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Pattern recognition for prosthetic hand user's intentions using EMG data and machine learning techniques

conference contribution
posted on 2024-11-16, 04:10 authored by Sam Young, Benjamin Stephens-Fripp, Andrew Gillett, Hao ZhouHao Zhou, Gursel AliciGursel Alici
In this paper, we propose a simplified pipeline system for hand gesture pattern recognition. This system is based on surface electromyography of the upper forearm, obtained from a commercial sensor, the Myo armband, developed by Thalmic Labs. The pipeline involves data acquisition, pre-processing, feature extraction, classification, post-processing and interfacing. Implementations and improvements of each stage, including a new post-processing method are discussed. The evaluation of the pipeline system is conducted with 10 subject's electromyographic data whilst performing the 5 default classes of gestures packaged with the proprietary Myo system. Comparing our results with results found in literature and the Myo system, we have determined that our pipeline performs effectively (94.8% accuracy with 5 seconds of recording per gesture), particularly with comparison to the default Myo system (83% accuracy).

Funding

ARC Centre of Excellence for Electromaterials Science

Australian Research Council

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Citation

Young, S., Stephens-Fripp, B., Gillett, A., Zhou, H. & Alici, G. (2019). Pattern recognition for prosthetic hand user's intentions using EMG data and machine learning techniques. IEEE/ASME International Conference on Advanced Intelligent Mechatronics, AIM (pp. 544-550). United States: IEEE.

Parent title

IEEE/ASME International Conference on Advanced Intelligent Mechatronics, AIM

Volume

2019-July

Pagination

544-550

Language

English

RIS ID

139921

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