Adaptive Filter for Biosignal-Driven Force Controls Preserves Predictive Powers of sEMG.

Marek Sierotowicz, Marc-Anton Scheidl, Claudio Castellini
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Abstract

Electromyographic controls based on machine learning rely on the stability and repeatability of signals related to muscular activity. However, such algorithms are prone to several issues, making them non-viable in certain applications with low tolerances for delays and signal instability, such as exoskeleton control or teleimpedance. These issues can become dramatic whenever, e.g., muscular activity is present not only when the user is trying to move but also for mere gravity compensation, which generally becomes more prominent the more proximal a muscle is. A substantial part of this instability is attributed to electromyography's inherent heteroscedasticity. In this study, we introduce and characterize an adaptive filter for sEMG features in such applications, which automatically adjusts its own cutoff frequency to suit the current movement intention. The adaptive filter is tested offline and online on a regression-based joint torque predictor. Both the offline and the online test show that the adaptive filter leads to more accurate prediction in terms of root mean square error when compared to the unfiltered prediction and higher responsiveness of the signal in terms of lag when compared to the output of a conventional low-pass filter.

用于生物信号驱动力控制的自适应滤波器保留了sEMG的预测能力。
基于机器学习的肌电图控制依赖于与肌肉活动相关的信号的稳定性和可重复性。然而,这种算法容易出现几个问题,使得它们在某些延迟和信号不稳定性容限较低的应用中不可行,例如外骨骼控制或远程阻抗。每当出现肌肉活动时,这些问题就会变得引人注目,例如,不仅当用户试图移动时,而且仅仅是为了重力补偿,通常肌肉越近,重力补偿就会变得越突出。这种不稳定性的很大一部分归因于肌电图固有的异方差。在这项研究中,我们介绍并描述了一种用于此类应用中sEMG特征的自适应滤波器,该滤波器自动调整自己的截止频率以适应当前的运动意图。自适应滤波器在基于回归的联合转矩预测器上进行了离线和在线测试。离线和在线测试都表明,与未滤波的预测相比,自适应滤波器在均方根误差方面导致更准确的预测,并且与传统低通滤波器的输出相比,在滞后方面导致信号的更高响应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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