The study explores Uncertainty Quantification (UQ) methods for non-invasive Motor Imagery Brain-Computer Interfaces. It distinguishes between aleatoric and epistemic uncertainty, focusing on rejection cases in BCIs. Various UQ methods like Deep Ensembles and Bayesian Neural Networks are compared for their performance. The research aims to identify misclassifications in cross-subject classification using different UQ methods. The study uses public datasets and benchmarking systems to evaluate the effectiveness of UQ methods. Results show that while Ensembles perform best, other methods like DUQ struggle with uncertainty estimation across subjects.
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