CoCosNet v2:图像翻译的全分辨率对应学习

Xingran Zhou, Bo Zhang, Ting Zhang, Pan Zhang, Jianmin Bao, Dong Chen, Zhongfei Zhang, Fang Wen
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引用次数: 65

摘要

提出了一种跨域图像的全分辨率对应学习方法,用于图像翻译。我们采用了一种分层策略,使用粗层的对应关系来指导细层。在每个层次中,通过PatchMatch迭代地利用邻居的匹配,可以有效地计算对应关系。在每次PatchMatch迭代中,ConvGRU模块不仅考虑更大上下文的匹配,而且考虑历史估计,对当前对应关系进行细化。提出的Co-CosNet v2是一种gru辅助的PatchMatch方法,具有完全可微性和高效率。当与图像翻译联合训练时,可以以无监督的方式建立全分辨率语义对应关系,从而促进基于样本的图像翻译。在不同翻译任务上的实验表明,CoCosNet v2在生成高分辨率图像方面的表现要比目前最先进的文献好得多。
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CoCosNet v2: Full-Resolution Correspondence Learning for Image Translation
We present the full-resolution correspondence learning for cross-domain images, which aids image translation. We adopt a hierarchical strategy that uses the correspondence from coarse level to guide the fine levels. At each hierarchy, the correspondence can be efficiently computed via PatchMatch that iteratively leverages the matchings from the neighborhood. Within each PatchMatch iteration, the ConvGRU module is employed to refine the current correspondence considering not only the matchings of larger context but also the historic estimates. The proposed Co-CosNet v2, a GRU-assisted PatchMatch approach, is fully differentiable and highly efficient. When jointly trained with image translation, full-resolution semantic correspondence can be established in an unsupervised manner, which in turn facilitates the exemplar-based image translation. Experiments on diverse translation tasks show that CoCosNet v2 performs considerably better than state-of-the-art literature on producing high-resolution images.
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