DocumentCode
3694438
Title
Efficient recognition of event-related potentials in high-density MEG recordings
Author
Christoph Reichert;Stefan Dürschmid;Hermann Hinrichs;Rudolf Kruse
Author_Institution
Department of Neurology, Otto-von-Guericke University, Magdeburg, Germany
fYear
2015
Firstpage
81
Lastpage
86
Abstract
In brain-computer interfacing (BCI), the recognition of task-specific event-related potentials such as P300 responses is an established approach to regaining communication in severely paralyzed people. However, a reliable detection of single trial potentials is challenging, because they are strongly affected by noise. Furthermore, potentials with their subcomponents are often distributed over several channels. With high density sensor arrays, a hypothesis-driven selection of channels, as often performed in BCIs based on electroencephalography (EEG), is challenging. We present a new data-driven approach that constructs spatio-temporal filters, considerably reducing the number of channels, reducing noise, and simultaneously determining the underlying brain dynamics. The extracted signals can be easily used to recognize the event sequence on which users focus their attention, without applying multivariate classification. We evaluated the approach using high density magnetoencephalography (MEG) data, recorded during a BCI experiment based on P300 responses. Compared to the subject´s performance achieved with the initial decoding approach, the recognition rate increased significantly from 74.1% (std: 14.8%) to 95.1% (std: 4.9%) correct detections, which implies an information transfer rate improvement from 6.9 bit/min to 13.1 bit/min on average over 17 subjects.
Keywords
"Correlation","Brain modeling","Yttrium","Decoding","Electroencephalography","Signal to noise ratio"
Publisher
ieee
Conference_Titel
Computer Science and Electronic Engineering Conference (CEEC), 2015 7th
Type
conf
DOI
10.1109/CEEC.2015.7332704
Filename
7332704
Link To Document