IEEE Trans Neural Syst Rehabil Eng. 2014 May;22(3):501-10. doi: 10.1109/TNSRE.2013.2278411. Epub 2013 Aug 26.
We propose an approach for online simultaneous and proportional myoelectric control of two degrees-of-freedom (DoF) of the wrist, using surface electromyographic signals. The method is based on the nonnegative matrix factorization (NMF) of the wrist muscle activation to extract low-dimensional control signals translated by the user into kinematic variables. This procedure does not need a training set of signals for which the kinematics is known (labeled dataset) and is thus unsupervised (although it requires an initial calibration without labeled signals). The estimated control signals using NMF are used to directly control two DoFs of wrist. The method was tested on seven subjects with upper limb deficiency and on seven able-bodied subjects. The subjects performed online control of a virtual object with two DoFs to achieve goal-oriented tasks. The performance of the two subject groups, measured as the task completion rate, task completion time, and execution efficiency, was not statistically different. The approach was compared, and demonstrated to be superior to the online control by the industrial state-of-the-art approach. These results show that this new approach, which has several advantages over the previous myoelectric prosthetic control systems, has the potential of providing intuitive and dexterous control of artificial limbs for amputees.
我们提出了一种使用表面肌电信号在线同时进行双自由度(DoF)腕部比例肌电控制的方法。该方法基于腕部肌肉激活的非负矩阵分解(NMF),以提取用户转换为运动学变量的低维控制信号。该过程不需要具有已知运动学的信号训练集(标记数据集),因此是无监督的(尽管它需要没有标记信号的初始校准)。使用 NMF 估计的控制信号用于直接控制两个腕部 DoF。该方法在 7 名上肢缺失患者和 7 名健康受试者上进行了测试。受试者使用两个 DoF 在线控制虚拟对象以完成面向目标的任务。两组受试者的性能(以任务完成率、任务完成时间和执行效率衡量)在统计学上没有差异。该方法与在线控制的工业最先进方法进行了比较,结果表明该新方法优于以前的肌电假肢控制系统,有可能为截肢者提供对假肢的直观和灵巧控制。