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Facial Image Inpainting with Variational Autoencoder

机译:用变形自身阳极器染色的面部图像

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摘要

This paper proposed a learning-based approach to reveal diversity possible appearances under the missing area of an occluded unseen image. In general, there are a lot of possible facial appearances for the missing area; for example, a male with a scarf, it is difficult to predict he has a beard in the covered area or not? In this paper, we propose a novel method for facial image inpainting, which generates the missing facial appearance by conditioning on the observable appearance. Given a trained standard Variational Autoencoder (VAE) for un-occluded face generation. To be specified, we search for the possible set of VAE coding vector for the current occluded input image, and the predicted coding should be robust to the missing area. The possible facial appearance set is then recovered through the decoder of VAE model. Experiments show that our method successfully predicts recovered results in large missing regions; these results are diverse, and all are reasonable to be consistent with the observable facial area, i.e., both the facial geometry and the personal characteristics are preserved.
机译:本文提出了一种基于学习的方法,以揭示封闭的看不见图像缺失区域下的多样性可能的出场。一般来说,缺失区域有很多可能的面部外观;例如,一只带有围巾的男性,很难预测他在覆盖区域中有胡须?在本文中,我们提出了一种用于面部图像染色的新方法,其通过在可观察的外观上调节产生缺失的面部外观。考虑到训练有素的标准变形AutoEncoder(VAE),用于未闭塞的面部。要指定,我们搜索当前遮挡输入图像的可能一组VAE编码矢量,并且预测的编码应该稳健地对丢失区域。然后通过VAE模型的解码器恢复可能的面部外观组。实验表明,我们的方法成功预测了大缺失地区的恢复结果;这些结果是多种多样的,并且所有合理的是与可观察面部区域一致的合理,即保护面部几何形状和个人特征。

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