Introducing Attention Mechanism for EEG Signals: Emotion Recognition with Vision Transformers.

Arjun Arjun, Aniket Singh Rajpoot, Mahesh Raveendranatha Panicker
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引用次数: 11

Abstract

The accurate emotional assessment of humans can prove beneficial in health care, security investigations and human interaction. In contrast to emotion recognition from facial expressions which can prove to be inaccurate, analysis of electroencephalogram (EEG) activity is a more accurate representation of one's state of mind. With advancements in deep learning, various methods are being employed for this task. In this research, importance of attention mechanism in EEG signals is introduced through two vision transformer based methods for the classification of EEG signals on the basis of emotions. The first method utilizes 2-D images generated through continuous wavelet transform (CWT) of the raw EEG signals and the second method directly operates on the raw signal. The publicly available and widely accepted DEAP dataset has been utilized in this research for validating the proposed approaches. The proposed approaches report very high accuracies of 97% and 95.75% using CWT and 99.4% and 99.1% using raw signal for valence and arousal classifications respectively, which clearly highlights the significance of attention mechanism for EEG signals. The proposed methodology also ensures faster training and testing time which suits the clinical purposes.Clinical Relevance- This work establishes a highly accurate algorithm for emotion recognition using EEG signals which has potential applications in music-based therapy.

脑电信号的注意机制:基于视觉变形的情绪识别。
事实证明,对人类的准确情感评估在卫生保健、安全调查和人际交往中是有益的。与通过面部表情来识别情绪可能被证明是不准确的相比,脑电图(EEG)活动的分析更准确地反映了一个人的精神状态。随着深度学习的进步,各种方法被用于这项任务。本研究通过两种基于视觉变换的基于情绪的脑电信号分类方法,介绍了注意机制在脑电信号中的重要性。第一种方法是利用原始脑电信号经过连续小波变换(CWT)生成的二维图像,第二种方法是直接对原始信号进行处理。本研究使用了公开可用且被广泛接受的DEAP数据集来验证所提出的方法。结果表明,CWT和原始信号的效价和觉醒分类准确率分别为97%和95.75%和99.4%和99.1%,表明注意机制对脑电信号的重要性。所提出的方法还确保了更快的培训和测试时间,符合临床目的。临床意义-这项工作建立了一种高度精确的算法,用于使用脑电图信号进行情绪识别,这在基于音乐的治疗中具有潜在的应用前景。
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