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Hidden Markov model and support vector machine based decoding of finger movements using electrocorticography.


ABSTRACT: Support vector machines (SVM) have developed into a gold standard for accurate classification in brain-computer interfaces (BCI). The choice of the most appropriate classifier for a particular application depends on several characteristics in addition to decoding accuracy. Here we investigate the implementation of hidden Markov models (HMM) for online BCIs and discuss strategies to improve their performance.We compare the SVM, serving as a reference, and HMMs for classifying discrete finger movements obtained from electrocorticograms of four subjects performing a finger tapping experiment. The classifier decisions are based on a subset of low-frequency time domain and high gamma oscillation features.We show that decoding optimization between the two approaches is due to the way features are extracted and selected and less dependent on the classifier. An additional gain in HMM performance of up to 6% was obtained by introducing model constraints. Comparable accuracies of up to 90% were achieved with both SVM and HMM with the high gamma cortical response providing the most important decoding information for both techniques.We discuss technical HMM characteristics and adaptations in the context of the presented data as well as for general BCI applications. Our findings suggest that HMMs and their characteristics are promising for efficient online BCIs.

SUBMITTER: Wissel T 

PROVIDER: S-EPMC3901317 | biostudies-literature | 2013 Oct

REPOSITORIES: biostudies-literature

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Hidden Markov model and support vector machine based decoding of finger movements using electrocorticography.

Wissel Tobias T   Pfeiffer Tim T   Frysch Robert R   Knight Robert T RT   Chang Edward F EF   Hinrichs Hermann H   Rieger Jochem W JW   Rose Georg G  

Journal of neural engineering 20130918 5


<h4>Objective</h4>Support vector machines (SVM) have developed into a gold standard for accurate classification in brain-computer interfaces (BCI). The choice of the most appropriate classifier for a particular application depends on several characteristics in addition to decoding accuracy. Here we investigate the implementation of hidden Markov models (HMM) for online BCIs and discuss strategies to improve their performance.<h4>Approach</h4>We compare the SVM, serving as a reference, and HMMs f  ...[more]

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