moabb.paradigms.SinglePass#
- class moabb.paradigms.SinglePass(fmin=1, fmax=24, **kwargs)[source]#
Single Bandpass filter P300.
P300 paradigm with only one bandpass filter (default 1 to 24 Hz)
- Parameters
fmin (float (default 1)) – cutoff frequency (Hz) for the high pass filter
fmax (float (default 24)) – cutoff frequency (Hz) for the low pass filter
events (List of str | None (default None)) – event to use for epoching. If None, default to all events defined in the dataset.
tmin (float (default 0.0)) – Start time (in second) of the epoch, relative to the dataset specific task interval e.g. tmin = 1 would mean the epoch will start 1 second after the beginning of the task as defined by the dataset.
tmax (float | None, (default None)) – End time (in second) of the epoch, relative to the beginning of the dataset specific task interval. tmax = 5 would mean the epoch will end 5 second after the beginning of the task as defined in the dataset. If None, use the dataset value.
baseline (None | tuple of length 2) – The time interval to consider as “baseline” when applying baseline correction. If None, do not apply baseline correction. If a tuple (a, b), the interval is between a and b (in seconds), including the endpoints. Correction is applied by computing the mean of the baseline period and subtracting it from the data (see mne.Epochs)
channels (list of str | None (default None)) – list of channel to select. If None, use all EEG channels available in the dataset.
resample (float | None (default None)) – If not None, resample the eeg data with the sampling rate provided.
Examples using moabb.paradigms.SinglePass
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Hinss2021 classification example
Examples of how to use MOABB to benchmark pipelines.
Cross-session motor imagery with deep learning EEGNet v4 model
Cross-Session on Multiple Datasets
Cache on disk intermediate data processing states
Fixed interval windows processing
Select Electrodes and Resampling
Within Session P300 with Learning Curve
Within Session Motor Imagery with Learning Curve
Within Session P300 with Learning Curve
Tutorial 1: Simple Motor Imagery
Tutorial 2: Using multiple datasets
Tutorial 3: Benchmarking multiple pipelines