Vulnerability of Privacy Visor Used to Disrupt Unauthorized Face Recognition

Hiroaki Kikuchi, Kazuki Eto, Kazushi Waki, Takafumi Mori
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引用次数: 1

Abstract

This work studies a vulnerability in privacy visors, new wearable devices that aim to prevent unauthorized face recognition from being performed. Although the use of a privacy visor assumes that the detectors' targets are uncovered bare faces, it is not hard to detect the privacy visor itself. To quantify the effects of the disruption and the vulnerability, we conducted experiments involving two major face-recognition algorithms, namely a method based on convolutional neural networks and a method that aims to identify coordinates of facial landscapes. Our experiments were able to demonstrate that using a privacy visor can reduce the mean face-recognition rates for both algorithms. However, they are less effective if faces with privacy visors are used in training. Faces with privacy visors is detected at a rate of 42.28 % on average.
隐私遮阳板用于破坏未经授权的人脸识别的漏洞
这项工作研究了隐私护目镜中的一个漏洞,这是一种新的可穿戴设备,旨在防止未经授权的人脸识别。尽管使用隐私遮阳板假设检测器的目标是裸露的脸,但检测隐私遮阳板本身并不难。为了量化破坏和脆弱性的影响,我们进行了涉及两种主要人脸识别算法的实验,即基于卷积神经网络的方法和旨在识别面部景观坐标的方法。我们的实验能够证明,使用隐私遮阳板可以降低两种算法的平均人脸识别率。然而,如果在训练中使用带隐私面罩的脸,它们的效果就不那么好了。带隐私面罩的人脸的平均检出率为42.28%。
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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