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Robustness of Frequency Division Technique for Online Myoelectric Pattern Recognition against Contraction-Level Variation

机译:频分技术在针对收缩水平变化的在线肌电模式识别中的鲁棒性

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摘要

Contraction-level invariant surface electromyography pattern recognition introduces the decrease of training time and decreases the limitation of clinical prostheses. This study intended to examine whether a signal pre-processing method named frequency division technique (FDT) for online myoelectric pattern recognition classification is robust against contraction-level variation, and whether this pre-processing method has an advantage over traditional time-domain pattern recognition techniques even in the absence of muscle contraction-level variation. Eight healthy and naïve subjects performed wrist contractions during two degrees of freedom goal-oriented tasks, divided in three groups of type I, type II, and type III. The performance of these tasks, when the two different methods were used, was quantified by completion rate, completion time, throughput, efficiency, and overshoot. The traditional and the FDT method were compared in four runs, using combinations of normal or high muscle contraction level, and the traditional method or FDT. The results indicated that FDT had an advantage over traditional methods in the tested real-time myoelectric control tasks. FDT had a much better median completion rate of tasks (95%) compared to the traditional method (77.5%) among non-perfect runs, and the variability in FDT was strikingly smaller than the traditional method (p < 0.001). Moreover, the FDT method outperformed the traditional method in case of contraction-level variation between the training and online control phases (p = 0. 005 for throughput in type I tasks with normal contraction level, p = 0.006 for throughput in type II tasks, and p = 0.001 for efficiency with normal contraction level of all task types). This study shows that FDT provides advantages in online myoelectric control as it introduces robustness over contraction-level variations.
机译:收缩水平不变的表面肌电图模式识别可减少训练时间并减少临床假体的局限性。这项研究旨在检查用于在线肌电模式识别分类的名为频分技术(FDT)的信号预处理方法是否对收缩水平变化具有鲁棒性,并且这种预处理方法是否优于传统的时域模式识别技术,即使没有肌肉收缩水平的变化。八名健康且天真的受试者在以两个自由度为目标的任务中执行了腕部收缩,分为I型,II型和III型三组。当使用两种不同的方法时,这些任务的性能通过完成率,完成时间,吞吐量,效率和过冲来量化。使用正常或高肌肉收缩水平的组合以及传统方法或FDT,在四次运行中比较了传统方法和FDT方法。结果表明,在测试的实时肌电控制任务中,FDT优于传统方法。与传统方法(77.5%)相比,FDT在非完美运行中的任务完成率中位数要好得多(95%),并且FDT的变异性明显小于传统方法(p <0.001)。此外,在训练阶段和在线控制阶段之间的收缩水平发生变化的情况下,FDT方法优于传统方法(对于正常收缩水平的I类任务,吞吐量为p = 0.00;对于II类任务的吞吐量,p = 0.006;对于所有任务类型的正常收缩水平,效率为p = 0.001)。这项研究表明,FDT引入了优于收缩水平变化的鲁棒性,因此在在线肌电控制方面具有优势。

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