基于大腿残端肌电图的周期运动模型识别

Lingling Chen, Zekun Yang, Cun Zhang, Jie Wang, Yaying Li
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引用次数: 1

摘要

针对膝上假体控制中的连续运动模式识别问题,提出了一种基于大腿残端肌电图的周期运动模型识别方法。首先,在分析臀大肌表面肌电图的基础上,提出了基于运动窗口的多特征切片检测算法,提取了一个运动周期内的多特征切片;其次,采用随机森林算法识别各截面的运动模式;最后,提出了一种基于二叉树的周期模式识别方法,对各部分的识别结果进行融合。实验结果表明,采用多特征截面融合后,识别精度提高8%左右。实现了周期运动(平走、上下楼)和非周期运动(坐立)的模式识别,识别精度和实时性明显提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Periodic Locomotion-model Recognition Based on Electromyography of Thigh Stump
In view of the problem of continuous movement pattern recognition for above-knee prostheses control, a periodic locomotion-model recognition method was proposed based on electromyography of thigh stump. Firstly, after analyzing the surface electromyography of gluteus maximus, multi-feature sections detection algorithm was proposed based on moving windows, and multi-feature sections within a motion cycle were extracted. Secondly, random forest algorithm was applied to recognize the movement pattern of each section. Finally, a periodic pattern recognition method based on binary tree was proposed to fuse the recognition results of each section. The experiment results indicated that this method improved the recognition accuracy by about 8% with multi-feature sections fusion. The pattern recognition of periodic motion (flat walking, upstairs, and downstairs) and aperiodic motion (sitting and standing) were realized, and the recognition accuracy and real-time performance have improved obviously.
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