Facial Expression Neutralization With StoicNet

W. Carver, Ifeoma Nwogu
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引用次数: 2

Abstract

Expression neutralization is the process of synthetically altering an image of a face so as to remove any facial expression from it without changing the face’s identity. Facial expression neutralization could have a variety of applications, particularly in the realms of facial recognition, in action unit analysis, or even improving the quality of identification pictures for various types of documents. Our proposed model, StoicNet, combines the robust encoding capacity of variational autoencoders, the generative power of generative adversarial networks, and the enhancing capabilities of super resolution networks with a learned encoding transformation to achieve compelling expression neutralization, while preserving the identity of the input face. Objective experiments demonstrate that StoicNet successfully generates realistic, identity-preserved faces with neutral expressions, regardless of the emotion or expression intensity of the input face.
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面部表情中和StoicNet
表情中和是指在不改变人脸身份的情况下,对人脸图像进行综合改变,去除任何面部表情的过程。面部表情中和可以有各种各样的应用,特别是在面部识别领域,在行动单元分析,甚至提高各种类型文档的识别图片的质量。我们提出的StoicNet模型结合了变分自编码器的鲁棒编码能力、生成对抗网络的生成能力以及超分辨率网络的增强能力,通过学习编码转换实现令人信服的表情中立,同时保持输入人脸的身份。客观实验表明,无论输入人脸的情绪或表情强度如何,StoicNet都能成功生成具有中性表情的真实、身份保留的人脸。
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