Lara J, Paskaranandavadivel N, Cheng L K
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:4787-4790. doi: 10.1109/EMBC44109.2020.9175210.
Control schemes that rely on electromyography (EMG) pattern classification have shown to improve their accuracy when coupled with an increasing number of electrodes. In this study, HD-EMG signals from the hand and forearm of volunteers performing a series of movements were recorded. Different amounts of input EMG channels were selected and time-domain features were extracted to train several SVM classifiers. Detailed comparisons were made to evaluate the impact of electrode count and feature selection over the overall classification accuracy of 17 different movements. The increased resolution achieved from higher electrode counts yielded significant improvements in classification accuracy; however, these improvements were marginal when the number of channels utilized surpassed 100 electrodes.Clinical relevance- Pattern-based EMG classification is a widely used control method for a range of prosthetic devices and robotic interfaces. This work studies the optimal number of simultaneous HD-EMG channels and features that must be considered for accurate myoelectric control using this method.
依赖肌电图(EMG)模式分类的控制方案已表明,当与越来越多的电极结合使用时,其准确性会提高。在本研究中,记录了志愿者在进行一系列动作时手部和前臂的高密度肌电图(HD-EMG)信号。选择了不同数量的输入肌电图通道,并提取时域特征以训练多个支持向量机(SVM)分类器。进行了详细比较,以评估电极数量和特征选择对17种不同动作的总体分类准确性的影响。更高的电极数量所实现的分辨率提高显著提高了分类准确性;然而,当使用的通道数量超过100个电极时,这些改进很微小。临床相关性——基于模式的肌电图分类是一系列假肢装置和机器人接口广泛使用的控制方法。这项工作研究了使用该方法进行精确肌电控制时必须考虑的同步HD-EMG通道和特征的最佳数量。