Self-Calibrating BCIs: Ranking and Recovery of Mental Targets Without Labels
Self-Calibrating BCIs: Ranking and Recovery of Mental Targets Without Labels
We consider the problem of recovering a mental target (e.g., an image of a face) that a participant has in mind from paired EEG (i.e., brain responses) and image (i.e., perceived faces) data collected during interactive sessions without access to labeled information. The problem has been previously explored with labeled data but not via self-calibration, where labeled data is unavailable. Here, we present the first framework and an algorithm, CURSOR, that learns to recover unknown mental targets without access to labeled data or pre-trained decoders. Our experiments on naturalistic images of faces demonstrate that CURSOR can (1) predict image similarity scores that correlate with human perceptual judgments without any label information, (2) use these scores to rank stimuli against an unknown mental target, and (3) generate new stimuli indistinguishable from the unknown mental target (validated via a user study, N=53).
Tuukka Ruotsalo、Jonathan Grizou、Carlos de la Torre-Ortiz
计算技术、计算机技术
Tuukka Ruotsalo,Jonathan Grizou,Carlos de la Torre-Ortiz.Self-Calibrating BCIs: Ranking and Recovery of Mental Targets Without Labels[EB/OL].(2025-06-11)[2025-06-21].https://arxiv.org/abs/2506.11151.点此复制
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