A Spatial Feature Extraction Method for Enhancing Upper Limb Motion Intent Prediction in EMG-PR System.

Boxing Peng, Haoshi Zhang, Xiangxin Li, Yue Zheng, Guanglin Li
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Abstract

High-Density Surface Electromyography (HD-sEMG) enriches motion intention pattern recognition systems by providing more spatial information. Multichannel linear descriptors (MLD) could provide a comprehensive description of the overall state characteristics within the muscle regions. In this study, an MLD-based spatial feature extraction method was proposed to capture differences and correlations in various muscle regions during movement, ultimately enhancing the system's classification accuracy. The performance of the feature extraction method was compared with traditional time domain feature extraction method under various classifiers and different movement types. The results show that employing the proposed method with the spatial features improves the classification error rates of combined movements from 11.14% to 7.28%, and better adaptability for all classifiers utilized in this study, which shows the effect of utilization of spatial information in different muscle regions.

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一种增强EMG-PR系统上肢运动意图预测的空间特征提取方法。
高密度表面肌电图(HD-sEMG)通过提供更多的空间信息来丰富运动意图模式识别系统。多通道线性描述符(MLD)可以全面描述肌肉区域内的整体状态特征。本研究提出了一种基于mld的空间特征提取方法,捕捉运动过程中各个肌肉区域的差异和相关性,最终提高系统的分类准确率。在不同分类器和不同运动类型下,比较了特征提取方法与传统时域特征提取方法的性能。结果表明,结合空间特征的方法将组合动作的分类错误率从11.14%提高到7.28%,并且对所使用的所有分类器具有更好的适应性,说明了空间信息在不同肌肉区域的利用效果。
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