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Theoretical Analysis of Image-to-Image Translation with Adversarial Learning

机译:对抗学习下的图像到图像翻译的理论分析

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摘要

Recently, a unified model for image-to-image translation tasks within adversarial learning framework has aroused widespread research interests in computer vision practitioners. Their reported empirical success however lacks solid theoretical interpretations for its inherent mechanism. In this paper, we reformulate their model from a brand-new geometrical perspective and have eventually reached a full interpretation on some interesting but unclear empirical phenomenons from their experiments. Furthermore, by extending the definition of generalization for generative adversarial nets to a broader sense, we have derived a condition to control the generalization capability of their model. According to our derived condition, several practical suggestions have also been proposed on model design and dataset construction as a guidance for further empirical researches.
机译:最近,在对抗性学习框架内用于图像到图像翻译任务的统一模型引起了计算机视觉从业者的广泛研究兴趣。然而,他们报道的经验成功对其内在机理缺乏扎实的理论解释。在本文中,我们从全新的几何角度重新制定了他们的模型,并最终从他们的实验中对一些有趣但不清楚的经验现象达成了完整的解释。此外,通过将生成对抗网络的泛化定义扩展到更广泛的意义,我们得出了控制其模型泛化能力的条件。根据我们得出的条件,还提出了一些关于模型设计和数据集构建的实用建议,以为进一步的实证研究提供指导。

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