Title :
Integrating Language Information With a Hidden Markov Model to Improve Communication Rate in the P300 Speller
Author :
Speier, W. ; Arnold, C. ; Lu, Jun ; Deshpande, A. ; Pouratian, Nader
Author_Institution :
Bioeng. Dept. & the Med. Imaging Inf. Group, Univ. of California, Los Angeles, Los Angeles, CA, USA
Abstract :
The P300 speller is a common brain-computer interface (BCI) application designed to communicate language by detecting event related potentials in a subject´s electroencephalogram (EEG) signal. Information about the structure of natural language can be valuable for BCI communication systems, but few attempts have been made to incorporate this domain knowledge into the classifier. In this study, we treat BCI communication as a hidden Markov model (HMM) where hidden states are target characters and the EEG signal is the visible output. Using the Viterbi algorithm, language information can be incorporated in classification and errors can be corrected automatically. This method was first evaluated offline on a dataset of 15 healthy subjects who had a significant increase in bit rate from a previously published naïve Bayes approach and an average 32% increase from standard classification with dynamic stopping. An online pilot study of five healthy subjects verified these results as the average bit rate achieved using the HMM method was significantly higher than that using the naïve Bayes and standard methods. These findings strongly support the integration of domain-specific knowledge into BCI classification to improve system performance and accuracy.
Keywords :
bioelectric potentials; brain-computer interfaces; electroencephalography; handicapped aids; hidden Markov models; maximum likelihood estimation; medical signal processing; natural language processing; signal classification; BCI application; BCI classification; BCI communication systems; EEG signal; ERP detection; P300 speller; Viterbi algorithm; brain-computer interface; communication rate; domain knowledge; dynamic stopping; electroencephalogram; event related potentials; hidden Markov model; language information; natural language structure; Accuracy; Bit rate; Electroencephalography; Hidden Markov models; Markov processes; Niobium; Training; Brain–computer interfaces (BCIs); electro encephalography (EEG); hidden Markov models (HMMs); natural language processing;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2014.2300091