NeuroFlow: Toward Unified Visual Encoding and Decoding from Neural Activity
Weijian Mai, Mu Nan, Yu Zhu, Jiahang Cao, Rui Zhang, Yuqin Dai, Chunfeng Song, Andrew F. Luo, Jiamin Wu

TL;DR
NeuroFlow introduces a unified framework that jointly models visual encoding and decoding from neural activity, improving efficiency and consistency over separate models.
Contribution
It is the first to unify visual encoding and decoding within a single flow model using a variational backbone and reversible flow matching.
Findings
NeuroFlow achieves superior performance in encoding and decoding tasks.
The model demonstrates higher computational efficiency than isolated methods.
NeuroFlow captures consistent neural activation patterns.
Abstract
Visual encoding and decoding models act as gateways to understanding the neural mechanisms underlying human visual perception. Typically, visual encoding models that predict brain activity from stimuli and decoding models that reproduce stimuli from brain activity are treated as distinct tasks, requiring separate models and training procedures. This separation is inefficient and fails to model the consistency between encoding and decoding processes. To address this limitation, we propose NeuroFlow, the first unified framework that jointly models visual encoding and decoding from neural activity within a single flow model. NeuroFlow introduces two key components: (1) NeuroVAE is designed as a variational backbone to model neural variability and establish a compact, semantically structured latent space for bidirectional modeling across visual and neural modalities. (2) Cross-modal Flow…
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