基于高阶交叉的肌电模式识别新特征

A. Phinyomark, E. Scheme
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引用次数: 0

摘要

在这项工作中,我们提出了一套新的高阶时域特征用于表面肌电(EMG)模式识别。所提出的方法采用简单的测量方法,从肌电信号时间序列中提取频率信息,并应用一系列差分滤波器。多个肌电图数据集由48个健全和经桡骨截肢受试者进行各种手部和手指运动组成,用于评估所提出特征的性能和鲁棒性。结果表明,这些新的基于高阶的特征比传统特征提供了3 - 15%的显著性能提升(p < 0.05)。提出的最佳特征高阶肌脉冲百分比率在直方图、平均频率和中位数频率的时域和频域上也显著优于其他基于频率信息的肌电信号特征,分别高出8-14%、8-25%和14-35% (p < 0.05)。由于计算复杂度相对较低,所提出的特征可以作为基于肌电图的模式识别系统中提取频率信息的新特征。
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Novel Features for EMG Pattern Recognition Based on Higher Order Crossings
In this work, we present a novel set of higher order time domain features for surface electromyographic (EMG) pattern recognition. The proposed methods employ simple measures of frequency information extracted from EMG time series when a sequence of differencing filters is applied. Multiple EMG datasets consisting of 48 able-bodied and transradial amputee subjects performing a large variety of hand and fingers movements are used to evaluate the performance and robustness of the proposed features. The results show that these novel higher order-based features provide significantly better performance than their traditional counterparts by 3–15 % $(p < 0.05)$. The best proposed feature, higher-order myopulse percentage rate, also significantly outperformed other frequency information-based EMG features in the time and frequency domains: histogram, mean frequency, and median frequency, by 8-14%, 8-25%, and 14-35% $(p < 0.05)$, respectively. With relatively less computational complexity, the proposed features could potentially be used as new features for extracting frequency information for EMG- based pattern recognition systems.
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