Emotional profiling through supervised machine learning of interrupted EEG interpolation

H. Yaacob, H. Omar, D. Handayani, R. Hassan
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引用次数: 7

Abstract

It has been reported that the construction of emotion profiling models using supervised machine learning involves data acquisition, signal pre-processing, feature extraction and classification. However, almost all papers do not address the issue of profiling emotion using supervised machine learning on the interrupted encephalogram (EEG) signals. Based on a preliminary study, emotion profiling on interrupted EEG signals produces low classification accuracy, using multilayer perceptron (MLP). Furthermore, lower emotion classification accuracy is produced from interrupted EEG signals with higher number of segments. Thus, the objective of this paper is to propose a technique and present the outcomes of handling interrupted EEG signals for emotion profiling. This is done by the suppression and interpolation of originally interrupted EEG signals at pre-process stage. As a result, emotion classification using MLP on interpolated data improves
基于中断脑电图插值的监督式机器学习的情绪分析
据报道,使用监督式机器学习构建情绪分析模型涉及数据采集、信号预处理、特征提取和分类。然而,几乎所有的论文都没有解决在中断脑电图(EEG)信号上使用监督机器学习来分析情绪的问题。基于初步研究,采用多层感知器(MLP)对中断的脑电信号进行情绪分析,分类准确率较低。此外,中断的脑电信号片段数越多,情绪分类准确率越低。因此,本文的目的是提出一种技术,并提出处理中断的脑电图信号进行情绪分析的结果。这是通过在预处理阶段对原始中断的脑电信号进行抑制和插值来实现的。因此,在插值数据上使用MLP进行情绪分类得到了改进
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