RT Conference Proceedings T1 Improving classification for brain computer interfaces using transitions and a moving window A1 Aler, Ricardo A1 Galván, Inés M. A1 Valls, José M. AB The context of this paper is the brain-computer interface (BCI), and in particular the classification of signals with machine learning methods. In this paper we intend to improve classification accuracy by taking advantage of a feature of BCIs: instances run in sequences belonging to the same class. In that case, the classiffication problem can be reformulated into two subproblems: detecting class transitions and determining the class for sequences of instances between transitions. We detect a transition when the Euclidean distance between the power spectra at two different times is larger than a threshold. To tackle the second problem, instances are classified by taking into account, not just the prediction for that instance, but a moving window of predictionsfor previous instances. Experimental results show that our transition detection method improves results for datasets of two out of three subjects of the BCI III competition. If the moving window is used, classificationaccuracy is further improved, depending on the window size. SN 978-3-642-11720-6 SN 1865-0929 YR 2009 FD 2009-01-14 LK https://hdl.handle.net/10016/6760 UL https://hdl.handle.net/10016/6760 LA eng NO Proceeding of: Biosignals 2009. International Conference on Bio-inspired Systems and Signal Processing, BIOSTEC 2009. Porto (Portugal), 14-17 January 2009 DS e-Archivo RD 20 may. 2024