Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing

Brain-computer interfacing (BCI) is a new method of human-machine interaction. It involves the extraction of information from the electroencephalogram (EEG) through signal processing and pattern recognition. The technology has far reaching implications for those with severe physical disabiliti...

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Main Author: Dharwarkar, Gireesh
Format: Others
Language:en
Published: University of Waterloo 2006
Subjects:
Online Access:http://hdl.handle.net/10012/830
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spelling ndltd-WATERLOO-oai-uwspace.uwaterloo.ca-10012-8302013-01-08T18:49:10ZDharwarkar, Gireesh2006-08-22T14:03:53Z2006-08-22T14:03:53Z20052005http://hdl.handle.net/10012/830Brain-computer interfacing (BCI) is a new method of human-machine interaction. It involves the extraction of information from the electroencephalogram (EEG) through signal processing and pattern recognition. The technology has far reaching implications for those with severe physical disabilities and has the potential to enhance machine interaction for the rest of the population. In this work we investigate time-frequency analysis in motor-imagery BCI. We consider two methods for signal analysis: adaptive autoregressive models (AAR) and wavelet transform (WAV). There are three major contributions of this research to single-trial analysis in motor-imagery BCI. First, we improve classification of AAR features over a conventional method by applying a temporal evidence accumulation (TEA) framework. Second, we compare the performance of AAR and WAV under the TEA framework for three subjects and find that WAV outperforms AAR for two subjects. The subject for whom AAR outperforms WAV has the lowest overall signal-to-noise ratio in their BCI output, an indication that the AAR model is more robust than WAV for noisier signals. Lastly, we find empirical evidence of complimentary information between AAR and WAV and propose a fusion scheme that increases the mutual information between the BCI output and classes.application/pdf2416027 bytesapplication/pdfenUniversity of WaterlooCopyright: 2005, Dharwarkar, Gireesh. All rights reserved.Electrical & Computer EngineeringBrain-Computer InterfacingMotor ImageryEEG signal processingAdaptive AutoregressionWaveletKalman FilteringUsing Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer InterfacingThesis or DissertationElectrical and Computer EngineeringMaster of Applied Science
collection NDLTD
language en
format Others
sources NDLTD
topic Electrical & Computer Engineering
Brain-Computer Interfacing
Motor Imagery
EEG signal processing
Adaptive Autoregression
Wavelet
Kalman Filtering
spellingShingle Electrical & Computer Engineering
Brain-Computer Interfacing
Motor Imagery
EEG signal processing
Adaptive Autoregression
Wavelet
Kalman Filtering
Dharwarkar, Gireesh
Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
description Brain-computer interfacing (BCI) is a new method of human-machine interaction. It involves the extraction of information from the electroencephalogram (EEG) through signal processing and pattern recognition. The technology has far reaching implications for those with severe physical disabilities and has the potential to enhance machine interaction for the rest of the population. In this work we investigate time-frequency analysis in motor-imagery BCI. We consider two methods for signal analysis: adaptive autoregressive models (AAR) and wavelet transform (WAV). There are three major contributions of this research to single-trial analysis in motor-imagery BCI. First, we improve classification of AAR features over a conventional method by applying a temporal evidence accumulation (TEA) framework. Second, we compare the performance of AAR and WAV under the TEA framework for three subjects and find that WAV outperforms AAR for two subjects. The subject for whom AAR outperforms WAV has the lowest overall signal-to-noise ratio in their BCI output, an indication that the AAR model is more robust than WAV for noisier signals. Lastly, we find empirical evidence of complimentary information between AAR and WAV and propose a fusion scheme that increases the mutual information between the BCI output and classes.
author Dharwarkar, Gireesh
author_facet Dharwarkar, Gireesh
author_sort Dharwarkar, Gireesh
title Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
title_short Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
title_full Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
title_fullStr Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
title_full_unstemmed Using Temporal Evidence and Fusion of Time-Frequency Features for Brain-Computer Interfacing
title_sort using temporal evidence and fusion of time-frequency features for brain-computer interfacing
publisher University of Waterloo
publishDate 2006
url http://hdl.handle.net/10012/830
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