DocumentCode :
959063
Title :
Recognition of Electromyographic Signals Using Cascaded Kernel Learning Machine
Author :
Liu, Yi-Hung ; Huang, Han-Pang ; Weng, Chang-Hsin
Author_Institution :
Chung Yuan Christian Univ., Chungli
Volume :
12
Issue :
3
fYear :
2007
fDate :
6/1/2007 12:00:00 AM
Firstpage :
253
Lastpage :
264
Abstract :
Electromyographic (EMG) signals recognition is a complex pattern recognition problem due to its property of large variations in signals and features. This paper proposes a novel EMG classifier called cascaded kernel learning machine (CKLM) to achieve the goal of high-accuracy EMG recognition. First, the EMG signals are acquired by three surface electrodes placed on three different muscles. Second, EMG features are extracted by autoregressive model (ARM) and EMG histogram. After the feature extraction, the CKLM is performed to classify the features. CKLM is composed of two different kinds of kernel learning machines: generalized discriminant analysis (GDA) algorithm and support vector machine (SVM). By using GDA, both the goals of the dimensionality reduction of input features and the selection of discriminating features, named kernel FisherEMG, can be reached. Then, SVM combined with one-against-one strategy is executed to classify the kernel FisherEMG. By cascading SVM with GDA, the input features will be nonlinearly mapped twice by radial-basis function (RBF). As a result, a linear optimal separating hyperplane can be found with the largest margin of separation between each pair of postures´ classes in the implicit dot product feature space. In addition, we develop a digital signal processor (DSP)-based EMG classification system for the control of a multi-degrees-of-freedom prosthetic hand for the practical implementation. Based on the clinical experiments, the results show that the proposed CKLM is superior to other frequently used methods, such as k-nearest neighbor algorithm, multilayer neural network, and SVM. The best EMG recognition rate 93.54% is obtained by CKLM.
Keywords :
autoregressive processes; digital control; electromyography; feature extraction; learning (artificial intelligence); medical signal processing; prosthetics; radial basis function networks; signal classification; support vector machines; EMG classifier; EMG histogram; EMG recognition; autoregressive model; cascaded kernel learning machine; electromyographic signals recognition; feature extraction; generalized discriminant analysis; linear optimal separating hyperplane; multidegrees-of-freedom prosthetic hand; pattern recognition; radial-basis function; support vector machine; Electrodes; Electromyography; Feature extraction; Kernel; Machine learning; Multi-layer neural network; Pattern recognition; Signal processing algorithms; Support vector machine classification; Support vector machines; Autoregressive model (ARM); electromyography (EMG); generalized discriminant analysis (GDA); prehensile postures´ classification; prosthetic hand; support vector machine (SVM);
fLanguage :
English
Journal_Title :
Mechatronics, IEEE/ASME Transactions on
Publisher :
ieee
ISSN :
1083-4435
Type :
jour
DOI :
10.1109/TMECH.2007.897253
Filename :
4244390
Link To Document :
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