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Comparative Analysis of KNN, SVM, DT for EOG based Human Computer Interface

机译:KNN,SVM,DT基于EOG的人机界面的比较分析

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In this study, EOG signal based human computer interface (HCI) has been implemented. This is a communication system that permits interaction with computer using eye movement. The necessary steps of implementation of HCI are EOG signal acquisition and analysis, feature extraction and classification. EOG signal has been acquired by placing electrodes at left and right corner of eye from 12 subjects. Dual Tree Complex Wavelet Transform (DTCWT) has been employed to denoise the EOG signal and 16 features are extracted from the time domain. Three classifiers (Decision Tree (DT), k-Nearest Neighbor (KNN) algorithm, and Support Vector Machines (SVM)) have been used to identify the horizontal eye movement i.e. left and right. Analysis and comparison of their performance is made on the basis of confusion matrix, receiver operating characteristics (ROC) and performance indices i.e. sensitivity, specificity, precision, accuracy and F1 score to evaluate the most efficient classifier for their classification task. According to classification results, out of three classifiers, KNN is the best classifier for horizontal EOG signal and has shown almost 100 percent accuracy.
机译:在本研究中,已经实现了基于EOG信号的人机接口(HCI)。这是一种通信系统,允许使用眼睛运动与计算机交互。实施HCI的必要步骤是EOG信号采集和分析,特征提取和分类。通过从12个受试者置于眼睛左右角的电极来获取EOG信号。双树复杂小波变换(DTCWT)已被用于代位于EOG信号,并从时域中提取16个特征。已经使用三个分类器(决定树(DT),K最近邻(KNN)算法和支持向量机(SVM))来识别水平眼睛运动即左右。它们的性能分析和比较是基于混淆矩阵,接收器操作特性(ROC)和性能指标的分析和比较。对灵敏度,特异性,精度,准确度和F1分数来评估其分类任务的最有效分类器。根据分类结果,三个分类器中,KNN是水平EOG信号的最佳分类器,并表现出几乎100%的精度。

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