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Recurrent Generative Adversarial Network for Face Completion

机译:用于脸部完成的经常性发生的对抗网络

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摘要

Most recently-proposed face completion algorithms use high-level features extracted from convolutional neural networks (CNNs) to recover semantic texture content. Although the completed face is natural-looking, the synthesized content still lacks lots of high-frequency details, since the high-level features cannot supply sufficient spatial information for details recovery. To tackle this limitation, in this paper, we propose a R ecurrent G enerative A dversarial N etwork (RGAN) for face completion. Unlike previous algorithms, RGAN can take full advantage of multi-level features, and further provide advanced representations from multiple perspectives, which can well restore spatial information and details in face completion. Specifically, our RGAN model is composed of a CompletionNet and a DisctiminationNet, where the CompletionNet consists of two deep CNNs and a recurrent neural network (RNN). The first deep CNN is presented to learn the internal regulations of a masked image and represent it with multi-level features. The RNN model then exploits the relationships among the multi-level features and transfers these features in another domain, which can be used to complete the face image. Benefiting from bidirectional short links, another CNN is used to fuse multi-level features transferred from RNN and reconstruct the face image in different scales. Meanwhile, two context discrimination networks in the DisctiminationNet are adopted to ensure the completed image consistency globally and locally. Experimental results on benchmark datasets demonstrate qualitatively and quantitatively that our model performs better than the state-of-the-art face completion models, and simultaneously generates realistic image content and high-frequency details. The code will be released available soon.
机译:最近建议的面部完成算法使用从卷积神经网络(CNNS)中提取的高级功能来恢复语义纹理内容。虽然完成的脸部是自然的,但综合内容仍然缺乏大量的高频细节,因为高级功能无法提供足够的空间信息以进行详细恢复。为了解决这个限制,在本文中,我们提出了一个<下划线XMLNS:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/ 1999 / xlink“> R ecurrent <下划线XMLNS:MML =”http://www.w3.org/1998/math/mathml“xmlns:xlink =”http://www.w3.org/1999 / xlink“> g enertimity <下划线XMLNS:MML =”http://www.w3.org/1998/math/mathml“xmlns:xlink =”http://www.w3.org/1999/ xlink“> a dversarial <下划线XMLNS:MML =”http://www.w3.org/1998/math/mathml“xmlns:xlink =”http://www.w3.org/1999/xlink “> N eTwork(Rgan)面向脸完成。与以前的算法不同,RGAN可以充分利用多级别功能,并进一步提供多个视角的高级表示,可以恢复面部完成中的空间信息和细节。具体地,我们的Rgan模型由CompletiveNet和DiscTiminationNet组成,其中CompletiveNet由两个深的CNN和经常性神经网络(RNN)组成。提出了第一深的CNN以学习掩蔽图像的内部规则,并以多级别特征表示。然后,RNN模型利用多级别特征之间的关系,并在另一个域中传输这些功能,该功能可用于完成面部图像。受益于双向短链路,另一个CNN用于熔化从RNN传输的多级别特征,并在不同的尺度中重建面部图像。同时,采用了两个上下文鉴别网络,以确保全球和本地的完整图像一致性。基准数据集的实验结果在定性和定量上展示我们的模型比最先进的面部完成模型更好地表现,并且同时产生现实图像内容和高频细节。该代码将很快发布。

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