IEEE Trans Neural Syst Rehabil Eng. 2017 Oct;25(10):1785-1801. doi: 10.1109/TNSRE.2017.2699598. Epub 2017 Aug 31.
Matching the dexterity, versatility, and robustness of the human hand is still an unachieved goal in bionics, robotics, and neural engineering. A major limitation for hand prosthetics lies in the challenges of reliably decoding user intention from muscle signals when controlling complex robotic hands. Most of the commercially available prosthetic hands use muscle-related signals to decode a finite number of predefined motions and some offer proportional control of open/close movements of the whole hand. Here, in contrast, we aim to offer users flexible control of individual joints of their artificial hand. We propose a novel framework for decoding neural information that enables a user to independently control 11 joints of the hand in a continuous manner-much like we control our natural hands. Toward this end, we instructed six able-bodied subjects to perform everyday object manipulation tasks combining both dynamic, free movements (e.g., grasping) and isometric force tasks (e.g., squeezing). We recorded the electromyographic and mechanomyographic activities of five extrinsic muscles of the hand in the forearm, while simultaneously monitoring 11 joints of hand and fingers using a sensorized data glove that tracked the joints of the hand. Instead of learning just a direct mapping from current muscle activity to intended hand movement, we formulated a novel autoregressive approach that combines the context of previous hand movements with instantaneous muscle activity to predict future hand movements. Specifically, we evaluated a linear vector autoregressive moving average model with exogenous inputs and a novel Gaussian process ( ) autoregressive framework to learn the continuous mapping from hand joint dynamics and muscle activity to decode intended hand movement. Our approach achieves high levels of performance (RMSE of 8°/s and ). Crucially, we use a small set of sensors that allows us to control a larger set of independently actuated degrees of freedom of a hand. This novel undersensored control is enabled through the combination of nonlinear autoregressive continuous mapping between muscle activity and joint angles. The system evaluates the muscle signals in the context of previous natural hand movements. This enables us to resolve ambiguities in situations, where muscle signals alone cannot determine the correct action as we evaluate the muscle signals in their context of natural hand movements. autoregression is a particularly powerful approach which makes not only a prediction based on the context but also represents the associated uncertainty of its predictions, thus enabling the novel notion of risk-based control in neuroprosthetics. Our results suggest that autoregressive approaches with exogenous inputs lend themselves for natural, intuitive, and continuous control in neurotechnology, with the particular focus on prosthetic restoration of natural limb function, where high dexterity is required for complex movements.
仿生学、机器人学和神经工程中,仍然难以达到人类手部的灵活性、多功能性和鲁棒性。手部假肢的一个主要限制在于,当控制复杂的机器人手时,从肌肉信号中可靠地解码用户意图具有挑战性。大多数市售的假肢手使用肌肉相关信号来解码有限数量的预定义运动,并且一些提供整个手部的打开/关闭运动的比例控制。相比之下,我们旨在为用户提供对其人工手各个关节的灵活控制。我们提出了一种用于解码神经信息的新框架,该框架使用户能够以类似于控制自然手的方式连续地独立控制手的 11 个关节。为此,我们指导六名健全的受试者执行日常物体操纵任务,这些任务结合了动态、自由运动(例如抓握)和等距力任务(例如挤压)。我们记录了前臂中手部五个外在肌肉的肌电图和肌动图活动,同时使用可跟踪手部关节的传感器化数据手套同时监测手部和手指的 11 个关节。我们不是仅仅学习从当前肌肉活动到预期手部运动的直接映射,而是制定了一种新颖的自回归方法,该方法将先前手部运动的上下文与即时肌肉活动相结合,以预测未来的手部运动。具体来说,我们评估了具有外部输入的线性向量自回归移动平均模型和新颖的高斯过程()自回归框架,以学习从手部关节动力学和肌肉活动到解码预期手部运动的连续映射。我们的方法实现了高水平的性能(均方根误差为 8°/s 和 )。至关重要的是,我们使用一组小型传感器来控制一组更大的独立致动手部自由度。这种新型欠传感器控制是通过肌肉活动和关节角度之间的非线性自回归连续映射来实现的。该系统根据先前的自然手部运动的上下文评估肌肉信号。这使我们能够在肌肉信号本身无法确定正确动作的情况下解决歧义,因为我们在自然手部运动的上下文中评估肌肉信号。自回归是一种特别强大的方法,它不仅基于上下文进行预测,而且还表示其预测的相关不确定性,从而在神经技术中实现了基于风险的新型控制概念。我们的结果表明,具有外部输入的自回归方法适合于神经技术中的自然、直观和连续控制,特别是在需要复杂运动的高灵巧性的自然肢体功能的假肢恢复中。