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Deceit detection via online behavioral learning.

机译:通过在线行为学习进行欺骗检测。

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摘要

We build a framework for an automated deceit detection system which captures deceit by measuring the deviation from normal behavior, at a critical point in the course of an investigative interrogation. Behavioral Psychologists have shown that eyes (via gaze aversion) can be good "reflectors" of the inner emotions, when a person tells a high-stake lie; hence we develop our deceit detection framework around eye movement changes. Deception causes physiological reactions such as high blood pressure, increased heart rate, and an increased respiration rate. Behavioral cues to deceit differ in low- and high-stakes situations, i.e. the nervous behaviors manifested or leaked in people telling lies when the stakes are high are different from when they are low, and high-stake cues are more readily detected. We explore the latent information from the eyes, created while a subject is engaged in a conversation that could potentially result in a high-stake lie being told. Hence we train a Hidden Markov Model with the latent information from the eyes during a normal course of conversation for each subject to represent normal behavior. The remaining conversation is broken into sequences and each sequence is tested against the parameters of the model of normal behavior. At the critical points in the interrogations, the deviations from normalcy are observed and used to deduce verity/deceit. An analysis on 40 subjects gave us an accuracy of 82.5% which strongly suggests that the latent parameters of eye movements successfully capture behavioral changes and could be viable for use in automated deceit detection.
机译:我们建立了一个自动欺骗检测系统的框架,该框架通过在调查询问的关键时刻测量与正常行为的偏差来捕获欺骗。行为心理学家已经表明,当一个人诉说一个高风险的谎言时,眼睛(通过凝视厌恶)可能是内在情绪的良好“反射器”。因此,我们围绕眼球运动的变化开发了欺骗检测框架。欺骗会引起诸如高血压,心律加快和呼吸频率增加等生理反应。在低风险和高风险情况下,欺骗的行为提示有所不同,即,人们在说谎时所表现出的神经行为或泄露的风险与高风险相比有所不同,而高风险提示则更容易被发现。我们从被摄对象进行对话时从眼睛中发现潜在信息,这些信息有可能导致高风险的谎言被告知。因此,我们在正常会话过程中使用每个眼睛的潜在信息训练隐马尔可夫模型,以代表每个正常行为。剩余的对话被分解为序列,并针对正常行为模型的参数测试每个序列。在审讯的关键点,观察到偏离正常状态的情况,并用来推论真实性/欺骗性。对40位受试者的分析得出的准确度为82.5%,这强烈表明,眼睛运动的潜在参数成功捕获了行为变化,并且可能适用于自动欺骗检测。

著录项

  • 作者

    Bhaskaran, Nisha.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Computer Science.
  • 学位 M.S.
  • 年度 2010
  • 页码 63 p.
  • 总页数 63
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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