Deep Motion Flow Aided Face Video De-identification

Yunqian Wen, Bo Liu, Rong Xie, Jingyi Cao, Li Song
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引用次数: 1

Abstract

Advances in cameras and web technology have made it easy to capture and share large amounts of face videos over to an unknown audience with uncontrollable purposes. These raise increasing concerns about unwanted identity-relevant computer vision devices invading the characters's privacy. Previous de-identification methods rely on designing novel neural networks and processing face videos frame by frame, which ignore the data feature in redundancy and continuity. Besides, these techniques are incapable of well-balancing privacy and utility, and per-frame evaluation is easy to cause flicker. In this paper, we present deep motion flow, which can create remarkable de-identified face videos with a good privacy-utility tradeoff. It calculates the relative dense motion flow between every two adjacent original frames and runs the high quality image anonymization only on the first frame. The de-identified video will be obtained based on the anonymous first frame via the relative dense motion flow. Extensive experiments demonstrate the effectiveness of our proposed de-identification method.
深度运动流辅助人脸视频去识别
相机和网络技术的进步使得捕捉和分享大量面部视频变得容易,这些视频的目的是无法控制的。这引起了人们越来越多的担忧,即与身份相关的不必要的计算机视觉设备会侵犯角色的隐私。以往的去识别方法依赖于设计新颖的神经网络和逐帧处理人脸视频,忽略了数据的冗余性和连续性特征。此外,这些技术无法很好地平衡私密性和实用性,并且逐帧评估容易导致闪烁。在本文中,我们提出了深度运动流,它可以创建出色的去识别人脸视频,并具有良好的隐私-效用权衡。它计算每两个相邻原始帧之间的相对密集运动流,并仅在第一帧上运行高质量图像匿名化。在匿名第一帧的基础上,通过相对密集的运动流获得去识别视频。大量的实验证明了我们提出的去识别方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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