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An Investigation Into Time Domain Features of Surface Electromyography to Estimate the Elbow Joint Angle

机译:用于估计肘关节角度的表面肌电图的时域特征研究

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In literature, it is well established that feature extraction and pattern classification algorithms play essential roles in accurate estimation of the elbow joint angle. The problem with these algorithms, however, is that they require a learning stage to recognize the pattern as well as capture the variability associated with every subject when estimating the elbow joint angle. As EMG signals can be used to represent motion, we developed a non-pattern recognition method to estimate the elbow joint angle based on twelve time-domain features extracted from EMG signals recorded from bicep muscles alone. The extracted features were smoothed using a second order Butterworth low pass filter to produce the estimation. The accuracy of the estimated angles was evaluated by using the Pearson’s Correlation Coefficient (PCC) and Root Mean Square Error (RMSE).The regression parameters (Euclidean distance, R^2 and slope) were calculated to observe the response of the features to the elbow-joint angle. From the investigation, we found, in the period of motion 10s, MYOP features have the best accuracy: 0.97±0.02 (Mean±SD) and 11.37±3.04? (Mean±SD) for correlation coefficient and RMSE respectively. MYOP features also showed the highest R^2 and slope value 0.986±0.0083 (Mean±SD) and 0.746±0.17 (Mean±SD) respectively for flexion and extension motion and all periods of motion.
机译:在文献中,众所周知,特征提取和模式分类算法在准确估计肘关节角度中起着至关重要的作用。但是,这些算法的问题在于,它们需要一个学习阶段来识别模式,并在估计肘关节角度时捕获与每个对象相关的可变性。由于EMG信号可用于表示运动,因此我们开发了一种非模式识别方法,可基于仅从二头肌记录的EMG信号中提取的十二个时域特征来估计肘关节角度。使用二阶Butterworth低通滤波器对提取的特征进行平滑处理以产生估计值。利用皮尔逊相关系数(PCC)和均方根误差(RMSE)来评估估计角度的准确性,并计算回归参数(欧几里德距离,R ^ 2和斜率)来观察特征对特征的响应。肘关节角度。从调查中我们发现,在运动的10s期间,MYOP功能具有最高的准确性:0.97±0.02(Mean±SD)和11.37±3.04? (Mean±SD)分别为相关系数和RMSE。 MYOP的特征还表明,在屈伸运动和所有运动周期中,R ^ 2和斜率值分别最高,分别为0.986±0.0083(Mean±SD)和0.746±0.17(Mean±SD)。

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