The Conditional Analogy GAN: Swapping Fashion Articles on People Images

2017 IEEE International Conference on Computer Vision Workshops (ICCVW)(2017)

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摘要
We present a novel method to solve image analogy problems : 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.
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关键词
Conditional Analogy GAN,fashion articles,people images,image analogy problems,paired images,training data,training set,Conditional Analogy Generative Adversarial Network,neural network architecture improvements,convincing swapped images,plausible segmentation masks,expensive supervised labeling data,end-to-end trainable CAGAN architecture,fashion model photos,deep convolutional neural networks,adversarial training
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