基于额叶脑电图相关性的人类情绪识别与分类。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
S V Thiruselvam, M Ramasubba Reddy
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引用次数: 0

摘要

人类通过情感来表达自己的感受和行动或交流的意图。最近的科技进步让机器参与到人类日常生活的交流中。因此,机器对人类情绪的理解将大大有助于更好地帮助用户。各种生理和非生理信号都可以用来让机器识别人的情绪。识别信号中的情感内容对于理解情感和机器在适当的时候采取情商行动至关重要,从而为情感识别系统和精神病患者的心理健康监测提供更好的人机交互。这项工作包括创建情感脑电图数据集、开发识别脑电信号中情感激发片段的算法,以及从脑电信号中进行情感分类。脑电信号被划分为 3 秒钟的片段,并根据额电极之间相关性的下降来选择具有情感内容的片段。选定的片段与人脸视频中适当时间段的受试者面部表情进行验证。使用 EEGNet 对脑电图信号进行情感分类。与使用所有脑电图片段的准确率相比,使用所选情绪脑电图片段的分类准确率更高。在特定主题分类中,使用选定脑电图片段训练的网络获得的平均准确率为 80.87%,而使用所有脑电图片段训练的网络获得的准确率为 70.5%。在与学科无关的分类中,使用和不使用片段选择的分类准确率分别为 67% 和 63.8%。利用 DEAP 数据集对所提出的脑电图片段选择方法进行了验证,并给出了与主体相关和与主体无关方法的分类准确率和 F1 分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frontal EEG correlation based human emotion identification and classification.

Humans express their feelings and intentions of their actions or communication through emotions. Recent advancements in technology involve machines in human communication in day-to-day life. Thus, understanding of human emotions by machines will be very helpful in assisting the user in a far better way. Various physiological and non-physiological signals can be used to make the machines to recognize the emotion of a person. The identification of emotional content in the signals is crucial to understand emotion and the machines act with emotional intelligence at appropriate times, thus providing a better human machine interaction with emotion identification system and mental health monitoring for psychiatric patients. This work includes the creation of an emotion EEG dataset, the development of an algorithm for identifying the emotion elicitation segments in the EEG signal, and the classification of emotions from EEG signals. The EEG signals are divided into 3s segments, and the segments with emotional content are selected based on the decrease in correlation between the frontal electrodes. The selected segments are validated with the facial expressions of the subjects in the appropriate time segments of the face video. EEGNet is used to classify the emotion from the EEG signal. The classification accuracy with the selected emotional EEG segments is higher compared to the accuracy using all the EEG segments. In subject-specific classification, an average accuracy of 80.87% is obtained from the network trained with selected EEG segments, and 70.5% is obtained from training with all EEG segments. In subject-independent classification, the accuracy of classification is 67% and 63.8% with and without segment selection, respectively. The proposed method of selection of EEG segments is validated using the DEAP dataset, and classification accuracies and F1-scores of subject dependent and subject-independent methods are presented.

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CiteScore
8.40
自引率
4.50%
发文量
110
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