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Box of Lies®: Multimodal Deception Detection in Dialogues

机译:Box ofLies®:对话中的多模式欺骗检测

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Deception often takes place during everyday conversations, yet conversational dialogues remain largely unexplored by current work on automatic deception detection. In this paper, we address the task of detecting multimodal deceptive cues during conversational dialogues. We introduce a multimodal dataset containing deceptive conversations between participants playing The Tonight Show Starring Jimmy Fallon® Box of Lies game, in which they try to guess whether an object description provided by their opponent is deceptive or not. We conduct annotations of multimodal communication behaviors, including facial and linguistic behaviors, and derive several learning features based on these annotations. Initial classification experiments show promising results, performing well above both a random and a human baseline, and reaching up to 69% accuracy in distinguishing deceptive and truthful behaviors.
机译:欺骗经常发生在日常对话中,但是当前有关自动欺骗检测的工作仍未开发出对话对话。在本文中,我们解决了在对话对话中检测多模态欺骗线索的任务。我们引入了一个多模式数据集,其中包含参加由JimmyFallon®Lies Box of Lies游戏进行的“今晚表演”的参与者之间的欺骗性对话,他们在其中尝试猜测对手提供的对象描述是否具有欺骗性。我们对多模态交流行为进行注释,包括面部和语言行为,并基于这些注释导出一些学习功能。最初的分类实验显示出令人鼓舞的结果,在随机和人类基准上均表现出色,并且在区分欺骗性行为和真实行为方面达到了69%的准确性。

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