Siu Ho Chit, Shah Julie A, Stirling Leia A
Department of Aeronautics and Astronautics, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USA.
Computer Science and Artificial Intelligence Lab, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USA.
Sensors (Basel). 2016 Oct 25;16(11):1782. doi: 10.3390/s16111782.
Surface electromyography (sEMG) is a technique for recording natural muscle activation signals, which can serve as control inputs for exoskeletons and prosthetic devices. Previous experiments have incorporated these signals using both classical and pattern-recognition control methods in order to actuate such devices. We used the results of an experiment incorporating grasp and release actions with object contact to develop an intent-recognition system based on Gaussian mixture models (GMM) and continuous-emission hidden Markov models (HMM) of sEMG data. We tested this system with data collected from 16 individuals using a forearm band with distributed sEMG sensors. The data contain trials with shifted band alignments to assess robustness to sensor placement. This study evaluated and found that pattern-recognition-based methods could classify transient anticipatory sEMG signals in the presence of shifted sensor placement and object contact. With the best-performing classifier, the effect of label lengths in the training data was also examined. A mean classification accuracy of 75.96% was achieved through a unigram HMM method with five mixture components. Classification accuracy on different sub-movements was found to be limited by the length of the shortest sub-movement, which means that shorter sub-movements within dynamic sequences require larger training sets to be classified correctly. This classification of user intent is a potential control mechanism for a dynamic grasping task involving user contact with external objects and noise. Further work is required to test its performance as part of an exoskeleton controller, which involves contact with actuated external surfaces.
表面肌电图(sEMG)是一种记录自然肌肉激活信号的技术,这些信号可作为外骨骼和假肢装置的控制输入。先前的实验已经使用经典和模式识别控制方法合并了这些信号,以便驱动此类装置。我们利用一个包含抓握和释放动作以及物体接触的实验结果,开发了一个基于sEMG数据的高斯混合模型(GMM)和连续发射隐马尔可夫模型(HMM)的意图识别系统。我们使用带有分布式sEMG传感器的前臂带,对从16个人收集的数据进行了测试。数据包含带偏移对齐的试验,以评估对传感器放置的鲁棒性。本研究评估并发现,基于模式识别的方法能够在传感器放置偏移和物体接触的情况下,对瞬态预期sEMG信号进行分类。对于性能最佳的分类器,还研究了训练数据中标签长度的影响。通过具有五个混合成分的一元HMM方法,实现了75.96%的平均分类准确率。发现不同子运动的分类准确率受最短子运动长度的限制,这意味着动态序列中较短的子运动需要更大的训练集才能正确分类。这种用户意图分类是涉及用户与外部物体接触和噪声的动态抓握任务的一种潜在控制机制。作为外骨骼控制器的一部分测试其性能还需要进一步的工作,这涉及与驱动的外表面接触。