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Construction of a Liar Corpus and Detection of Lying Situations

机译:说谎者语料库的构建与说谎情况的发现

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Recognizing lies in human interaction is one of the most important and challenging tasks in artificial intelligence. For example, it leads to the development of a human-computer interaction system that detects a liar in a conversation. In another example, some systems in the future might occasionally need to tell a lie for not hurting user's feelings, namely a white lie for trouble-free conversations. In this paper, we construct a video corpus for developing a system that detects lies in conversations. The corpus consists of 540 question-answer pairs by 9 persons; 270 true answers and 270 lies. We manually analyze the images in the corpus for recognizing lies. In addition, we apply machine learning techniques, support vector machines with local binary pattern features and geometric features, to our corpus. We discuss the results of the analysis of the corpus and the machine learning approaches to our corpus.
机译:认识人与人之间的互动是人工智能中最重要和最具挑战性的任务之一。例如,它导致了人机交互系统的开发,该系统可以检测对话中的说谎者。在另一个示例中,将来的某些系统可能偶尔需要说出一种不伤害用户感受的谎言,即无故障对话的白色谎言。在本文中,我们构建了一个视频语料库,用于开发检测对话中的谎言的系统。语料库由9个人组成的540个问答对。 270个真实答案和270个谎言。我们手动分析语料库中的图像以识别谎言。此外,我们将机器学习技术,具有局部二进制模式特征和几何特征的支持向量机应用于我们的语料库。我们讨论了语料库的分析结果以及我们的语料库的机器学习方法。

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