Detection of Deception Using Facial Expressions Based on Different Classification Algorithms

Harith H. Thannoon, W. Ali, Ivan A. Hashim
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引用次数: 12

Abstract

Most psychologists argue that facial behavioral during lying is different from facial behavioral when telling the truth, so the facial behavioral can be used as reliable indicators for spotting liars. The deception detection systems (DDSs) based on facial expressions are non-invasive, mobile and cost-effective. In this work a DDS is dependent on Facial Action Coding System (FACS) for facial features extraction, the main idea of FACS is to describe all facial actions using Action Units (AUs), each AU is related to movement one or more facial muscles. Eight AUs are used which incorporated into a single facial behavior pattern vector; these AUs are AUs 5, 6, 7, 10, 12, 14, 23, and 28. Datasets are collected for 43 subjects (20males, 23 females) most of them between ages 18-25. Four types of classification algorithms are used individually in the last stage of the proposed system; these classifiers are MLP, KNN, VG-RAM, and SVM. The simulation results show that the best results are obtaining when using VG-RAM and KNN classifiers. The main contributions of this work are new classification techniques in DDS, collect real database that can use to measure the performance of any DDS based on facial expressions, and select suitable facial features.
基于不同分类算法的面部表情欺骗检测
大多数心理学家认为,撒谎时的面部行为不同于说实话时的面部行为,因此面部行为可以作为识别说谎者的可靠指标。基于面部表情的欺骗检测系统具有非侵入性、移动性和经济性等特点。在这项工作中,DDS依赖于面部动作编码系统(FACS)进行面部特征提取,FACS的主要思想是使用动作单元(Action Units, AU)来描述所有面部动作,每个AU与一个或多个面部肌肉的运动有关。使用8个au,将其合并为单个面部行为模式向量;这些a1是a1 5 6 7 10 12 14 23 28。收集了43名受试者的数据集,其中男性20人,女性23人,大多数年龄在18-25岁之间。在系统的最后阶段,分别使用了四种分类算法;这些分类器是MLP、KNN、VG-RAM和SVM。仿真结果表明,使用VG-RAM和KNN分类器可以获得最好的分类效果。本工作的主要贡献是新的DDS分类技术,收集真实的数据库,可以用来衡量任何基于面部表情的DDS的性能,并选择合适的面部特征。
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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