表面肌电信号的Higuchi分形维数分析及活性电极位置的确定

Çağdaş Topçu, Merve Bedeloglu, A. Akgul, Refik Sever, O. Ozkan, O. Ozkan, H. Uysal, O. Polat, O. H. Colak
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引用次数: 2

摘要

在本研究中,分形维数用于分析生物医学信号的复杂性,用于确定24个手指和手腕运动时的活动通道。结果与均方根(RMS)和均值绝对值(MAV)特征进行了比较。选择了具有较高精度且与理论分形维数呈线性关系的Higuchi分形维数(HFD)方法,该方法对噪声敏感。通过对信号进行滤波,克服了噪声敏感性问题。平均Higuchi分形维数特征确定使用滑动窗口和主动运动获得的高于所选阈值的每个通道。讨论了利用RMS和HFD特征得到的各运动活动通道的相关性。在此基础上,提出了一种基于HFD而非RMS和MAV特征的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Higuchi fractal dimension analysis of surface EMG signals and determination of active electrode positions
In this study, fractal dimension which used to analysis complexity of the biomedical signals used to determine active channels when performing 24 fingers and wrist movements. The results compared with root mean square (RMS) and mean absolute value (MAV) features. Higuchi fractal dimension (HFD) method was chosen that has high accuracy and linear with theoretical fractal dimension values nevertheless the method is noise sensitive. The noise sensitivity problem was overcome with filtering the signal. Mean Higuchi fractal dimension feature determined using sliding window and active movements obtained that are above of the chosen thresholds for each channels. Correlation of active channels for each movements which was obtained with RMS and HFD features was discussed. Thus a new method was submitted which based on HFD instead of RMS and MAV features.
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