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An EOG signals recognition method based on improved threshold dual tree complex wavelet transform

机译:一种基于改进阈值双树复杂小波变换的EOG信号识别方法

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Human Machine Interface (HMI) system can effectively detect Electrooculogram (EOG) signals of eye movements, extract intension of users, and convert them into control commands of computer or rehabilitation aid devices. Thus, HMI system is easily accepted by the majority of persons with disabilities. Discrete Wavelet Transform (DWT) method was mainly used in feature extraction of EOG signals, but Traditional DWT method was always suffered from severe frequency aliasing and poor shift invariant. In this paper, Dual-tree Complex Wavelet Transform (DTCWT) with a novel threshold calculation method was proposed for feature selection of EOG signals. To verify the proposed method, The EOG signal was collected from 5 normal subjects in the laboratory, and featured selected. Then, Support Vector Machine (SVM) was applied for classification. The average correct detection rate of proposed method was 96.11%, which was higher than Traditional DWT method. These results demonstrate that the DTCWT-SVM algorithm provides high classification accuracy, and suitable for clinical medicine field.
机译:人机界面(HMI)系统可以有效地检测眼睛运动的电帘图(EOG)信号,提取用户的内涵,并将它们转换为计算机或康复辅助设备的控制命令。因此,大多数残疾人容易接受HMI系统。离散小波变换(DWT)方法主要用于EOG信号的特征提取,但传统的DWT方法总是遭受严重的频率叠种和差的换档不变。本文提出了具有新型阈值计算方法的双树复杂小波变换(DTCWT),用于Eog信号的特征选择。为了验证所提出的方法,EOG信号从实验室中的5个正常受试者收集,并选择选择。然后,施加支持向量机(SVM)进行分类。所提出的方法的平均正确检测率为96.11%,高于传统的DWT方法。这些结果表明,DTCWT-SVM算法提供了高分类精度,适用于临床医学领域。

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