Automatic Deception Detection in RGB videos using Facial Action Units

D. Avola, L. Cinque, G. Foresti, D. Pannone
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引用次数: 30

Abstract

The outcome of situations such as police interrogatory or court trials is strongly influenced by the behaviour of the interviewed subject. In particular, a deceptive behaviour may completely overturn such sensible situations. Moreover, if some specific devices such as polygraph or magnetic resonance are used, the subject is aware of being monitored and thus he may change his behaviour accordingly. To overcome this problem, in this paper a method for detecting deception in RGB videos is presented. The method automatically extracts facial Action Units (AU) from video frames containing the interviewed subject, and classifies them through an SVM as truthful or deception. Experiments on real trial court data and comparisons with the current state of the art show the effectiveness of the proposed method.
使用面部动作单元的RGB视频自动欺骗检测
诸如警察审讯或法庭审判等情况的结果受到被访者行为的强烈影响。特别是,一个欺骗的行为可能完全颠覆这种明智的情况。此外,如果使用一些特定的设备,如测谎仪或磁共振,受试者意识到被监控,因此他可能会相应地改变自己的行为。为了克服这一问题,本文提出了一种检测RGB视频欺骗的方法。该方法从包含被访者的视频帧中自动提取面部动作单元(AU),并通过支持向量机将其分类为真实或欺骗。对真实庭审数据的实验以及与当前技术水平的比较表明了所提出方法的有效性。
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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