基于相位和形状分量扰动的步态轮廓视频匿名化

Yuki Hirose, Kazuaki Nakamura, Naoko Nitta, N. Babaguchi
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引用次数: 8

摘要

如今,在网络上(例如YouTube)有很多包含走路的人的视频。这些视频可能会引起隐私问题,因为行走的人可以通过基于轮廓的步态识别系统来识别,这是近年来迅速发展的。为了解决这一问题,本文提出了一种匿名化人体步态轮廓的方法。步态轮廓由包含身体形状的静态分量和包含姿势的动态分量组成。我们将前者和后者分别称为形状分量和相位分量。该方法对给定的步态轮廓进行匿名化处理:首先,将给定的步态轮廓分解为其形状分量和相位分量;接下来,两个组件分别被扰动。最后,利用摄动分量生成新的步态轮廓。由于摄动的影响,原始轮廓在静态和动态方面的信息量都大大减少,严重降低了步态识别的性能。在我们的实验结果中,准确率实际上从100%下降到30%或更低,而在输出的匿名步态轮廓中没有产生任何不自然的外观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anonymization of Gait Silhouette Video by Perturbing Its Phase and Shape Components
Nowadays there are a lot of videos containing walking people on the web (e.g. YouTube). These videos can cause a privacy issue because the walking people can be identified by silhouette-based gait recognition systems which have been rapidly advanced in recent years. To solve the issue, in this paper, we propose a method for anonymizing human gait silhouettes. A gait silhouette consists of a static component including the body shape and a dynamic component including postures. We refer to the former and the latter as a shape component and a phase component, respectively. The proposed method anonymizes given gait silhouettes as follows: First, each of the given silhouettes is decomposed into its shape and phase components. Next, both components are separately perturbed. Finally, a new gait silhouette is generated from the perturbed components. Owing to the perturbation, the original silhouettes become less informative in the static aspect as well as the dynamic aspect, by which the gait recognition performance is seriously degraded. In our experimental results, the accuracy was actually degraded from 100% to 30% or less, without yielding any unnatural appearance in the output anonymized gait silhouettes.
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