IEEE J Biomed Health Inform. 2022 Jun;26(6):2493-2503. doi: 10.1109/JBHI.2022.3148109. Epub 2022 Jun 3.
Recently, electroencephalography (EEG) signals have shown great potential for emotion recognition. Nevertheless, multichannel EEG recordings lead to redundant data, computational burden, and hardware complexity. Hence, efficient channel selection, especially single-channel selection, is vital. For this purpose, a technique termed brain rhythm sequencing (BRS) that interprets EEG based on a dominant brain rhythm having the maximum instantaneous power at each 0.2 s timestamp has been proposed. Then, dynamic time warping (DTW) is used for rhythm sequence classification through the similarity measure. After evaluating the rhythm sequences for the emotion recognition task, the representative channel that produces impressive accuracy can be found, which realizes single-channel selection accordingly. In addition, the appropriate time segment for emotion recognition is estimated during the assessments. The results from the music emotion recognition (MER) experiment and three emotional datasets (SEED, DEAP, and MAHNOB) indicate that the classification accuracies achieve 70-82% by single-channel data with a 10 s time length. Such performances are remarkable when considering minimum data sources as the primary concerns. Furthermore, the individual characteristics in emotion recognition are investigated based on the channels and times found. Therefore, this study provides a novel method to solve single-channel selection for emotion recognition.
最近,脑电图(EEG)信号在情绪识别方面显示出巨大的潜力。然而,多通道 EEG 记录导致了冗余数据、计算负担和硬件复杂性。因此,高效的通道选择,特别是单通道选择,至关重要。为此,提出了一种称为脑节律序列(BRS)的技术,该技术基于在每个 0.2s 时间戳处具有最大瞬时功率的主导脑节律来解释 EEG。然后,通过相似性度量使用动态时间规整(DTW)对节律序列进行分类。在评估情绪识别任务的节律序列后,可以找到产生令人印象深刻的准确性的代表性通道,从而相应地实现单通道选择。此外,在评估过程中还估计了用于情绪识别的适当时间片段。音乐情绪识别(MER)实验和三个情绪数据集(SEED、DEAP 和 MAHNOB)的结果表明,通过 10s 时长的单通道数据,分类准确率达到 70-82%。考虑到最小数据源是主要关注点,这种性能是显著的。此外,还基于所发现的通道和时间研究了情绪识别中的个体特征。因此,本研究为解决情绪识别中的单通道选择问题提供了一种新方法。