State-of-the-art motorized hand prostheses are endowed with actuators able to provide independent and proportional control of as many as six degrees of freedom (DOFs). The control signals are derived from residual electromyographic (EMG) activity, recorded concurrently from relevant forearm muscles. Nevertheless, the functional mapping between forearm EMG activity and hand kinematics is only known with limited accuracy. Therefore, no robust method exists for the reliable computation of control signals for the independent and proportional actuation of more than two DOFs. A common approach to deal with this limitation is to pre-program the prostheses for the execution of a restricted number of behaviors (e.g., pinching, grasping, and wrist rotation) that are activated by the detection of specific EMG activation patterns. However, this approach severely limits the range of activities users can perform with the prostheses during their daily living. In this work, we introduce a novel method, based on a long short-term memory (LSTM) network, to continuously map forearm EMG activity onto hand kinematics. Critically, unlike previous work, which often focuses on simple and highly controlled motor tasks, we tested our method on a dataset of activities of daily living (ADLs): the KIN-MUS UJI dataset. To the best of our knowledge, ours is the first reported work on the prediction of hand kinematics that uses this challenging dataset. Remarkably, we show that our network is able to generalize to novel untrained ADLs. Our results suggest that the presented method is suitable for the generation of control signals for the independent and proportional actuation of the multiple DOFs of state-of-the-art hand prostheses.
翻译:最先进的机动手假肢配有能够独立和成比例控制多达6度自由(DOFs)的控制器。控制信号来自相关前臂肌肉同时记录下来的残余电磁学(EMG)活动。然而,前臂电磁学活动和手动运动之间的功能映射只有有限的准确性才为人所知。因此,没有可靠的计算UF2以上独立和成比例引爆的控制信号的可靠方法。处理这一限制的一个共同方法是,为执行有限的行为(例如,抓取、握取和手腕旋转)预编方案。但是,前臂电磁学活动与手动运动之间的功能映射功能,但这种方法严重限制了用户在日常生活中使用假肢的活动范围。在这项工作中,我们采用了一种基于长期短期记忆(LSTM)网络的新型新颖方法,持续将EMG活动绘制在手动直径直径直线图上,而我们目前掌握的直径直径直径直径直径直径直径直的MUFML活动数据则不同于我们以往掌握的数据。