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LieToMe: Preliminary study on hand gestures for deception detection via Fisher-LSTM

机译:吉埃托:通过Fisher-LSTM对欺骗性检测的手势初步研究

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The ability to discern lies, more broadly known as deception detection, is an invaluable skill that can strongly influence the outcome of relevant situations such as court trials and police interrogatories. Several devices currently exist and are being used (e.g., magnetic resonance and polygraphs) to ease those tasks; although, due to the subject awareness of such tools, their effectiveness can be compromised by the person intentional behavioural changes. Thus, alternative ways to discriminate lies without using physical devices, could become critical assets for the aforementioned situations, especially in ever improving smart cities environments. In this letter, we present an unorthodox deception detection approach, based on hand gestures found in RGB videos of famous trials. The proposed system first extrapolates hands skeletons from the RGB sequences, then computes meaningful features which are summarized into Fisher Vectors (FVs), and finally feeds this representation to a Long-Short Term Memory (LSTM) network, defined Fisher-LSTM, to try and discern if a lie is being told. In the experimental results, we show how the FV representation can help a LSTM network grasp hand gestures characteristics that could otherwise be missed. What is more, the devised Fisher-LSTM, due to its real-time computation, can be employed in smart environments as an alternative lie detector in situations requiring an immediate response, such as the aforementioned law enforcement examples. (C) 2020 Elsevier B.V. All rights reserved.
机译:辨别谎言的能力,更广泛地称为欺骗性检测,是一种宝贵的技能,可以强烈影响法庭审判和警察询问等相关情况的结果。目前存在的几种设备并正在使用(例如,磁共振和多指)来缓解这些任务;虽然,由于此类工具的主题意识,但他们的有效性可能会受到故意行为变化的损害。因此,在不使用物理设备的情况下辨别谎言的替代方式可能成为上述情况的关键资产,特别是在曾经改善的智能城市环境中。在这封信中,我们提出了一个非正统的欺骗性检测方法,基于在着名试验的RGB视频中发现的手势。所提出的系统首先从RGB序列推断手骨架,然后计算汇总到Fisher向量(FVS)的有意义的功能,最后将此表示源于长短短期内存(LSTM)网络,定义的Fisher-LSTM,以尝试并辨别如果被告知谎言。在实验结果中,我们展示了Fv表示如何帮助LSTM网络掌握手势特征,否则可能会错过。更重要的是,由于其实时计算,设计的Fisher-LSTM可以在智能环境中使用,作为需要立即响应的情况下的替代LIE探测器,例如上述执法示例。 (c)2020 Elsevier B.v.保留所有权利。

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