Spatial filters yield stable features for error-related potentials across conditions

2016 IEEE International Conference on Systems, Man, and Cybernetics (SMC)(2016)

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摘要
Error-related potentials (ErrP) have been increasingly studied in psychophysical experiments as well as for brain-machine interfacing. In the latter case, the generalisation capabilities of ErrP decoders is a crucial element to avoid frequent recalibration processes, thus increasing their usability. Previous studies have suggested that ErrP signals are rather stable across recording sessions. Also, studies using protocols of serial stimuli presentation show that these potentials do not change significantly with the presentation rate. Here we complement these studies by analysing the decoding generalisation capabilities. Using data from monitoring experiments, we evaluate how much the performance degrades when tested in a condition different than the one the decoder was trained with. Moreover, we compare different spatial filtering techniques to see which preprocessing steps yield less-sensitive features for ErrP decoding.
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关键词
stable features,error-related potentials,ErrP decoders,psychophysical experiments,brain-machine interface,generalisation capabilities,ErrP signals,serial stimulus presentation,presentation rate,decoding generalisation capability analysis,spatial filtering techniques
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