""" ================================================== Pseudo-Online Motor Imagery with Sliding Window ================================================== This example shows how to perform a pseudo-online motor imagery evaluation using sliding window overlap. The ``overlap`` parameter in the paradigm generates overlapping epochs from the original trials, simulating an online BCI scenario. We use the BNCI2014-001 dataset with two Riemannian pipelines (MDM and FgMDM) and a within-session evaluation. """ import numpy as np from pyriemann.classification import MDM, FgMDM from pyriemann.estimation import Covariances from sklearn.pipeline import Pipeline from moabb.datasets import BNCI2014_001 from moabb.evaluations import WithinSessionEvaluation from moabb.paradigms import MotorImagery sub = 1 # Initialize parameter for the Band Pass filter fmin = 8 fmax = 30 tmax = 3 # Load dataset and configure overlap in the paradigm pipeline dataset = BNCI2014_001() events = list(dataset.event_id.keys()) paradigm = MotorImagery( events=events, n_classes=len(events), fmin=fmin, fmax=fmax, tmax=tmax, overlap=50 ) X, y, meta = paradigm.get_data(dataset=dataset, subjects=[sub]) unique, counts = np.unique(y, return_counts=True) print("Number of trials per class:", dict(zip(unique, counts))) pipelines = {} pipelines["MDM"] = Pipeline( steps=[ ("Covariances", Covariances("cov")), ("MDM", MDM(metric={"mean": "riemann", "distance": "riemann"})), ] ) pipelines["FgMDM"] = Pipeline( steps=[("Covariances", Covariances("cov")), ("FgMDM", FgMDM())] ) dataset.subject_list = dataset.subject_list[int(sub) - 1 : int(sub)] # Select an evaluation Within Session evaluation_online = WithinSessionEvaluation( paradigm=paradigm, datasets=dataset, overwrite=True, random_state=42, n_jobs=1 ) # Print the results results_ALL = evaluation_online.process(pipelines) results_pipeline = results_ALL.groupby(["pipeline"], as_index=False)["score"].mean() results_pipeline_std = results_ALL.groupby(["pipeline"], as_index=False)["score"].std() results_pipeline["std"] = results_pipeline_std["score"] print(results_pipeline)