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Robust Algorithm for Multimodal Deception Detection

机译:多模式欺骗检测的鲁棒算法

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Automatic deception detection from the video has gained a paramount of interest because of their applicability in various real-life applications. The recorded videos contain various information such as temporal variations of the face, linguistics and acoustics, which can be used together, to detect deception automatically. In this work, we proposed a new approach based on multimodal information like audio, linguistic (or text) and non-verbal features. The proposed multimodal deception detection framework is based on combining the decision from the audio, text and non-verbal features using majority voting. The proposed multimodal deception system is banked on the audio system based on Cepstral Coefficients (CC) and Spectral Regression Kernel Discriminant Analysis (SRKDA) of fixed length audio sequences. The text system is based on bag-of-n-grams features and the linear Support Vector Machine (SVM) classifier while the non-verbal features are classified using the AdaBoost classifier. Extensive experiments are carried out on a publicly available real-life deception video dataset to evaluate the efficacy of the proposed scheme. The obtained results on a 25-cross-fold validation have indicated a deception detection accuracy of 97% out-performing both state-of-the-art techniques and human performance on the whole dataset.
机译:由于它们在各种现实生活中的适用性,来自视频的自动欺骗检测已经令人兴趣。记录的视频包含各种信息,例如面部,语言学和声学的时间变化,可以一起使用,以便自动检测欺骗。在这项工作中,我们提出了一种基于音频,语言(或文本)和非语言特征等多模式信息的新方法。所提出的多模式欺骗检测框架是基于使用大多数投票的音频,文本和非语言特征的决定。所提出的多模式欺骗系统基于临时谱系数(CC)和固定长度音频序列的抗谱系数(CC)和光谱回归核判别分析(SRKDA)对音频系统进行了银行。文本系统基于N-r克的特征和线性支持向量机(SVM)分类器,而使用Adaboost分类器分类非语言功能。广泛的实验是在公开的现实生活欺骗视频数据集上进行的,以评估所提出的方案的功效。在25交叉折叠验证上获得的结果表明,在整个数据集中的最先进的技术和人类性能下,探测检测准确度为97%。

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