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Conditioning and Sampling Issues of EMG Signals in Motion Recognition of Multifunctional Myoelectric Prostheses

机译:多功能肌电假体在运动识别中的肌电信号调节与采样问题

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Historically, the investigations of electromyography (EMG) pattern recognition-based classification of intentional movements for control of multifunctional prostheses have adopted the filter cut-off frequency and sampling rate that are commonly used in EMG research fields. In practical implementation of a multifunctional prosthesis control, it is desired to have a higher high-pass cut-off frequency to reduce more motion artifacts and to use a lower sampling rate to save the data processing time and memory of the prosthesis controller. However, it remains unclear whether a high high-pass cut-off frequency and a low-sampling rate still preserve sufficient neural control information for accurate classification of movements. In this study, we investigated the effects of high-pass cut-off frequency and sampling rate on accuracy in identifying 11 classes of arm and hand movements in both able-bodied subjects and arm amputees. Compared to a 5-Hz high-pass cut-off frequency, excluding the EMG components below 60 Hz decreased the average accuracy of 0.1% in classifying the 11 movements across able-bodied subjects and increased the average accuracy of 0.1 and 0.4% among the transradial (TR) and shoulder disarticulation (SD) amputees, respectively. Using a 500 Hz instead of a 1-kHz sampling rate, the average classification accuracy only dropped about 2.0% in arm amputees. The combination of sampling rate and high-pass cut-off frequency of 500 and 60 Hz only resulted in about 2.3% decrease in average accuracy for TR amputees and 0.4% decrease for SD amputees in comparison to the generally used values of 1 kHz and 5 Hz. These results suggest that the combination of sampling rate of 500 Hz and high-pass cut-off frequency of 60 Hz should be an optimal selection in EMG recordings for recognition of different arm movements without sacrificing too much of classification accuracy which can also remove most of motion artifacts and power-line interferences for improving the performance of myoelectric prosthesis control.
机译:历史上,基于肌电图(EMG)模式识别的意图运动分类以控制多功能假体的研究采用了EMG研究领域中常用的滤波器截止频率和采样率。在多功能假体控制的实际实施中,期望具有较高的高通截止频率以减少更多的运动伪影,并使用较低的采样率以节省数据处理时间和假体控制器的存储器。但是,仍不清楚高的高通截止频率和低的采样率是否仍保留了足够的神经控制信息来对运动进行精确分类。在这项研究中,我们调查了高通截止频率和采样率对准确性的影响,以确定身体健全的受试者和手臂截肢者的11类手臂和手部动作。与5 Hz高通截止频率相比,排除低于60 Hz的EMG分量会降低在对健全主体进行11次运动分类时的平均准确度,降低了0.1%,而对10位健康受试者的平均运动准确度则提高了0.1%和0.4%。 radi动脉(TR)和肩关节脱节(SD)截肢者。使用500 Hz而不是1 kHz的采样率,手臂被截肢者的平均分类准确率仅下降了约2.0%。与通常使用的1 kHz和5的值相比,采样率和500和60 Hz的高通截止频率的组合仅导致TR被截肢者的平均准确度降低约2.3%,SD被截肢者的平均准确度降低0.4%。赫兹。这些结果表明,500 Hz的采样率和60 Hz的高通截止频率的组合应该是EMG记录中识别不同手臂动作的最佳选择,而又不会牺牲太多的分类精度,这也可以消除大部分运动伪影和电源线干扰,以改善肌电假体控制的性能。

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