Can Multi-DoF Training Improve Robustness of Muscle Synergy Inspired Myocontrollers?

Dennis Yeung, D. Farina, I. Vujaklija
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引用次数: 1

Abstract

Non-negative Matrix Factorization (NMF) has been effective in extracting commands from surface electromyography (EMG) for the control of upper-limb prostheses. This approach enables Simultaneous and Proportional Control (SPC) over multiple degrees-of-freedom (DoFs) in a minimally supervised way. Here, like with other myoelectric approaches, robustness remains essential for clinical adoption, with device donning/doffing being a known cause for performance degradation. Previous research has demonstrated that NMF-based myocontrollers, trained on just single-DoF activations, permit a certain degree of user adaptation to a range of disturbances. In this study, we compare this traditional NMF controller with its sparsity constrained variation that allows initialization using both single and combined-DoF activations (NMF-C). The evaluation was done on 12 able bodied participants through a set of online target-reaching tests. Subjects were fitted with an 8-channel bipolar EMG setup, which was shifted by 1cm in both transversal directions throughout the experiments without system retraining. In the baseline condition NMF performed somewhat better than NMFC, but it did suffer more following the electrode repositioning, making the two perform on par. With no significant difference present across the conditions, results suggest that there is no immediate advantage from the naïve inclusion of more comprehensive training sets to the classic synergy-inspired implementation of SPC.
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多自由度训练能提高肌肉协同激发的肌控制器的稳健性吗?
非负矩阵分解(NMF)是一种有效的从肌表电(EMG)中提取指令用于上肢假肢控制的方法。这种方法可以在最小监督的情况下实现多个自由度的同步和比例控制(SPC)。在这里,与其他肌电方法一样,鲁棒性对于临床应用仍然至关重要,因为设备穿脱是导致性能下降的已知原因。先前的研究表明,基于nmf的肌控制器,只接受单自由度激活的训练,允许用户在一定程度上适应一系列干扰。在这项研究中,我们将这种传统的NMF控制器与它的稀疏性约束变量进行了比较,后者允许使用单个和组合dof激活(NMF- c)进行初始化。通过一组在线目标达到测试,对12名身体健全的参与者进行了评估。在实验过程中,受试者被安装了8通道双极肌电图装置,该装置在两个横向方向上移动了1cm,没有进行系统再训练。在基线条件下,NMF的表现略好于NMFC,但在电极重新定位后,NMF确实受到了更多的影响,使两者的表现相当。在不同条件下没有显着差异,结果表明,naïve包含更全面的训练集与经典的协同启发的SPC实现没有直接的优势。
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