基于肌电图的支持向量机分类器辅助机械臂控制方案

L. Liao, Y. Tseng, H. Chiang, Wei-Yen Wang
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引用次数: 11

摘要

建立一种合适的高精度控制技术已成为机器人实现拟人功能的核心问题。肌电图(electromyography, EMG)方法在机械臂控制方案中通过调节信号来接近人体的各种运动,尤其在辅助机器人中越来越受欢迎。在本研究中,采用基于肌电图的分类方法来控制辅助机器人手臂,并在人类手臂运动中进行交互。该系统基于支持向量机(SVM)实现;它根据肱桡肌、肱二头肌和前三角肌记录的肌电图信号作为输入特征,对上肢运动进行分类。该方法可识别六类人体手臂运动,分类结果可通过远程传输控制辅助机器人模拟人体手臂运动。利用两名受试者5秒内的72段肌电信号对所提出的分类方法进行了性能评价。基于所选择的每块被测肌肉的肌电特征,整体准确率可以达到94%。结果表明,根据不同肌束记录的肌电波形形态进行特征选择的重要性。通过对所提方法的性能进行定量评价,表明该方法能够以较高的准确率实现对辅助机械臂的远程控制。
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EMG-based Control Scheme with SVM Classifier for Assistive Robot Arm
Establishing an appropriate control technique with high accuracy has become the central issue for robotic applications to achieve anthropomorphic functions. The electromyography (EMG) method, which approaches various human motions by adjusting signals in the manipulator control scheme, is especially gaining popularity among assistive robotics. In this study, an EMG-based classification method is incorporated to control an assistive robot arm and perform interaction in human arm movements. The system is implemented based on a support-vector machine (SVM); it classifies motions of upper human limbs according to EMG signals recorded from the brachioradialis, the biceps and the anterior deltoid as the input features. With the proposed method, six categories of human arm movements can be identified, and the classification results can thus be remotely transmitted to control an assistive robot to mimic motions of the human arm. The performance of the proposed classification method was evaluated using 72 segments in 5 second EMG signals from two subject. The overall accuracy rate can reach 94% based on the selected EMG features for each measured muscle. The results suggest the importance of feature selection according to the morphology of EMG waveforms recorded from different muscle bundles. The performance of the proposed method has been quantitatively evaluated, and an assistive robot arm can be remotely controlled using EMG signals with a high accuracy rate.
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