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Spectral Transfer Learning Using Information Geometry for a User-Independent Brain-Computer Interface
Author(s) -
Nicholas R. Waytowich,
Ver J. Lawhern,
Addison Bohan,
Kenneth R. Ball,
Brent J. Lance
Publication year - 2016
Publication title -
frontiers in neuroscience
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.499
H-Index - 102
eISSN - 1662-4548
pISSN - 1662-453X
DOI - 10.3389/fnins.2016.00430
Subject(s) - brain–computer interface , computer science , transfer of learning , interface (matter) , calibration , rapid serial visual presentation , artificial intelligence , machine learning , information transfer , transfer (computing) , task (project management) , signal (programming language) , human–computer interaction , pattern recognition (psychology) , electroencephalography , cognition , psychology , telecommunications , statistics , mathematics , management , bubble , psychiatry , maximum bubble pressure method , parallel computing , neuroscience , economics , biology , programming language
Recent advances in signal processing and machine learning techniques have enabled the application of Brain-Computer Interface (BCI) technologies to fields such as medicine, industry, and recreation; however, BCIs still suffer from the requirement of frequent calibration sessions due to the intra- and inter-individual variability of brain-signals, which makes calibration suppression through transfer learning an area of increasing interest for the development of practical BCI systems. In this paper, we present an unsupervised transfer method (spectral transfer using information geometry, STIG), which ranks and combines unlabeled predictions from an ensemble of information geometry classifiers built on data from individual training subjects. The STIG method is validated in both off-line and real-time feedback analysis during a rapid serial visual presentation task (RSVP). For detection of single-trial, event-related potentials (ERPs), the proposed method can significantly outperform existing calibration-free techniques as well as outperform traditional within-subject calibration techniques when limited data is available. This method demonstrates that unsupervised transfer learning for single-trial detection in ERP-based BCIs can be achieved without the requirement of costly training data, representing a step-forward in the overall goal of achieving a practical user-independent BCI system.

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