Privacy-Protected Facial Expression Recognition Augmented by High-Resolution Facial Images

Cong Liang, Shangfei Wang, Xiaoping Chen
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Abstract

Cloud-based expression recognition from high-resolution facial images may put the subjects’ privacy at risk. We identify two kinds of privacy leakage, the appearance leakage in which the visual appearances of subjects are disclosed and the identity-pattern leakage in which the identity information of subjects is dug out. To address both leakages, we propose privacy-protected facial expression recognition from low-resolution facial images with the help of high-resolution facial images. Specifically, to prevent appearance leakage, we propose to extract identity-invariant representations from downsampled images, from which the visually distinguishable appearances cannot be recovered. To prevent identity-pattern leakage, we propose to eliminate the identity information from the extracted representations by leveraging the disentangled representations of high-resolution images as privileged information. After training, our method can fully capture identity-invariant representations from downsampled images for expression recognition without the requirement of high-resolution samples. These privacy-protected representations can be safely transmitted through the Internet. Experimental results in different scenarios demonstrate that the proposed method protects privacy without significantly inhibiting facial expression recognition.
高分辨率面部图像增强的隐私保护面部表情识别
基于高分辨率面部图像的云表情识别可能会危及受试者的隐私。我们确定了两种类型的隐私泄露,即公开被试的视觉外观的外观泄漏和挖掘被试身份信息的身份模式泄漏。为了解决这两个问题,我们提出了在高分辨率面部图像的帮助下,从低分辨率面部图像中识别隐私保护的面部表情。具体来说,为了防止外观泄漏,我们建议从下采样图像中提取身份不变表示,从下采样图像中无法恢复视觉上可区分的外观。为了防止身份模式泄漏,我们建议利用高分辨率图像的解纠缠表示作为特权信息,从提取的表示中消除身份信息。经过训练,我们的方法可以在不需要高分辨率样本的情况下,从下采样图像中充分捕获身份不变表示,用于表情识别。这些受隐私保护的表述可以通过互联网安全地传输。不同场景下的实验结果表明,该方法在保护隐私的同时不会显著抑制面部表情识别。
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