Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, China.
International Engineering Institute, Tianjin University, Tianjin 300072, China.
Sensors (Basel). 2021 Sep 19;21(18):6291. doi: 10.3390/s21186291.
Locomotion recognition and prediction is essential for real-time human-machine interactive control. The integration of electromyography (EMG) with mechanical sensors could improve the performance of locomotion recognition. However, the potential of EMG in motion prediction is rarely discussed. This paper firstly investigated the effect of surface EMG on the prediction of locomotion while integrated with inertial data. We collected EMG signals of lower limb muscle groups and linear acceleration data of lower limb segments from ten healthy participants in seven locomotion activities. Classification models were built based on four machine learning methods-support vector machine (SVM), k-nearest neighbor (KNN), artificial neural network (ANN), and linear discriminant analysis (LDA)-where a major vote strategy and a content constraint rule were utilized for improving the online performance of the classification decision. We compared four classifiers and further investigated the effect of data fusion on the online locomotion classification. The results showed that the SVM model with a sliding window size of 80 ms achieved the best recognition performance. The fusion of EMG signals does not only improve the recognition accuracy of steady-state locomotion activity from 90% (using acceleration data only) to 98% (using data fusion) but also enables the prediction of the next steady locomotion (∼370 ms). The study demonstrates that the employment of EMG in locomotion recognition could enhance online prediction performance.
运动识别和预测对于实时人机交互控制至关重要。肌电图(EMG)与机械传感器的集成可以提高运动识别的性能。然而,EMG 在运动预测中的潜力很少被讨论。本文首先研究了表面 EMG 与惯性数据集成对运动预测的影响。我们从 10 名健康参与者的 7 种运动活动中采集了下肢肌肉群的 EMG 信号和下肢段的线性加速度数据。基于四种机器学习方法——支持向量机(SVM)、k-最近邻(KNN)、人工神经网络(ANN)和线性判别分析(LDA)——构建了分类模型,其中采用主要投票策略和内容约束规则来提高分类决策的在线性能。我们比较了四种分类器,并进一步研究了数据融合对在线运动分类的影响。结果表明,采用 80ms 滑动窗口大小的 SVM 模型实现了最佳的识别性能。EMG 信号的融合不仅将仅使用加速度数据时的稳态运动活动识别准确率从 90%提高到 98%(使用数据融合),还能够预测下一个稳态运动(约 370ms)。该研究表明,在运动识别中使用 EMG 可以增强在线预测性能。