Patel Pragati, R Raghunandan, Annavarapu Ramesh Naidu
Department of Physics, School of Physical, Chemical, and Applied Sciences, Pondicherry University, Puducherry, 605014, India.
Brain Inform. 2021 Oct 5;8(1):20. doi: 10.1186/s40708-021-00141-5.
Many studies on brain-computer interface (BCI) have sought to understand the emotional state of the user to provide a reliable link between humans and machines. Advanced neuroimaging methods like electroencephalography (EEG) have enabled us to replicate and understand a wide range of human emotions more precisely. This physiological signal, i.e., EEG-based method is in stark comparison to traditional non-physiological signal-based methods and has been shown to perform better. EEG closely measures the electrical activities of the brain (a nonlinear system) and hence entropy proves to be an efficient feature in extracting meaningful information from raw brain waves. This review aims to give a brief summary of various entropy-based methods used for emotion classification hence providing insights into EEG-based emotion recognition. This study also reviews the current and future trends and discusses how emotion identification using entropy as a measure to extract features, can accomplish enhanced identification when using EEG signal.
许多关于脑机接口(BCI)的研究试图了解用户的情绪状态,以便在人与机器之间建立可靠的联系。像脑电图(EEG)这样的先进神经成像方法使我们能够更精确地复制和理解广泛的人类情绪。这种生理信号,即基于EEG的方法与传统的基于非生理信号的方法形成鲜明对比,并且已被证明表现更好。EEG密切测量大脑(一个非线性系统)的电活动,因此熵被证明是从原始脑电波中提取有意义信息的有效特征。这篇综述旨在简要总结用于情绪分类的各种基于熵的方法,从而为基于EEG的情绪识别提供见解。本研究还回顾了当前和未来的趋势,并讨论了使用熵作为提取特征的度量的情绪识别在使用EEG信号时如何能够实现增强的识别。