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Normalized face image generation with perceptron generative adversarial networks

机译:具有Perceptron生成对抗网络的标准化面部图像生成

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This paper presents a deep neural architecture for synthesizing the frontal and neutral facial expression image of a subject given a query face image with arbitrary expression. This is achieved by introducing a combination of feature space perceptual loss, pixel-level loss, adversarial loss, symmetry loss, and identity-preserving loss. We leverage both the frontal and neutral face distributions and pre-trained discriminative deep perceptron models to guide the identity-preserving inference of the normalized views from expressive profiles. Unlike previous generative methods that utilize their intermediate features for the recognition tasks, the resulting expression- and pose-disentangled face image has potential for several downstream applications, such as facial expression or face recognition, and attribute estimation. We show that our approach produces photorealistic and coherent results, which assist the deep metric learning-based facial expression recognition (FER) to achieve promising results on two well-known FER datasets.
机译:本文介绍了一种深度神经结构,用于合成受试者的正面和中性面部表情图像,给出具有任意表达的查询面部图像。这是通过引入特征空间感性损失,像素水平损失,对抗丧失,对称性损失和身份保存损失的组合来实现的。我们利用正面和中性的面部分布和预先训练的识别深度射击模型,以指导从富有效应型材的标准化视图的身份保存推理。与使用其用于识别任务的中间特征的先前生成方法不同,所产生的表达和姿势切除的面部图像具有诸如面部表情或面部识别的若干下游应用和属性估计。我们表明我们的方法产生了光电态化和相干的结果,这有助于深度度量的基于学习的面部表情识别(FER)来实现两个众所周知的FER数据集的有希望的结果。

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