DocumentCode
1076982
Title
Integrating Heterogeneous Classifier Ensembles for EMG Signal Decomposition Based on Classifier Agreement
Author
Rasheed, Sarbast ; Stashuk, Daniel W. ; Kamel, Mohamed S.
Author_Institution
Dept. of Syst. Design Eng., Univ. of Waterloo, Waterloo, ON, Canada
Volume
14
Issue
3
fYear
2010
fDate
5/1/2010 12:00:00 AM
Firstpage
866
Lastpage
882
Abstract
In this paper, we present a design methodology for integrating heterogeneous classifier ensembles by employing a diversity-based hybrid classifier fusion approach, whose aggregator module consists of two classifier combiners, to achieve an improved classification performance for motor unit potential classification during electromyographic (EMG) signal decomposition. Following the so-called overproduce and choose strategy to classifier ensemble combination, the developed system allows the construction of a large set of base classifiers, and then automatically chooses subsets of classifiers to form candidate classifier ensembles for each combiner. The system exploits kappa statistic diversity measure to design classifier teams through estimating the level of agreement between base classifier outputs. The pool of base classifiers consists of different kinds of classifiers: the adaptive certainty-based, the adaptive fuzzy k -NN, and the adaptive matched template filter classifiers; and utilizes different types of features. Performance of the developed system was evaluated using real and simulated EMG signals, and was compared with the performance of the constituent base classifiers. Across the EMG signal datasets used, the developed system had better average classification performance overall, especially in terms of reducing classification errors. For simulated signals of varying intensity, the developed system had an average correct classification rate CCr of 93.8% and an error rate Er of 2.2% compared to 93.6% and 3.2%, respectively, for the best base classifier in the ensemble. For simulated signals with varying amounts of shape and/or firing pattern variability, the developed system had a CCr of 89.1% with an Er of 4.7% compared to 86.3% and 5.6%, respectively, for the best classifier. For real signals, the developed system had a CCr of 89.4% with an Er of 3.9% compared to 84.6% and 7.1%, respectively, for the - - best classifier.
Keywords
electromyography; matched filters; medical signal processing; EMG signal decomposition; adaptive matched template filter classifier; classifier agreement; diversity based hybrid classifier fusion; electromyography; heterogeneous classifier ensemble; kappa statistics; $kappa$ statistic; Base classifiers; classifier agreement; classifier ensemble; diversity measure; hybrid classifier fusion; motor unit potential classification; Algorithms; Computer Simulation; Databases, Factual; Electromyography; Fuzzy Logic; Humans; Pattern Recognition, Automated; Signal Processing, Computer-Assisted;
fLanguage
English
Journal_Title
Information Technology in Biomedicine, IEEE Transactions on
Publisher
ieee
ISSN
1089-7771
Type
jour
DOI
10.1109/TITB.2008.2010552
Filename
4757283
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