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Optimised multi-wavelet domain for decomposed electrooculogram-based eye movement classification

机译:优化的多小波域,用于分解的基于电依根眼球运动分类

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摘要

The human eye movement tracking is possible with the assistance of the electrooculography (EOG) signals. The human eye tracking system allows researchers to analyse the participant's eye movements during certain activities. This study offers the EOG signals to control the human-computer interface systems with the help of Empirical Mean Curve Decomposition (EMCD) decomposition model. At first, the input EOG signal is provided as input to the EMCD decomposition model, later the resultant signal is given to principal component analysis for dimensional reduction, and then the dimensional reduced signal is offered to multi-wavelet decomposition model. The resultant dimensionally reduced multi-wavelet decomposed signal is passed to the proposed Feature Mapping (FM) model, using thek-means clustering model. Then, the Grey Wolf Optimization (GWO) algorithm is utilised to tune the margin. Next to mapping, the obtained features are provided to the nearest neighbour classifier, to obtain the eye movement. Next to the implementation, the proposed method is compared with the existing methods, and it is witnessed that the proposed methodology gives the superior performance in correspondence with accuracy, sensitivity, specificity, precision, false positive rate, false negative rate, negative predictive value, false discovery rate, F1 score and Mathews correlation coefficient.
机译:利用电胶(EOG)信号的帮助,可以进行人眼运动跟踪。人眼跟踪系统允许研究人员在某些活动中分析参与者的眼球运动。本研究提供了EOG信号,以控制人机界面系统在经验均值曲线分解(EMCD)分解模型的帮助下。首先,将输入EOG信号提供为EMCD分解模型的输入,后面将得到的信号被赋予尺寸减小的主成分分析,然后向多小波分解模型提供尺寸减小信号。使用THE-MESS群集模型将得到的尺寸减小的多小波分解信号传递给所提出的特征映射(FM)模型。然后,灰狼优化(GWO)算法用于调整边距。在映射旁边,将所获得的特征提供给最近的邻居分类器,以获得眼睛运动。在实施旁边,将所提出的方法与现有方法进行比较,并且目睹了所提出的方法与准确性,敏感度,特异性,精度,假阳性率,假负率,负预测值,虚假发现率,F1分数和Mathews相关系数。

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