Cross-Subject Deep Transfer Models for Evoked Potentials in Brain-Computer Interface

Chad Mello,Troy Weingart, Ethan M. Rudd

ICPR(2022)

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摘要
Brain Computer Interface (BCI) technologies have the potential to improve the lives of millions of people around the world, whether through assistive technologies or clinical diagnostic tools. Despite advancements in the field, however, at present consumer and clinical viability remains low. A key reason for this is that many of the existing BCI deployments require substantial data collection per end-user, which can be cumbersome, tedious, and error-prone to collect. We address this challenge via a deep learning model, which, when trained across sufficient data from multiple subjects, offers reasonable performance out-of-the-box, and can be customized to novel subjects via a transfer learning process. We demonstrate the fundamental viability of our approach by repurposing an older but well-curated electroencephalography (EEG) dataset and benchmarking against several common approaches/techniques. We then partition this dataset into a transfer learning benchmark and demonstrate that our approach significantly reduces data collection burden per-subject. This suggests that our model and methodology may yield improvements to BCI technologies and enhance their consumer/clinical viability.
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关键词
assistive technologies,BCI technologies,Brain Computer Interface technologies,brain-computer Interface,clinical diagnostic tools,cross-subject deep transfer models,data collection burden per-subject,deep learning model,end-user,error-prone,evoked potentials,existing BCI deployments,fundamental viability,key reason,multiple subjects,reasonable performance out-of-the-box,substantial data collection,transfer learning benchmark,transfer learning process,well-curated electroencephalography dataset
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