User-wise Perturbations for User Identity Protection in EEG-Based BCIs
Xiaoqing Chen, Siyang Li, Yunlu Tu, Ziwei Wang, Dongrui Wu

TL;DR
This paper introduces user-wise perturbations to EEG data to protect user identity in BCIs, effectively hiding personal information while preserving task-related signals, thus addressing privacy concerns in EEG-based BCIs.
Contribution
It proposes four novel user-wise privacy-preserving perturbations that make user identity information unlearnable without affecting BCI task accuracy.
Findings
Perturbations successfully hide user identity in EEG data.
EEG task performance remains unaffected after applying perturbations.
Method is validated across multiple datasets and classifiers.
Abstract
Objective: An electroencephalogram (EEG)-based brain-computer interface (BCI) is a direct communication pathway between the human brain and a computer. Most research so far studied more accurate BCIs, but much less attention has been paid to the ethics of BCIs. Aside from task-specific information, EEG signals also contain rich private information, e.g., user identity, emotion, disorders, etc., which should be protected. Approach: We show for the first time that adding user-wise perturbations can make identity information in EEG unlearnable. We propose four types of user-wise privacy-preserving perturbations, i.e., random noise, synthetic noise, error minimization noise, and error maximization noise. After adding the proposed perturbations to EEG training data, the user identity information in the data becomes unlearnable, while the BCI task information remains unaffected. Main results:…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Cognitive Functions and Memory · Advanced Memory and Neural Computing
MethodsSoftmax · Attention Is All You Need
