SPROSYOct 3, 2018

Teleoperated Robotic Arm Movement Using EMG Signal With Wearable MYO Armband

arXiv:1810.09929v12 citations
Originality Synthesis-oriented
AI Analysis

It addresses teleoperation for robotics or assistive devices, but is incremental as it applies standard pattern recognition methods to a known setup.

This research tackled real-time control of a 5-degree-of-freedom robotic arm using surface electromyography (sEMG) signals from a Myo armband to distinguish seven hand movements, achieving up to 96.57% accuracy with an SVM classifier.

The main purpose of this research is to move the robotic arm (5DoF) in real-time, based on the surface Electromyography (sEMG) signals, as obtained from the wireless Myo gesture armband to distinguish seven hand movements. The sEMG signals are biomedical signals that estimate and record the electrical signals produced in muscles through their contraction and relaxation, representing neuromuscular activities. Therefore, controlling the robotic arm via the muscles of the human arm using sEMG signals is considered to be one of the most significant methods. The wireless Myo gesture armband is used to record sEMG signals from the forearm. In order to analyze these signals, the pattern recognition system is employed, which consists of three main parts: segmentation, feature extraction, and classification. Overlap technique is chosen for segmenting part of the signal. Six time domain features (MAV, WL, RMS, AR, ZC, and SSC) are extracted from each segment. The classifiers (SVM, LDA, and KNN) are employed to enable comparison between them in order to obtain optimum accuracy of the system. The results show that the SVM achieves higher system accuracy at 96.57 %, compared to LDA reaching 96.01 %, and 92.67 % accuracy achieved by KNN.

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