School of Mechanical Engineering, Nantong University, Nantong 226019, China.
School of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.
Sensors (Basel). 2023 Aug 4;23(15):6939. doi: 10.3390/s23156939.
Pattern recognition of lower-limb movements based on mechanomyography (MMG) signals has a certain application value in the study of wearable rehabilitation-training devices. In this paper, MMG feature selection methods based on a chameleon swarm algorithm (CSA) and a grasshopper optimization algorithm (GOA) are proposed for the pattern recognition of knee and ankle movements in the sitting and standing positions. Wireless multichannel MMG acquisition systems were designed and used to collect MMG movements from four sites on the subjects thighs. The relationship between the threshold values and classification accuracy was analyzed, and comparatively high recognition rates were obtained after redundant information was eliminated. When the threshold value rose, the recognition rates from the CSA fluctuated within a small range: up to 88.17% (sitting position) and 90.07% (standing position). However, the recognition rates from the GOA drop dramatically when increasing the threshold value. The comparison results demonstrated that using a GOA consumes less time and selects fewer features, while a CSA gives higher recognition rates of knee and ankle movements.
基于肌电信号(MMG)的下肢运动模式识别在可穿戴康复训练设备的研究中具有一定的应用价值。本文提出了一种基于变色龙群算法(CSA)和蚱蜢优化算法(GOA)的 MMG 特征选择方法,用于识别坐姿和站姿时的膝关节和踝关节运动模式。设计了无线多通道 MMG 采集系统,用于从受试者大腿的四个部位采集 MMG 运动信号。分析了阈值与分类准确率之间的关系,剔除冗余信息后,获得了较高的识别率。当阈值升高时,CSA 的识别率在较小范围内波动:坐姿可达 88.17%,站位可达 90.07%。然而,GOA 的识别率在增加阈值时会急剧下降。比较结果表明,使用 GOA 消耗的时间更少,选择的特征更少,而 CSA 则能获得更高的膝关节和踝关节运动识别率。