IEEE Trans Neural Syst Rehabil Eng. 2021;29:1089-1098. doi: 10.1109/TNSRE.2021.3087135. Epub 2021 Jun 15.
Detecting human movement intentions is fundamental to neural control of robotic exoskeletons, as it is essential for achieving seamless transitions between different locomotion modes. In this study, we enhanced a muscle synergy-inspired method of locomotion mode identification by fusing the electromyography data with two types of data from wearable sensors (inertial measurement units), namely linear acceleration and angular velocity. From the finite state machine perspective, the enhanced method was used to systematically identify 2 static modes, 7 dynamic modes, and 27 transitions among them. In addition to the five broadly studied modes (level ground walking, ramps ascent/descent, stairs ascent/descent), we identified the transition between different walking speeds and modes of ramp walking at different inclination angles. Seven combinations of sensor fusion were conducted, on experimental data from 8 able-bodied adult subjects, and their classification accuracy and prediction time were compared. Prediction based on a fusion of electromyography and gyroscope (angular velocity) data predicted transitions earlier and with higher accuracy. All transitions and modes were identified with a total average classification accuracy of 94.5% with fused sensor data. For nearly all transitions, we were able to predict the next locomotion mode 300-500ms prior to the step into that mode.
检测人类运动意图是神经控制机器人外骨骼的基础,因为它对于实现不同运动模式之间的无缝过渡至关重要。在这项研究中,我们通过融合肌电数据和两种来自可穿戴传感器(惯性测量单元)的数据(线性加速度和角速度),增强了一种基于肌肉协同的运动模式识别方法。从有限状态机的角度来看,该增强方法系统地识别了 2 种静态模式、7 种动态模式和它们之间的 27 种转换。除了广泛研究的 5 种模式(平地行走、斜坡上下坡、楼梯上下坡)之外,我们还识别了不同行走速度和不同倾斜角度下斜坡行走模式之间的转换。我们对 8 名健康成年受试者的实验数据进行了 7 种传感器融合组合,并比较了它们的分类准确性和预测时间。基于肌电和陀螺仪(角速度)数据融合的预测能够更早且更准确地预测转换。使用融合传感器数据,所有的转换和模式都被识别出来,平均分类准确率为 94.5%。对于几乎所有的转换,我们都能够在进入下一个运动模式之前 300-500ms 预测到下一个运动模式。