Literature DB >> 25860845

Comparative study of PCA in classification of multichannel EMG signals.

P Geethanjali1.   

Abstract

Electromyographic (EMG) signals are abundantly used in the field of rehabilitation engineering in controlling the prosthetic device and significantly essential to find fast and accurate EMG pattern recognition system, to avoid intrusive delay. The main objective of this paper is to study the influence of Principal component analysis (PCA), a transformation technique, in pattern recognition of six hand movements using four channel surface EMG signals from ten healthy subjects. For this reason, time domain (TD) statistical as well as auto regression (AR) coefficients are extracted from the four channel EMG signals. The extracted statistical features as well as AR coefficients are transformed using PCA to 25, 50 and 75 % of corresponding original feature vector space. The classification accuracy of PCA transformed and non-PCA transformed TD statistical features as well as AR coefficients are studied with simple logistic regression (SLR), decision tree (DT) with J48 algorithm, logistic model tree (LMT), k nearest neighbor (kNN) and neural network (NN) classifiers in the identification of six different movements. The Kruskal-Wallis (KW) statistical test shows that there is a significant reduction (P < 0.05) in classification accuracy with PCA transformed features compared to non-PCA transformed features. SLR with non-PCA transformed time domain (TD) statistical features performs better in accuracy and computational power compared to other features considered in this study. In addition, the motion control of three drives for six movements of the hand is implemented with SLR using TD statistical features in off-line with TMSLF2407 digital signal controller (DSC).

Mesh:

Year:  2015        PMID: 25860845     DOI: 10.1007/s13246-015-0343-8

Source DB:  PubMed          Journal:  Australas Phys Eng Sci Med        ISSN: 0158-9938            Impact factor:   1.430


  2 in total

Review 1.  Myoelectric control of prosthetic hands: state-of-the-art review.

Authors:  Purushothaman Geethanjali
Journal:  Med Devices (Auckl)       Date:  2016-07-27

2.  Artificial neural network EMG classifier for functional hand grasp movements prediction.

Authors:  Marta Gandolla; Simona Ferrante; Giancarlo Ferrigno; Davide Baldassini; Franco Molteni; Eleonora Guanziroli; Michele Cotti Cottini; Carlo Seneci; Alessandra Pedrocchi
Journal:  J Int Med Res       Date:  2016-09-27       Impact factor: 1.671

  2 in total

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