Uncertainty Quantification for cross-subject Motor Imagery classification

Prithviraj Manivannan, Ivo Pascal de Jong*, Matias Valdenegro-Toro, Andreea Ioana Sburlea

*Corresponding author for this work

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Abstract

Uncertainty Quantification aims to determine when the prediction from a Machine Learning model is likely to be wrong. Computer Vision research has explored methods for determining epistemic uncertainty (also known as model uncertainty), which should correspond with generalisation error. These methods theoretically allow to predict misclassifications due to inter-subject variability. We applied a variety of Uncertainty Quantification methods to predict misclassifications for a Motor Imagery Brain Computer Interface. Deep Ensembles performed best, both in terms of classification performance and cross-subject Uncertainty Quantification performance. However, we found that standard CNNs with Softmax output performed better than some of the more advanced methods.
Original languageEnglish
Title of host publicationProceedings of the 9th Graz Brain-Computer Interface Conference 2024
PublisherVerlag der Technischen Universität Graz
Pages86-91
Number of pages6
ISBN (Print)978-3-99161-014-4
DOIs
Publication statusPublished - 9-Sept-2024

Keywords

  • Uncertainty Quantification
  • Bayesian Neural Networks
  • Motor Imagery
  • Brain Computer Interface
  • Deep Learning

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