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Topography-Time-Frequency Atomic Decomposition for Event-Related M/EEG Signals.

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Academic year: 2021

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Figure

Fig. 1. Left column: Simulated data after spatial filtering, for a SNR of 0.5 (upper part) and 100 (lower part) (the SNR corresponds to the data before filtering)
Fig. 4. Results for the oddball data. Left: histograms of parameters fitted in fit1 (no constraint on dispersion)

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