脑电引导多模态测谎视听线索

Hamza Javaid, Aniqa Dilawari, Usman Ghani Khan, Bilal Wajid
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引用次数: 4

摘要

说谎被认为是欺骗的一种形式,它定义了人类本质中不可避免的一部分。此外,欺骗或测谎在刑事和司法领域有许多应用。识别欺骗的传统做法包括用科学技术监测生理信号、转录、视觉和声学信息。在本文中,我们提出了一种利用新型深度学习技术的多模态测谎系统。特别地,研究了被测者的视觉、听觉和脑电图信息对欺骗检测任务的重要性。在视觉方面,该系统从视频中的连续帧中提取密集的光流特征,以监控面部运动。双流卷积神经网络利用这种视觉特征来检测谎言或真相。基于语音的欺骗识别系统从音频信号中提取频率分布谱,利用注意力增强CNN学习语音中频率分布的变化。对于脑电信号测谎,我们利用双向长短期神经网络对脑电信号进行表征和分类。将脑电信号表示为时间序列数据,双向LSTM学习过去信号和未来信号的对应关系。该研究使用性能最好的分类器对所有测谎模态进行多模态融合。在Bag-Of-Lies数据集上的实验表明,该系统的性能明显优于传统的机器学习方法。当所有模式结合在一起时,该系统在区分虚假和真实样本方面的准确率达到83.5%。
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EEG Guided Multimodal Lie Detection with Audio-Visual Cues
Lying is considered a form of deception that defines one of the inevitable parts of human essence. Also, deception or lie detection has numerous applications in criminal and judicial community. Traditional practices of identifying deceit includes the monitoring of physiological signals, transcripts, visual and acoustic information with scientific techniques. In this paper, we propose a multimodal lie detection system that leverage the capabilities of novel deep learning techniques. In particular, the study investigates the importance of visual, acoustic and EEG information of a human subject for deception detection task. On the vision side, the system extracts dense optical flow features from consecutive frames in a video to monitor the facial movements. A two-stream convolution neural network utilize this visual features to detect lie or truth. Speech based deceit identification system extracts frequency distributed spectrograms from audio signals and attention augmented CNN is employed to learn changes in distribution of frequencies in speech. For lie detection with EEG signals, we utilize bidirectional long short term neural network for representation and classification of EEG data. EEG signals are represented as time series data and Bi-directional LSTM is learns the correspondences of past signals and future signals. The study performs multimodal fusion on all modalities for lie detection with best performing classifier. Experiments on Bag-Of-Lies dataset showed that the system outperformed traditional machine learning approaches with a significant difference. When all modalities are combined, the system achieves an accuracy of 83.5% in distinguishing deceptive and truthful samples.
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