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Backpropagation-Free Test-Time Adaptation for Lightweight EEG-Based Brain-Computer Interfaces

About

Electroencephalogram (EEG)-based brain-computer interfaces (BCIs) face significant deployment challenges due to inter-subject variability, signal non-stationarity, and computational constraints. While test-time adaptation (TTA) mitigates distribution shifts under online data streams without per-use calibration sessions, existing TTA approaches heavily rely on explicitly defined loss objectives that require backpropagation for updating model parameters, which incurs computational overhead, privacy risks, and sensitivity to noisy data streams. This paper proposes Backpropagation-Free Transformations (BFT), a TTA approach for EEG decoding that eliminates such issues. BFT applies multiple sample-wise transformations of knowledge-guided augmentations or approximate Bayesian inference to each test trial, generating multiple prediction scores for a single test sample. A learning-to-rank module enhances the weighting of these predictions, enabling robust aggregation for uncertainty suppression during inference under theoretical justifications. Extensive experiments on five EEG datasets of motor imagery classification and driver drowsiness regression tasks demonstrate the effectiveness, versatility, robustness, and efficiency of BFT. This research enables lightweight plug-and-play BCIs on resource-constrained devices, broadening the real-world deployment of decoding algorithms for EEG-based BCI.

Siyang Li, Jiayi Ouyang, Zhenyao Cui, Ziwei Wang, Tianwang Jia, Feng Wan, Dongrui Wu• 2026

Related benchmarks

TaskDatasetResultRank
Binary ClassificationZHOU Subject S3 2016
Accuracy94.33
26
Cross-subject Binary ClassificationHighGamma MI EEG cross-subject
Accuracy0.7903
26
Binary ClassificationZHOU2016 Subject S1
Accuracy84.03
26
Binary ClassificationZHOU Average 2016
Accuracy85.11
26
Binary ClassificationZHOU Subject S4 2016
Accuracy84.08
26
Cross-subject Binary ClassificationBNCI2014001 cross-subject
Accuracy77.8
26
Binary ClassificationZHOU2016 Subject S2
Accuracy79.33
26
Driver Drowsiness EstimationDriving
Correlation Coefficient (CC)0.535
16
Driver Drowsiness EstimationSEED-VIG
CC0.629
16
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