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Learning disentangling and fusing networks for face completion under structured occlusions

机译:在结构化闭塞下学习解开和融合网络的脸部完成

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摘要

Face completion aims to generate semantically new pixels for missing facial components. It is a challenging generative task due to large variations of face appearance. This paper studies generative face completion under structured occlusions. We treat the face completion and corruption as disentangling and fusing processes of clean faces and occlusions, and propose a jointly disentangling and fusing Generative Adversarial Network (DF-GAN). First, three domains are constructed, corresponding to the distributions of occluded faces, clean faces and structured occlusions. The disentangling and fusing processes are formulated as the transformations between the three domains. Then the disentangling and fusing networks are built to learn the transformations from unpaired data, where the encoder-decoder structure is adopted and allows DF-GAN to simulate structure occlusions by modifying the latent representations. Finally, the disentangling and fusing processes are unified into a dual learning framework along with an adversarial strategy. The proposed method is evaluated on Meshface verification problem. Experimental results on four Meshface databases demonstrate the effectiveness of our proposed method for the face completion under structured occlusions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:面部完成旨在为缺少面部组件生成语义新像素。由于面部外观的大变化,这是一个具有挑战性的生成任务。本文研究了结构闭塞下的生成面部完成。我们将脸部完成和腐败视为干净的面孔和闭塞的解散和融合过程,并提出了共同解开和融合的生成的对抗网络(DF-GAN)。首先,构造三个域,对应于遮挡面,清洁面和结构闭合的分布。解弯和融合过程作为三个域之间的变换。然后,建立解除响应和融合网络以了解从未配对数据的转换,其中采用编码器解码器结构并允许DF-GAN通过修改潜在表示来模拟结构闭塞。最后,解开和融合过程统一成双重学习框架以及对抗性战略。所提出的方法在网外验证问题上进行评估。四个网眼数据库的实验结果证明了我们所提出的方法在结构性闭塞下的面部完成方法的有效性。 (c)2019年elestvier有限公司保留所有权利。

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