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Pet Hair Color Transfer Based On CycleGAN

机译:宠物发色彩转移基于Cnercangan

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Generative adversarial networks (GANs) have shown great performance on image-to-image translation tasks. Many approaches have been proposed for translation of human face images, scene pictures and artful paintings, but few works considered about translating a pet image. In this paper, we propose a method based on cycle-consistent adversarial network (CycleGAN) to solve pet hair color transfer problem. Given a pet image, our model can translate its hair color into a desired one while keeping its other features unchanged, which makes our generated images seem quite realistic. We do several improvements on CycleGAN including doing segmentation to avoid the influence of background, and using spectral normalization to improve the quality of generated images. We build a large pet image dataset consisting of a total number of 7.5K images, categorized by different hair colors. Our proposed method is trained and tested on this data set and the results show the promising performance on translating between white and orange hair color of dog images.
机译:生成的对策网络(GANS)在图像到图像到图像转换任务方面表现出很大的表现。已经提出了许多方法,用于翻译人类脸部图像,场景图片和纵画绘画,但是很少考虑转换宠物形象的作品。在本文中,我们提出了一种基于循环一致的对抗网络(Cyclegan)的方法来解决PET毛发颜色转移问题。鉴于宠物形象,我们的模型可以将其发色转化为所需的,同时保持其它特征不变,这使得我们产生的图像看起来非常逼真。我们对Ciffergan进行了几种改进,包括进行分割以避免背景的影响,并使用光谱归一化以提高所生成的图像的质量。我们构建一个由总数为7.5k图像的大型宠物图像数据集,由不同的头发颜色分类。我们提出的方法在此数据集上进行培训并测试,结果表明了在狗图像的白色和橙色发色之间的翻译有前途的性能。

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