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Deception in the eyes of deceiver: A computer vision and machine learning based automated deception detection

机译:Deceiver眼中的欺骗:基于计算机视觉和机器学习的自动欺骗性检测

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摘要

There is growing interest in the use of automated psychological profiling systems, specifically applying machine learning to the field of deception detection. Several psychological studies and machine-based models have been reporting the use of eye interaction, gaze and facial movements as important clues to deception detection. However, the identification of very specific and distinctive features is still required. For the first time, we investigate the fine-grained level eyes and facial micro-movements to identify the distinctive features that provide significant clues for the automated deception detection. A real-time deception detection approach was developed utilizing advanced computer vision and machine learning approaches to model the non-verbal deceptive behavior. Artificial neural networks, random forests and support vector machines were selected as base models for the data on the total of 262,000 discrete measurements with 1,26,291 and 128,735 of deceptive and truthful instances, respectively. The data set used in this study is part of an ongoing programme to collect a larger dataset on the effects of gender and ethnicity on deception detection. Some observations are made based on this data which should not be interpreted as scientific conclusions, but pointers for future work. Analysis of the above models revealed that eye movements carry relatively important clues to distinguish truthful and deceptive behaviours. The research outcomes align with the findings from forensic psychologists who also reported the eye movements as distinctive for the truthful and deceptive behavior. The research outcomes and proposed approach are beneficial for human experts and has many applications within interdisciplinary domains.
机译:对自动心理分析系统的使用越来越感兴趣,特别是将机器学习应用于欺骗性检测领域。几种心理学研究和基于机器的模型一直在报道使用眼睛相互作用,凝视和面部运动作为欺骗性检测的重要线索。但是,仍然需要识别非常具体和截然的特征。我们首次调查细粒度的眼睛和面部微观运动,以确定为自动探测检测提供了重要线索的独特功能。利用先进的计算机视觉和机器学习方法开发了实时欺骗性检测方法来模拟非言语欺骗行为。将人工神经网络,随机森林和支持向量机选择为数据的基础模型,以分别为1,26,291和128,735分别为262,000个离散测量的数据,分别为欺骗性和真实的情况。本研究中使用的数据集是正在进行的计划的一部分,用于收集更大的数据集关于性别和种族对欺骗性检测的影响。一些观察结果是基于该数据制作的,该数据不应被解释为科学结论,而是未来工作的指针。对上述模型的分析表明,眼球运动携带相对重要的线索以区分真实和欺骗行为。研究结果与法医心理学家的调查结果对齐,他们还向真实和欺骗行为报告了眼球运动。研究成果和建议的方法对人类专家有益,并且在跨学科域中有许多应用。

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