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The Conditional Analogy GAN: Swapping Fashion Articles on People Images

机译:有条件的类比GAN:在人像上交换时尚文章

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We present a novel method to solve image analogy problems [3]: it allows to learn the relation between paired images present in training data, and then generalize and generate images that correspond to the relation, but were never seen in the training set. Therefore, we call the method Conditional Analogy Generative Adversarial Network (CAGAN), as it is based on adversarial training and employs deep convolutional neural networks. An especially interesting application of that technique is automatic swapping of clothing on fashion model photos. Our work has the following contributions. First, the definition of the end-to-end trainable CAGAN architecture, which implicitly learns segmentation masks without expensive supervised labeling data. Second, experimental results show plausible segmentation masks and often convincing swapped images, given the target article. Finally, we discuss the next steps for that technique: neural network architecture improvements and more advanced applications.
机译:我们提出了一种解决图像类比问题的新颖方法[3]:它允许学习训练数据中存在的配对图像之间的关系,然后泛化并生成与该关系相对应但在训练集中从未见过的图像。因此,我们称其为条件类比生成对抗网络(CAGAN)方法,因为它基于对抗训练并采用了深度卷积神经网络。该技术的一个特别有趣的应用是在时装模特照片上自动更换衣服。我们的工作有以下贡献。首先,定义了端到端的可训练CAGAN体系结构,该体系结构隐式地学习了分段掩码,而无需昂贵的监督标签数据。其次,实验结果表明,在给定目标文章的情况下,合理的分割蒙版和经常令人信服的交换图像。最后,我们讨论该技术的下一步:神经网络体系结构的改进和更高级的应用程序。

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