learn high dimensional, complex real data distribution. In particular, they don’t depend on any assumptions about the conveyance and can produce real-like examples from inert space in a simple manner. This powerful property drives GAN [1] to be applied to different applications, for example, picture blend, picture quality altering, picture interpretation, space variation and other scholarly fields. While great outcomes have been approved by visual assessment, a few quantitative rules have developed as of late. In this paper, we aim to discuss the operations and objective functions of variants of GAN [1] but do not comprehend GAN [1] deeply or who wish to view GAN from various perspectives. In addition, we present the comparison of evaluation of the images generated from variants of GAN like DCGAN, FCC-GAN and more.
机译:生成的对抗网络(GaN)[1]是一种生成的建模方法,具有学习高维,复杂的实际数据分布的潜力。特别地,它们不依赖于对传送的任何假设,并且可以以简单的方式从惰性空间产生真实的实例。这种强大的属性驱动GaN [1]应用于不同的应用程序,例如,图片混合,图片质量改变,图片解释,空间变化等学术领域。虽然通过视觉评估批准了巨大结果,但截至较晚的量化规则。在本文中,我们的目标是讨论GaN [1]变体的运营和客观功能,但不要理解GaN [1],或者希望从各种角度来观看GAN。此外,我们介绍了从GaN的变体产生的图像评估的比较,如DCGAN,FCC-GaN等。

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