Self-Supervised Evolutionary Learning of Neurodynamic Progression and Identity Manifolds from EEG During Safety-Critical Decision Making
Xiaoshan Zhou, Carol C. Menassa, Vineet R. Kamat

TL;DR
This paper introduces a self-supervised evolutionary learning framework that uncovers personalized neurodynamic progressions and identity manifolds from continuous EEG during safety-critical decision tasks, enhancing security and interpretability.
Contribution
It presents a novel self-supervised method that jointly optimizes neurodynamic segmentation and feature attribution using evolutionary search, without external labels or predefined models.
Findings
Achieves higher boundary contrast than inference-based methods
Improves cross-trial generalization of intention boundaries
Reveals stable, person-specific neurodynamic signatures
Abstract
Human-vehicle interaction in safety-critical traffic environments increasingly incorporates neural sensing to infer user intent and cognitive state, yet most existing approaches either treat electroencephalography (EEG) as a static biometric credential or train task-specific decoders that ignore long-term neurodynamic trajectories, lacking mechanisms for secure user identity and continual modeling of evolving cognitive states. This work proposes a self-supervised evolutionary learning (SSEL) framework that discovers individualized neurodynamic progressions and intrinsic identity manifolds directly from continuous EEG, without external labels or predefined cognitive stage models. SSEL jointly optimizes within-stage temporal predictability, boundary contrast, cross-trial alignment, and sparse stage-specific feature weights, while a population-based evolutionary search enables direct…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Human-Automation Interaction and Safety · Autonomous Vehicle Technology and Safety
