Title
P300 speller efficiency with common average reference
Abstract
P300 detection is known to be challenging task, as P300 potentials are buried in a large amount of noise. In standard recording of P300 signals, activity at the reference site affects measurements at all the active electrode sites. Analyses of P300 data would be improved if reference site activity could be separated out. This step is an important one before the extraction of P300 features. The essential goal is to improve the signal to noise ratio (SNR) significantly, i.e. to separate the task-related signal from the noise content, and therefore is likely to support the most accurate and rapid P300 Speller. Different techniques have been proposed to remove common sources of artifacts in raw EEG signals. In this research, twelve different techniques have been investigated along with their application for P300 speller in three different Datasets. The results as a whole demonstrate that common average reference CAR technique proved best able to distinguish between targets and non-targets. It was significantly superior to the other techniques.
Year
DOI
Venue
2012
10.1007/978-3-642-31368-4_28
AIS
Keywords
Field
DocType
p300 speller efficiency,different technique,p300 feature,p300 signal,p300 potential,p300 detection,different datasets,rapid p300 speller,common average reference car,p300 speller,p300 data,classification,eeg
Pattern recognition,Computer science,Signal-to-noise ratio,Speech recognition,Artificial intelligence,Electroencephalography,Machine learning
Conference
Citations 
PageRank 
References 
0
0.34
2
Authors
6
Name
Order
Citations
PageRank
Mohammed J. Alhaddad1768.55
Mahmoud Kamel200.34
Hussein Malibary330.70
Khalid Thabit401.01
Foud Dahlwi500.34
Anas Hadi6162.23