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A one-to-many conditional generative adversarial network framework for multiple image-to-image translations

机译:一个用于多个图像到图像翻译的一对多条件生成对抗网络框架

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摘要

Image-to-Image translation was proposed as a general form of many image learning problems. While generative adversarial networks were successfully applied on many image-to-image translations, many models were limited to specific translation tasks and were difficult to satisfy practical needs. In this work, we introduce a One-to-Many conditional generative adversarial network, which could learn from heterogeneous sources of images. This is achieved by training multiple generators against a discriminator in synthesized learning way. This framework supports generative models to generate images in each source, so output images follow corresponding target patterns. Two implementations, hybrid fake and cascading learning, of the synthesized adversarial training scheme are also proposed, and experimented on two benchmark datasets, UTZap50K and MVOD5K, as well as a new high-quality dataset BehTex7K. We consider five challenging image-to-image translation tasks: edges-to-photo, edges-to-similar-photo translation on UTZap50K, cross-view translation on MVOD5K, and grey-to-color, grey-to-Oil-Paint on BehTex7K. We show that both implementations are able to faithfully translate from an image to another image in edges-to-photo, edges-to-similar-photo, grey-to-color, and grey-to-Oil-Paint translation tasks. The quality of output images in cross-view translation need to be further boosted.
机译:图像到图像的翻译被提出为许多图像学习问题的一般形式。虽然生成对抗网络已成功应用于许多图像到图像的翻译,但许多模型仅限于特定的翻译任务,并且难以满足实际需求。在这项工作中,我们引入了一对多条件生成对抗网络,该网络可以从图像的异构源中学习。这是通过以综合学习方式针对鉴别器训练多个生成器来实现的。该框架支持生成模型以在每个源中生成图像,因此输出图像遵循相应的目标模式。还提出了合成对抗训练方案的两种实现,即混合伪造和级联学习,并在两个基准数据集UTZap50K和MVOD5K以及新的高质量数据集BehTex7K上进行了实验。我们考虑了五个具有挑战性的图像到图像翻译任务:UTZap50K上的边缘到照片,边缘到类似照片的翻译,MVOD5K上的交叉视图翻译以及灰色到彩色,灰色到油画在BehTex7K上。我们证明,这两种实现方式都可以在边到照片,边到类似照片,灰色到彩色以及灰色到油画的翻译任务中忠实地将图像转换为另一图像。跨视图翻译中输出图像的质量需要进一步提高。

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