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Bayesian Filtering of Surface EMG for Accurate Simultaneous and Proportional Prosthetic Control

机译:表面肌电的贝叶斯滤波可实现精确的同时和比例修复控制

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摘要

The amplitude of the surface EMG (sEMG) is commonly estimated by rectification or other nonlinear transformations, followed by smoothing (low-pass linear filtering). Although computationally efficient, this approach leads to an estimation accuracy with a limited theoretical signal-to-noise ratio (SNR). Since sEMG amplitude is one of the most relevant features for myoelectric control, its estimate has become one of the limiting factors for the performance of myoelectric control applications, such as powered prostheses. In this study, we present a recursive nonlinear estimator of sEMG amplitude based on Bayesian filtering. Furthermore, we validate the advantage of the proposed Bayesian filter over the conventional linear filters through an online simultaneous and proportional control (SPC) task, performed by eight able-bodied subjects and three below-elbow limb deficient subjects. The results demonstrated that the proposed Bayesian filter provides significantly more accurate SPC, particularly for the patients, when compared with conventional linear filters. This result presents a major step toward accurate prosthetic control for advanced multi-function prostheses.
机译:表面肌电图(sEMG)的幅度通常通过整流或其他非线性变换估算,然后进行平滑处理(低通线性滤波)。尽管计算效率高,但是这种方法在理论信噪比(SNR)有限的情况下仍可达到估计精度。由于sEMG振幅是与肌电控制最相关的功能之一,因此其估计值已成为影响肌电控制应用(如动力假体)性能的限制因素之一。在这项研究中,我们提出了基于贝叶斯滤波的sEMG幅度的递归非线性估计器。此外,我们通过在线同时和比例控制(SPC)任务验证了提出的贝叶斯滤波器相对于传统线性滤波器的优势,该任务由八个身体健全的受试者和三个肘下肢功能不全的受试者执行。结果表明,与传统的线性滤波器相比,提出的贝叶斯滤波器可提供更准确的SPC,特别是对患者而言。这一结果为高级多功能假体的精确假体控制迈出了重要一步。

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