PDPM Indian Institute of Information Technology, Design and Manufacturing, Jabalpur 482005, India.
Faculty of Informatics and Management, Center for Basic and Applied Research, University of Hradec Kralove, Rokitanskeho 62, Hradec Kralove, 50003, Czech Republic.
Comput Math Methods Med. 2020 Aug 3;2020:8303465. doi: 10.1155/2020/8303465. eCollection 2020.
Human emotion recognition has been a major field of research in the last decades owing to its noteworthy academic and industrial applications. However, most of the state-of-the-art methods identified emotions after analyzing facial images. Emotion recognition using electroencephalogram (EEG) signals has got less attention. However, the advantage of using EEG signals is that it can capture real emotion. However, very few EEG signals databases are publicly available for affective computing. In this work, we present a database consisting of EEG signals of 44 volunteers. Twenty-three out of forty-four are females. A 32 channels CLARITY EEG traveler sensor is used to record four emotional states namely, happy, fear, sad, and neutral of subjects by showing 12 videos. So, 3 video files are devoted to each emotion. Participants are mapped with the emotion that they had felt after watching each video. The recorded EEG signals are considered further to classify four types of emotions based on discrete wavelet transform and extreme learning machine (ELM) for reporting the initial benchmark classification performance. The ELM algorithm is used for channel selection followed by subband selection. The proposed method performs the best when features are captured from the gamma subband of the FP1-F7 channel with 94.72% accuracy. The presented database would be available to the researchers for affective recognition applications.
在过去的几十年中,由于其在学术和工业应用方面的显著意义,人类情感识别已成为主要的研究领域。然而,大多数最先进的方法都是在分析面部图像后识别情绪。使用脑电图 (EEG) 信号进行情感识别的关注较少。然而,使用 EEG 信号的优势在于它可以捕捉真实的情感。然而,适用于情感计算的 EEG 信号数据库非常少。在这项工作中,我们提出了一个由 44 名志愿者的 EEG 信号组成的数据库。在这 44 人中,有 23 名是女性。使用 32 通道的 CLARITY EEG 旅行者传感器通过显示 12 个视频来记录受试者的四种情绪,即快乐、恐惧、悲伤和中性。因此,每个情绪分配 3 个视频文件。参与者根据观看每个视频后的感受来映射情绪。记录的 EEG 信号进一步基于离散小波变换和极限学习机 (ELM) 进行分类,以报告初始基准分类性能。ELM 算法用于通道选择,然后是子带选择。当从 FP1-F7 通道的伽马子带中捕获特征时,该方法的性能最佳,准确率为 94.72%。该数据库将提供给研究人员,用于情感识别应用。