Real-time Automatic Deceit Detection from Involuntary Facial Expressions

Zhi Zhang, Vartika Singh, T. E. Slowe, S. Tulyakov, V. Govindaraju
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引用次数: 38

Abstract

Being the most broadly used tool for deceit measurement, the polygraph is a limited method as it suffers from human operator subjectivity and the fact that target subjects are aware of the measurement, which invites the opportunity to alter their behavior or plan counter-measures in advance. The approach presented in this paper attempts to circumvent these problems by unobtrusively and automatically measuring several prior identified deceit indicators (DIs) based upon involuntary, so-called reliable facial expressions through computer vision analysis of image sequences in real time. Reliable expressions are expressions said by the psychology community to be impossible for a significant percentage of the population to convincingly simulate, without feeling a true inner felt emotion. The strategy is to detect the difference between those expressions which arise from internal emotion, implying verity, and those expressions which are simulated, implying deceit. First, a group of facial action units (AUs) related to the reliable expressions are detected based on distance and texture based features. The DIs then can be measured and finally a decision of deceit or verity will be made accordingly. The performance of this proposed approach is evaluated by its real time implementation for deceit detection.
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基于非自愿面部表情的实时自动欺骗检测
作为最广泛使用的欺骗测量工具,测谎仪是一种有限的方法,因为它受到操作员的主观性和目标对象知道测量的事实,这就有机会改变他们的行为或提前计划应对措施。本文提出的方法试图通过计算机视觉实时分析图像序列,通过非自愿的所谓可靠的面部表情,不显眼地自动测量几个预先识别的欺骗指标(DIs),从而规避这些问题。可靠的表情是指心理学界认为,如果没有真实的内心感受,很大一部分人不可能令人信服地模仿出的表情。这个策略就是要分辨出那些发自内心的、暗示真实的表情和那些模拟的、暗示欺骗的表情之间的区别。首先,基于距离和纹理特征检测与可靠表情相关的一组面部动作单元。然后可以测量DIs,并最终据此做出欺骗或真实的决定。通过对欺骗检测的实时实现来评估该方法的性能。
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