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Extracting Signals Robust to Electrode Number and Shift for Online Simultaneous and Proportional Myoelectric Control by Factorization Algorithms

机译:基于分解算法的在线同时和比例肌电控制信号的鲁棒性和电极移位的信号提取

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Previous research proposed the extraction of myoelectric control signals by linear factorization of multi-channel electromyogram (EMG) recordings from forearm muscles. This paper further analyses the theoretical basis for dimensionality reduction in high-density EMG signals from forearm muscles. Moreover, it shows that the factorization of muscular activation patterns in weights and activation signals by non-negative matrix factorization (NMF) is robust with respect to the channel configuration from where the EMG signals are obtained. High-density surface EMG signals were recorded from the forearm muscles of six individuals. Weights and activation signals extracted offline from 10 channel configurations with varying channel numbers (6, 8, 16, 192 channels) were highly similar. Additionally, the method proved to be robust against electrode shifts in both transversal and longitudinal direction with respect to the muscle fibers. In a second experiment, six subjects directly used the activation signals extracted from high-density EMG for online goal-directed control tasks involving simultaneous and proportional control of two degrees-of-freedom of the wrist. The synergy weights for this control task were extracted from a reference configuration and activation signals were calculated online from the reference configuration as well as from the two shifted configurations, simulating electrode shift. Despite the electrode shift, the task completion rate, task completion time, and execution efficiency were generally not statistically different among electrode configurations. Online performances were also mostly similar when using either 6, 8, or 16 EMG channels. The robustness of the method to the number and location of channels, proved both offline and online, indicates that EMG signals recorded from forearm muscles can be approximated as linear instantaneous mixtures of activation signals and justifies the use of linear factorization algorithms for extracting, in a minima- ly supervised way, control signals for simultaneous multi-degree of freedom prosthesis control.
机译:先前的研究提出了通过对前臂肌肉的多通道肌电图(EMG)记录进行线性分解来提取肌电控制信号的方法。本文进一步分析了前臂肌肉高密度肌电信号降维的理论基础。此外,它表明,通过非负矩阵分解(NMF)对权重和激活信号进行肌肉激活模式的因子分解对于从中获取EMG信号的通道配置而言是可靠的。从六个人的前臂肌肉记录了高密度表面肌电信号。从具有不同通道号(6、8、16、192个通道)的10个通道配置中离线提取的权重和激活信号非常相似。另外,该方法被证明对于抵抗相对于肌肉纤维在横向和纵向上的电极移位都是鲁棒的。在第二个实验中,六名受试者将从高密度肌电图提取的激活信号直接用于在线目标定向控制任务,该任务涉及同时和成比例地控制手腕两个自由度。从参考配置中提取了此控制任务的协同权重,并从参考配置以及两个转换后的配置在线模拟了电极转换,计算了激活信号。尽管存在电极偏移,但是电极配置之间的任务完成率,任务完成时间和执行效率通常在统计上没有差异。使用6、8或16个EMG频道时,在线表演也大致相似。该方法对通道数量和位置的鲁棒性(已离线和在线验证)表明,从前臂肌肉记录的EMG信号可以近似为激活信号的线性瞬时混合,并证明了使用线性分解算法进行提取的合理性。最小监督方式,用于同时进行多自由度假体控制的控制信号。

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