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On Evaluating Video-based Generative Adversarial Networks (GANs)

机译:在评估基于视频的生成对抗网络(GANS)

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We study the problem of evaluating video-based Generative Adversarial Networks (GANs) by applying existing image quality assessment methods to the explicit evaluation of videos generated by state-of-the-art frameworks [1]-[3]. Specifically, we provide results and discussion on using quantitative methods such as the Fréchet Inception Distance [4], the Multi-scale Structural Similarity Measure (MS-SSIM) [5], as well as the Birthday Paradox inspired test [6] and compare these to the prevalent performance evaluation methods in the literature. We summarize that current testing methodologies are not sufficient for quality assurance in video-based GAN frameworks, and that methods based on the image-based GAN literature can be useful to consider. The results of our experiments and a discussion on evaluating video-based GANs provide key insight that may be useful in generating new measures of quality assurance in future work.
机译:我们研究通过将现有的图像质量评估方法应用于最先进的框架生成的视频的显式评估来评估基于视频的生成对冲网络(GANS)的问题[1] - [3]。具体地,我们提供了使用诸如Fréchet初始距离[4]的定量方法的结果和讨论,多尺度结构相似度量(MS-SSIM)[5],以及生日悖论灵感测试[6]并比较这些与文献中的普遍的绩效评估方法。我们总结了当前的测试方法不足以在基于视频的GaN框架中的质量保证,并且该方法基于基于图像的GaN文献可以考虑。我们的实验结果和关于评估基于视频的GAN的讨论提供了关键洞察力,可用于在未来的工作中产生新的质量保证措施。

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