Role of Muscle Synergies in Real-Time Classification of Upper Limb Motions using Extreme Learning Machines

被引:40
作者
Antuvan, Chris Wilson [1 ]
Bisio, Federica [2 ]
Marini, Francesca [3 ]
Yen, Shih-Cheng [4 ,5 ]
Cambria, Erik [6 ]
Masia, Lorenzo [1 ]
机构
[1] Nanyang Technol Univ, Sch Mech & Aerosp Engn, Singapore, Singapore
[2] Univ Genoa, Dept Naval Elect Elect & Telecommun Engn, Genoa, Italy
[3] Italian Inst Technol, Dept Robot Brain & Cognit Sci, Genoa, Italy
[4] Natl Univ Singapore, Dept Elect & Comp Engn, Singapore, Singapore
[5] Natl Univ Singapore, Singapore Inst Neurotechnol SINAPSE, Singapore, Singapore
[6] Nanyang Technol Univ, Sch Comp Sci & Engn, Singapore, Singapore
关键词
Electromyography; Myoelectric control; Muscle synergy; Pattern recognition; Real-time control; EMG-BASED CONTROL; MYOELECTRIC CONTROL; ELM; KINEMATICS; MOVEMENTS; PATTERNS; SIGNALS; TRENDS; MODEL; HAND;
D O I
10.1186/s12984-016-0183-0
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Background: Myoelectric signals offer significant insights in interpreting the motion intention and extent of effort involved in performing a movement, with application in prostheses, orthosis and exoskeletons. Feature extraction plays a vital role, and follows two approaches: EMG and synergy features. More recently, muscle synergy based features are being increasingly explored, since it simplifies dimensionality of control, and are considered to be more robust to signal variations. Another important aspect in a myoelectrically controlled devices is the learning capability and speed of performance for online decoding. Extreme learning machine (ELM) is a relatively new neural-network based learning algorithm: its performance hasn't been explored in the context of online control, which is a more reliable measure compared to offline analysis. To this purpose we aim at focusing our investigation on a myoelectric-based interface which is able to identify and online classify, upper limb motions involving shoulder and elbow. The main objective is to compare the performance of the decoder trained using ELM, for two different features: EMG and synergy features. Methods: The experiments are broadly divided in two phases training/ calibration and testing respectively. ELM is used to train the decoder using data acquired during the calibration phase. The performance of the decoder is then tested in online motion control by using a simulated graphical user interface replicating the human limb: subjects are requested to control a virtual arm by using their muscular activity. The decoder performance is quantified using ad-hoc metrics based on the following indicators: motion selection time, motion completion time, and classification accuracy. Results: Performance has been evaluated for both offline and online contexts. The offline classification results indicated better performance in the case of EMG features, whereas a better classification accuracy for synergy feature was observed for online decoding. Also the other indicators as motion selection time and motion completion time, showed better trend in the case of synergy than time-domain features. Conclusion: This work demonstrates better robustness of online decoding of upper-limb motions and motor intentions when using synergy feature. Furthermore, we have quantified the performance of the decoder trained using ELM for online control, providing a potential and viable option for real-time myoelectric control in assistive technology.
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页数:15
相关论文
共 53 条
[31]  
Lock B, 2005, MYOEL S
[32]  
Lock B.A., 2005, Design and interactive assessment of continuous multifunction myoelectric
[33]   Influence of the training set on the accuracy of surface EMG classification in dynamic contractions for the control of multifunction prostheses [J].
Lorrain, Thomas ;
Jiang, Ning ;
Farina, Dario .
JOURNAL OF NEUROENGINEERING AND REHABILITATION, 2011, 8
[34]  
Lupu O, 2012, BIOMED ENG-BIOMED TE, V57, P413
[35]   Extracting Signals Robust to Electrode Number and Shift for Online Simultaneous and Proportional Myoelectric Control by Factorization Algorithms [J].
Muceli, Silvia ;
Jiang, Ning ;
Farina, Dario .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2014, 22 (03) :623-633
[36]   Identifying Representative Synergy Matrices for Describing Muscular Activation Patterns During Multidirectional Reaching in the Horizontal Plane [J].
Muceli, Silvia ;
Boye, Andreas Trollund ;
d'Avella, Andrea ;
Farina, Dario .
JOURNAL OF NEUROPHYSIOLOGY, 2010, 103 (03) :1532-1542
[37]   Myoelectric control systems-A survey [J].
Oskoei, Mohammadreza Asghari ;
Hu, Huosheng .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2007, 2 (04) :275-294
[38]   Myoelectric signal processing for control of powered limb prostheses [J].
Parker, P. ;
Englehart, K. ;
Hudgins, B. .
JOURNAL OF ELECTROMYOGRAPHY AND KINESIOLOGY, 2006, 16 (06) :541-548
[39]   EMG feature evaluation for improving myoelectric pattern recognition robustness [J].
Phinyomark, Angkoon ;
Quaine, Franck ;
Charbonnier, Sylvie ;
Serviere, Christine ;
Tarpin-Bernard, Franck ;
Laurillau, Yann .
EXPERT SYSTEMS WITH APPLICATIONS, 2013, 40 (12) :4832-4840
[40]   Sentiment Data Flow Analysis by Means of Dynamic Linguistic Patterns [J].
Poria, Soujanya ;
Cambria, Erik ;
Gelbukh, Alexander ;
Bisio, Federica ;
Hussain, Amir .
IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE, 2015, 10 (04) :26-36