cs.AI updates on arXiv.org 10月21日 12:21
fMRI信号到图像重建:PRISM模型新突破
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本文提出一种名为PRISM的模型,通过将fMRI信号映射到结构化文本空间,实现了视觉刺激的有效重建。研究发现,fMRI信号与语言模型的文本空间更相似,且文本表示和生成模型需适应视觉刺激的组合性质。实验结果表明,PRISM模型在图像重建方面优于现有方法,感知损失降低8%。

arXiv:2510.16196v1 Announce Type: cross Abstract: Understanding how the brain encodes visual information is a central challenge in neuroscience and machine learning. A promising approach is to reconstruct visual stimuli, essentially images, from functional Magnetic Resonance Imaging (fMRI) signals. This involves two stages: transforming fMRI signals into a latent space and then using a pretrained generative model to reconstruct images. The reconstruction quality depends on how similar the latent space is to the structure of neural activity and how well the generative model produces images from that space. Yet, it remains unclear which type of latent space best supports this transformation and how it should be organized to represent visual stimuli effectively. We present two key findings. First, fMRI signals are more similar to the text space of a language model than to either a vision based space or a joint text image space. Second, text representations and the generative model should be adapted to capture the compositional nature of visual stimuli, including objects, their detailed attributes, and relationships. Building on these insights, we propose PRISM, a model that Projects fMRI sIgnals into a Structured text space as an interMediate representation for visual stimuli reconstruction. It includes an object centric diffusion module that generates images by composing individual objects to reduce object detection errors, and an attribute relationship search module that automatically identifies key attributes and relationships that best align with the neural activity. Extensive experiments on real world datasets demonstrate that our framework outperforms existing methods, achieving up to an 8% reduction in perceptual loss. These results highlight the importance of using structured text as the intermediate space to bridge fMRI signals and image reconstruction.

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fMRI 图像重建 文本空间 PRISM模型 感知损失
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