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Optimization of least squares support vector machine technique using genetic algorithm for electroencephalogram multi-dimensional signals

机译:基于遗传算法的脑波多维信号最小二乘支持向量机技术优化

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摘要

Human-computer intelligent interaction (HCII) is a rising field of science that aims to refine and enhance the interaction between computer and human. Since emotion plays a vital role in human daily life, the ability of computer to interpret and response to human emotion is a crucial element for future intelligent system.Accordingly, several studies have been conducted to recognise human emotion using different technique such as facialudexpression, speech, galvanic skin response (GSR), or heart rate (HR).However, such techniques have problems mainly in terms of credibility and reliability as people can fake their feeling and response. Electroencephalogram (EEG) on the other has shown to be a very effective way in recognising human emotion as this technique records the brain activity of human and they can hardly be deceived by voluntary control. Regardless the popularity of EEG in recognizing human emotion, this study field is relatively challenging as EEG signal is nonlinear, involves myriad factors and chaotic in nature.These issues have led to high dimensional problem and poor classification results.To address such problems, this study has proposed a novel computational model, which consist of three main stages, namely a) feature extraction; b) feature selection and c) classifier. Discrete wavelet packet transform (DWPT) has been used to extract EEG signals feature and ultimately 204,800 features from 32 subject-independent have been obtained. Meanwhile, Genetic Algorithm (GA) and Least squares support vector machine (LS-SVM) have been used as audfeature selection technique and classifier respectively.This computational model is testedudon the common DEAP pre-processed EEG dataset in order to classify three levels of valence and arousal.The empirical results have shown that the proposed GA-LSSVM, has improved the classification results to 49.22% and 54.83% for valence and arousal respectively, whereas is it observed that 46.33% of valence and 48.30% of arousal classification were achieved when no feature selection technique is applied on the identical classifier.
机译:人机智能交互(HCII)是科学的新兴领域,旨在完善和增强计算机与人之间的交互。由于情感在人类日常生活中起着至关重要的作用,因此计算机对人类情感的解释和响应能力是未来智能系统的关键要素。因此,已经进行了多项研究,使用面部去压等不同技术来识别人类情感。 ,语音,皮肤电反应(GSR)或心率(HR)。但是,由于人们可以伪造自己的感觉和反应,因此这些技术主要在信誉和可靠性方面存在问题。另一方面,脑电图(EEG)已被证明是识别人类情绪的一种非常有效的方法,因为该技术记录了人类的大脑活动,并且很难被自愿控制所欺骗。尽管脑电图在识别人的情绪方面很受欢迎,但是由于脑电图信号是非线性的,涉及无数因素并且本质上是混沌的,因此该研究领域相对具有挑战性,这些问题导致了高维问题和较差的分类结果。提出了一种新颖的计算模型,该模型包括三个主要阶段,即a)特征提取; b)特征选择和c)分类器。离散小波包变换(DWPT)已用于提取EEG信号特征,最终已从32个独立于受试者的对象中获得204,800个特征。同时,遗传算法(GA)和最小二乘支持向量机(LS-SVM)分别被用作特征选择技术和分类器。该计算模型在常用的DEAP预处理EEG数据集上进行了测试以进行分类实验结果表明,提出的GA-LSSVM将价和唤醒的分类结果分别提高到了49.22%和54.83%,而观察到的价和唤醒的分类结果分别为46.33%和48.30%当没有特征选择技术应用于相同分类器时,实现分类。

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