论文标题

在基于脑电图的情绪识别中朝着跨主题和跨课程的概括:系统评价,分类法和方法

Toward cross-subject and cross-session generalization in EEG-based emotion recognition: Systematic review, taxonomy, and methods

论文作者

Apicella, Andrea, Arpaia, Pasquale, D'Errico, Giovanni, Marocco, Davide, Mastrati, Giovanna, Moccaldi, Nicola, Prevete, Roberto

论文摘要

对基于情感分类的脑电图(EEG)(EEG)进行了对机器学习策略的系统综述。在这种情况下,脑电图信号的非平稳性是一个关键问题,可能导致数据集偏移问题。已经提出了几种架构和方法来解决此问题,主要是基于转移学习方法。 418篇论文通过搜索查询从Scopus,IEEE Xplore和PubMed数据库中获取,该查询的重点是现代机器学习技术,用于基于EEG的情绪评估中的概括。在这些论文中,发现75条根据与该问题的相关性符合条件。缺乏特定的跨受试者和跨课程验证策略并使用其他生物信号作为支持的研究被排除在外。根据所选论文的分析,提出了采用机器学习方法(ML)方法的研究分类法,以及对所涉及的不同ML方法的简要讨论。就平均分类精度而言,以最佳结果的研究得到了确定的研究,这支持转移学习方法似乎比其他方法更好。对(i)情绪理论模型和(ii)对分类器表演的心理筛查的影响进行了讨论。

A systematic review on machine-learning strategies for improving generalizability (cross-subjects and cross-sessions) electroencephalography (EEG) based in emotion classification was realized. In this context, the non-stationarity of EEG signals is a critical issue and can lead to the Dataset Shift problem. Several architectures and methods have been proposed to address this issue, mainly based on transfer learning methods. 418 papers were retrieved from the Scopus, IEEE Xplore and PubMed databases through a search query focusing on modern machine learning techniques for generalization in EEG-based emotion assessment. Among these papers, 75 were found eligible based on their relevance to the problem. Studies lacking a specific cross-subject and cross-session validation strategy and making use of other biosignals as support were excluded. On the basis of the selected papers' analysis, a taxonomy of the studies employing Machine Learning (ML) methods was proposed, together with a brief discussion on the different ML approaches involved. The studies with the best results in terms of average classification accuracy were identified, supporting that transfer learning methods seem to perform better than other approaches. A discussion is proposed on the impact of (i) the emotion theoretical models and (ii) psychological screening of the experimental sample on the classifier performances.

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