2006
DOI: 10.1088/1741-2560/3/3/006
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Classification of single trial motor imagery EEG recordings with subject adapted non-dyadic arbitrary time–frequency tilings

Abstract: We describe a new technique for the classification of motor imagery electroencephalogram (EEG) recordings in a brain computer interface (BCI) task. The technique is based on an adaptive time-frequency analysis of EEG signals computed using local discriminant bases (LDB) derived from local cosine packets (LCP). In an offline step, the EEG data obtained from the C(3)/C(4) electrode locations of the standard 10/20 system is adaptively segmented in time, over a non-dyadic grid by maximizing the probabilistic dista… Show more

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Cited by 83 publications
(44 citation statements)
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“…Selection of these parameters has varied widely across different studies. For example, Schlogl et al (2005) used a model order of 3, Ince et al (2006) used an order of 6, and McFarland and Wolpaw (2005) used an order of 16. The data window length is the duration in time of the EEG segment used for each individual spectral estimate.…”
Section: )mentioning
confidence: 99%
“…Selection of these parameters has varied widely across different studies. For example, Schlogl et al (2005) used a model order of 3, Ince et al (2006) used an order of 6, and McFarland and Wolpaw (2005) used an order of 16. The data window length is the duration in time of the EEG segment used for each individual spectral estimate.…”
Section: )mentioning
confidence: 99%
“…Thus, only optimizing the position of electrodes may not be sufficient to achieve a good classification, and a BCI system using bipolar recording also requires more precise user-specific time-frequency parameterization in the feature extraction step. To address this problem, a number of approaches were proposed to estimate time-frequency characteristics of motor imagery EEG [13][14][15][16], but only a few were successfully applied to bipolar recording data. Among those methods, the filter bank CSP (FBCSP) method seems to be the most effective one, yielding the best BCI performances on BCI competition datasets [17].…”
Section: Introductionmentioning
confidence: 99%
“…Also it is difficult to capture the discriminant information in the EEG with individual expansion coefficients. Therefore we developed the Flexible-LDB algorithm which enhances the time segmentation procedure by adopting a merge/divide strategy which removes the limitations to dyadic segments [12]. Then it extracts most discriminant band features in each time segment with a frequency axis clustering procedure.…”
Section: Adaptive Time-frequency Segmentationmentioning
confidence: 99%
“…Then it extracts most discriminant band features in each time segment with a frequency axis clustering procedure. Let us first shortly explain the time adaptation algorithm ( for details see [12] ). While constructing the segmentation in each iteration, the given signals are analyzed with three smooth windows which have a children and mother structure.…”
Section: Adaptive Time-frequency Segmentationmentioning
confidence: 99%
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