论文标题

使用无线信号检测主题的情绪检测的深度学习框架

Deep learning framework for subject-independent emotion detection using wireless signals

论文作者

Khan, Ahsan Noor, Ihalage, Achintha Avin, Ma, Yihan, Liu, Baiyang, Liu, Yujie, Hao, Yang

论文摘要

使用无线信号的情绪状态识别是一个新兴领域,对人类行为和福祉监测的神经科学研究有影响。当前,僵化的情绪检测主要依赖于对从光学或摄像机获得的面部表情和/或眼动动作的分析。同时,尽管他们因从多模式数据中识别人类情绪而被广泛接受,但机器学习方法主要仅限于缺乏普遍性的主题依赖分析。在本文中,我们报告了一项实验研究,该研究收集了来自射频(RF)反射的15名参与者的心跳和呼吸信号,然后是新型的噪声过滤技术。我们提出了一种基于原始RF数据融合和处理后的RF信号的新型深神经网络(DNN)架构,用于分类和可视化各种情绪状态。提出的模型分别为0.71、0.72和0.71精度,召回和F1得分值的独立受试者达到了71.67%的高分类精度。我们将我们的结果与从五种不同的经典ML算法获得的结果进行了比较,并且确定即使使用有限的原始RF和后处理后的时间序列数据,深度学习也提供了卓越的性能。深度学习模型还通过将我们的结果与ECG信号的结果进行了验证。我们的结果表明,使用无线信号进行备用情绪状态检测是具有高精度的其他技术的更好替代方法,并且在未来的行为科学研究中具有更广泛的应用。

Emotion states recognition using wireless signals is an emerging area of research that has an impact on neuroscientific studies of human behaviour and well-being monitoring. Currently, standoff emotion detection is mostly reliant on the analysis of facial expressions and/or eye movements acquired from optical or video cameras. Meanwhile, although they have been widely accepted for recognizing human emotions from the multimodal data, machine learning approaches have been mostly restricted to subject dependent analyses which lack of generality. In this paper, we report an experimental study which collects heartbeat and breathing signals of 15 participants from radio frequency (RF) reflections off the body followed by novel noise filtering techniques. We propose a novel deep neural network (DNN) architecture based on the fusion of raw RF data and the processed RF signal for classifying and visualising various emotion states. The proposed model achieves high classification accuracy of 71.67 % for independent subjects with 0.71, 0.72 and 0.71 precision, recall and F1-score values respectively. We have compared our results with those obtained from five different classical ML algorithms and it is established that deep learning offers a superior performance even with limited amount of raw RF and post processed time-sequence data. The deep learning model has also been validated by comparing our results with those from ECG signals. Our results indicate that using wireless signals for stand-by emotion state detection is a better alternative to other technologies with high accuracy and have much wider applications in future studies of behavioural sciences.

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