多模态欺骗检测:一种t型方法

B. Diana, M. Elia, Valentino Zurloni, A. Elia, Alessandro Maisto, Serena Pelosi
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引用次数: 7

摘要

这项工作提出了一种新的欺骗检测方法,基于通过分析说谎者和诚实者的行为(语言和非语言)来发现他们之间的显著差异。这是基于两个因素的结合:多模态数据收集和t型分析。多模态方法已在有关欺骗检测的文献和一些关于理解任何交际现象的研究中得到认可。我们相信,像t模式分析这样的方法可以从结合来自多个信号系统的数据的方法中获得最佳优势。事实上,t型分析是一种最新的行为分析方法,它揭示了人类行为组织基础上的复杂结构。在这项工作中,我们进行了一项实验研究,并分析了与单个主题相关的数据。结果显示了t型分析是如何发现说真话和撒谎之间的差异的。这项工作的目的是在欺骗检测的知识状态方面取得进展,最终目标是提出一个有用的工具来改善公共安全和福祉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Deception Detection: A t-pattern Approach
This work proposes a new approach to deception detection, based on finding significant differences between liars and truth tellers through the analysis of their behavior, verbal and non-verbal. This is based on the combination of two factors: multimodal data collection, and t-pattern analysis. Multimodal approach has been acknowledged in literature about deception detection and on several studies concerning the understanding of any communicative phenomenon. We believe a methodology such as T-pattern analysis could be able to get the best advantages from an approach that combines data coming from multiple signaling systems. In fact, T-pattern analysis is a recent methodology for the analysis of behavior that unveil the complex structure at the basis of the organization of human behavior. For this work, we conducted an experimental study and analyzed data related to a single subject. Results showed how T-pattern analysis allowed to find differences between truth telling and lying. This work aims at making progress in the state of knowledge about deception detection, with the final goal to propose a useful tool for the improvement of public security and well-being.
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