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Semi-Supervised Image-to-Image Translation

机译:半监督图像到图像转换

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摘要

Image-to-image translation is a long-established and a difficult problem in computer vision. In this paper we propose an adversarial based model for image-to-image translation. The regular deep neural-network based methods perform the task of image-to-image translation by comparing gram matrices and using image segmentation which requires human intervention. Our generative adversarial network based model works on a conditional probability approach. This approach makes the image translation independent of any local, global and content or style features. In our approach we use a bidirectional reconstruction model appended with the affine transform factor that helps in conserving the content and photorealism as compared to other models. The advantage of using such an approach is that the image-to-image translation is semi-supervised, independent of image segmentation and inherits the properties of generative adversarial networks tending to produce realistic. This method has proven to produce better results than Multimodal Unsupervised Image-to-image translation.
机译:图像到图像转换是计算机愿景中的一长串和难题。在本文中,我们提出了一种基于对图像到图像翻译的模型。通过比较Gram矩阵和使用需要人为干预的图像分割来执行常规深度神经网络基于基于的基于图像到图像转换的任务。我们生成的对抗网络基于条件概率方法的作用。这种方法使图像翻译与任何本地,全局和内容或样式功能无关。在我们的方法中,我们使用附加的双向重建模型与仿射变换因子有助于保护与其他模型相比保护内容和光容。使用这种方法的优点是图像到图像转换是半监督的,与图像分割独立于图像分割,并继承生成的对抗网络趋于产生现实的生成的对抗网络的性质。该方法已被证明可以产生比多模式无监督的图像到图像转换产生更好的结果。

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