sEMG-Based Robust Recognition of Grasping Postures with a Machine Learning Approach for Low-Cost Hand Control

被引:4
作者
Mora, Marta C. [1 ]
Garcia-Ortiz, Jose V. [1 ]
Cerda-Boluda, Joaquin [2 ]
机构
[1] Univ Jaume 1, Dept Mech Engn & Construct, Avda Vicent Sos Baynat S-N, Castellon de La Plana 12071, Spain
[2] Univ Politecn Valencia, Inst Instrumentac Imagen Mol I3M, Camino Vera S-N, Valencia 46022, Spain
关键词
artificial hand; grasping postures; machine learning; EMG; recognition; HRI; low-cost devices; EMG; SIGNALS;
D O I
10.3390/s24072063
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The design and control of artificial hands remains a challenge in engineering. Popular prostheses are bio-mechanically simple with restricted manipulation capabilities, as advanced devices are pricy or abandoned due to their difficult communication with the hand. For social robots, the interpretation of human intention is key for their integration in daily life. This can be achieved with machine learning (ML) algorithms, which are barely used for grasping posture recognition. This work proposes an ML approach to recognize nine hand postures, representing 90% of the activities of daily living in real time using an sEMG human-robot interface (HRI). Data from 20 subjects wearing a Myo armband (8 sEMG signals) were gathered from the NinaPro DS5 and from experimental tests with the YCB Object Set, and they were used jointly in the development of a simple multi-layer perceptron in MATLAB, with a global percentage success of 73% using only two features. GPU-based implementations were run to select the best architecture, with generalization capabilities, robustness-versus-electrode shift, low memory expense, and real-time performance. This architecture enables the implementation of grasping posture recognition in low-cost devices, aimed at the development of affordable functional prostheses and HRI for social robots.
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页数:24
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