IEEE Trans Neural Syst Rehabil Eng. 2018 Sep;26(9):1745-1755. doi: 10.1109/TNSRE.2018.2861774. Epub 2018 Jul 31.
Dexterous upper limb myoelectric prostheses can, to some extent, restore the motor functions lost after an amputation. However, ensuring the reliability of myoelectric control is still an open challenge. In this paper, we propose a classification method that exploits the regularity in muscle activation patterns (uniform scaling) across different force levels within a given movement class. This assumption leads to a simple training procedure, using training data collected at single contraction intensity for each movement class. The proposed method was compared to the widely accepted benchmark [linear discriminant analysis (LDA) classifier] using off-line and online evaluation. The off-line classification errors obtained with the new method were either lower or higher than LDA depending upon the chosen feature set. In the online evaluation, the new classification method was operated using amplitude-EMG features and compared to the state-of-the-art LDA classifier combined with the time domain feature set. The online evaluation was performed in 11 able-bodied and one amputee subject using a set of four functional tasks mimicking daily-life activities. The tasks assessed the dexterity (e.g., switching between functions) and robustness of control (e.g., handling heavy objects). With the new classification scheme, the amputee performed better in all functional tasks, whereas the able-bodied subjects performed significantly better in three out of four functional tasks. Overall, the novel method outperformed the state-of-the-art approach (LDA) while utilizing less training data and a smaller feature set. The proposed method is, therefore, a simple but effective and robust classification scheme, convenient for online implementation and clinical use.
灵巧上肢肌电假肢在一定程度上可以恢复截肢后丧失的运动功能。然而,确保肌电控制的可靠性仍然是一个未解决的挑战。在本文中,我们提出了一种分类方法,该方法利用了给定运动类内不同力水平下肌肉激活模式的规律性(均匀缩放)。这一假设导致了一种简单的训练过程,使用在每个运动类的单个收缩强度下收集的训练数据进行训练。该方法与广泛接受的基准[线性判别分析(LDA)分类器]进行了离线和在线评估。使用新方法获得的离线分类误差要么低于,要么高于 LDA,这取决于所选特征集。在线评估使用幅度肌电图特征并与最先进的 LDA 分类器(结合时域特征集)进行比较。在线评估在 11 名健全人和 1 名截肢者中进行,使用一套模拟日常活动的四个功能任务。这些任务评估了灵巧性(例如,在功能之间切换)和控制的稳健性(例如,处理重物)。使用新的分类方案,截肢者在所有功能任务中表现更好,而健全者在四个功能任务中的三个任务中表现明显更好。总体而言,新方法在使用更少的训练数据和更小的特征集的情况下优于最先进的方法(LDA)。因此,该方法是一种简单但有效、稳健的分类方案,便于在线实现和临床应用。