Repairing Brain-Computer Interfaces with Fault-Based Data Acquisition
Cailin Winston, Caleb Winston, Chloe N Winston, Claris Winston, Cleah, Winston, Rajesh PN Rao, Ren\'e Just

TL;DR
This paper introduces a fault-based data acquisition and retraining methodology to improve the reliability and robustness of brain-computer interfaces, aiming for safer long-term use.
Contribution
It proposes partial test oracles and slice functions for fault detection and localization, enabling targeted data collection and retraining to repair BCIs.
Findings
Precisely localizes faults in BCIs
Reduces fault frequency through targeted retraining
Demonstrates effectiveness on five BCI applications
Abstract
Brain-computer interfaces (BCIs) decode recorded neural signals from the brain and/or stimulate the brain with encoded neural signals. BCIs span both hardware and software and have a wide range of applications in restorative medicine, from restoring movement through prostheses and robotic limbs to restoring sensation and communication through spellers. BCIs also have applications in diagnostic medicine, e.g., providing clinicians with data for detecting seizures, sleep patterns, or emotions. Despite their promise, BCIs have not yet been adopted for long-term, day-to-day use because of challenges related to reliability and robustness, which are needed for safe operation in all scenarios. Ensuring safe operation currently requires hours of manual data collection and recalibration, involving both patients and clinicians. However, data collection is not targeted at eliminating specific…
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