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Brain-Inspired Capture: Evidence-Driven Neuromimetic Perceptual Simulation for Visual Decoding

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Visual decoding of neurophysiological signals is a critical challenge for brain-computer interfaces (BCIs) and computational neuroscience. However, current approaches are often constrained by the systematic and stochastic gaps between neural and visual modalities, largely neglecting the intrinsic computational mechanisms of the Human Visual System (HVS). To address this, we propose Brain-Inspired Capture (BI-Cap), a neuromimetic perceptual simulation paradigm that aligns these modalities by emulating HVS processing. Specifically, we construct a neuromimetic pipeline comprising four biologically plausible dynamic and static transformations, coupled with Mutual Information (MI)-guided dynamic blur regulation to simulate adaptive visual processing. Furthermore, to mitigate the inherent non-stationarity of neural activity, we introduce an evidence-driven latent space representation. This formulation explicitly models uncertainty, thereby ensuring robust neural embeddings. Extensive evaluations on zero-shot brain-to-image retrieval across two public benchmarks demonstrate that BI-Cap substantially outperforms state-of-the-art methods, achieving relative gains of 9.2\% and 8.0\%, respectively. We have released the source code on GitHub through the link https://github.com/flysnow1024/BI-Cap.

Feixue Shao, Guangze Shi, Xueyu Liu, Yongfei Wu, Mingqiang Wei, Jianan Zhang, Jianbo Lu, Guiying Yan, Weihua Yang• 2026

Related benchmarks

TaskDatasetResultRank
Brain-to-image retrievalTHINGS-EEG2 Intra-subject v1 (test)
Top-1 Accuracy77.5
77
Brain-to-image retrievalTHINGS-MEG Intra-subject (test)
Top-1 Accuracy70
30
Brain-to-image retrievalTHINGS-MEG Inter-subject
Average Top-1 Score6
26
Brain-to-image retrievalTHINGS-EEG2 Inter-subject v1 (test)
Top-1 Accuracy28.5
17
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