Nonlinear EEG Decoding Based on a Particle Filter Model
Author(s) -
Jinhua Zhang,
Jiongjian Wei,
Baozeng Wang,
Jun Hong,
Jing Wang
Publication year - 2014
Publication title -
biomed research international
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.772
H-Index - 126
eISSN - 2314-6141
pISSN - 2314-6133
DOI - 10.1155/2014/159486
Subject(s) - decoding methods , electroencephalography , computer science , robot , nonlinear system , neural decoding , filter (signal processing) , linear model , rehabilitation , particle filter , artificial intelligence , kalman filter , psychology , machine learning , algorithm , neuroscience , computer vision , physics , quantum mechanics
While the world is stepping into the aging society, rehabilitation robots play a more and more important role in terms of both rehabilitation treatment and nursing of the patients with neurological diseases. Benefiting from the abundant contents of movement information, electroencephalography (EEG) has become a promising information source for rehabilitation robots control. Although the multiple linear regression model was used as the decoding model of EEG signals in some researches, it has been considered that it cannot reflect the nonlinear components of EEG signals. In order to overcome this shortcoming, we propose a nonlinear decoding model, the particle filter model. Two- and three-dimensional decoding experiments were performed to test the validity of this model. In decoding accuracy, the results are comparable to those of the multiple linear regression model and previous EEG studies. In addition, the particle filter model uses less training data and more frequency information than the multiple linear regression model, which shows the potential of nonlinear decoding models. Overall, the findings hold promise for the furtherance of EEG-based rehabilitation robots.
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