A Review on BCI Emotions Classification for EEG Signals Using Deep Learning

Puja A. Chavan, S. Desai
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引用次数: 1

Abstract

Emotion awareness is one of the most important subjects in the field of affective computing. Using nonverbal behavioral methods such as recognition of facial expression, verbal behavioral method, recognition of speech emotion, or physiological signals-based methods such as recognition of emotions based on electroencephalogram (EEG) can predict human emotion. However, it is notable that data obtained from either nonverbal or verbal behaviors are indirect emotional signals suggesting brain activity. Unlike the nonverbal or verbal actions, EEG signals are reported directly from the human brain cortex and thus may be more effective in representing the inner emotional states of the brain. Consequently, when used to measure human emotion, the use of EEG data can be more accurate than data on behavior. For this reason, the identification of human emotion from EEG signals has become a very important research subject in current emotional brain-computer interfaces (BCIs) aimed at inferring human emotional states based on the EEG signals recorded. In this paper, a hybrid deep learning approach has proposed using CNN and a long short-term memory (LSTM) algorithm is investigated for the purpose of automatic classification of epileptic disease from EEG signals. The signals have been processed by CNN for feature extraction from runtime environment while LSTM has used for classification of entire data. Finally, system demonstrates each EEG data file as normal or epileptic disease. In this research to describes a state of art for effective epileptic disease detection prediction and classification using hybrid deep learning algorithms. This research demonstrates a collaboration of CNN and LSTM for entire classification of EEG signals in numerous existing systems.
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基于深度学习的脑电信号BCI情绪分类研究进展
情感意识是情感计算领域的重要课题之一。使用非语言行为方法,如面部表情识别,言语行为方法,言语情感识别,或基于生理信号的方法,如基于脑电图(EEG)的情感识别,可以预测人类的情绪。然而,值得注意的是,从非语言或语言行为中获得的数据都是暗示大脑活动的间接情感信号。与非语言或语言行为不同,脑电图信号直接来自人类大脑皮层,因此可能更有效地代表大脑的内在情绪状态。因此,当用于测量人类情绪时,使用脑电图数据比使用行为数据更准确。因此,从脑电信号中识别人的情绪已成为当前情绪脑机接口(bci)中一个非常重要的研究课题,该接口旨在根据记录的脑电信号推断人的情绪状态。本文提出了一种基于CNN和长短期记忆(LSTM)算法的混合深度学习方法,用于从脑电图信号中自动分类癫痫疾病。对信号进行CNN处理,提取运行时环境下的特征,使用LSTM对整个数据进行分类。最后,系统将每个脑电图数据文件显示为正常或癫痫。在本研究中,描述了一种使用混合深度学习算法进行有效癫痫疾病检测、预测和分类的最新技术。本研究展示了CNN和LSTM在众多现有系统中对EEG信号进行整体分类的合作。
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