通过无监督学习从 3t fmri 数据中重建视网膜视觉图像。

Yujian Xiong, Wenhui Zhu, Zhong-Lin Lu, Yalin Wang
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引用次数: 0

摘要

从大脑活动中重建人类视觉输入,特别是通过功能磁共振成像(fMRI),为揭示人类视觉系统的机制提供了前景广阔的途径。尽管深度学习方法在提高视觉重建的质量和可解释性方面取得了长足进步,但对高质量、长时间、特定对象的 7 特斯拉 fMRI 实验仍有大量需求。在整合各种较小的 3-Tesla 数据集或使用简短和低质量的 fMRI 扫描来适应新受试者方面存在挑战。针对这些限制,我们提出了一个新颖的框架,通过无监督生成对抗网络(GAN),利用分别在 7T 和 3T 两个不同的 fMRI 数据集上进行的非配对训练,生成增强的 3T fMRI 数据。这种方法旨在克服 7T 高质量数据稀缺的局限性,以及 3T 实验中短暂和低质量扫描带来的挑战。在本文中,我们展示了增强型 3T fMRI 数据的重建能力,与在单个受试者身上训练和测试的数据密集型方法相比,该方法在生成卓越的输入视觉图像方面表现突出。
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RECONSTRUCTING RETINAL VISUAL IMAGES FROM 3T FMRI DATA ENHANCED BY UNSUPERVISED LEARNING.

The reconstruction of human visual inputs from brain activity, particularly through functional Magnetic Resonance Imaging (fMRI), holds promising avenues for unraveling the mechanisms of the human visual system. Despite the significant strides made by deep learning methods in improving the quality and interpretability of visual reconstruction, there remains a substantial demand for high-quality, long-duration, subject-specific 7-Tesla fMRI experiments. The challenge arises in integrating diverse smaller 3-Tesla datasets or accommodating new subjects with brief and low-quality fMRI scans. In response to these constraints, we propose a novel framework that generates enhanced 3T fMRI data through an unsupervised Generative Adversarial Network (GAN), leveraging unpaired training across two distinct fMRI datasets in 7T and 3T, respectively. This approach aims to overcome the limitations of the scarcity of high-quality 7-Tesla data and the challenges associated with brief and low-quality scans in 3-Tesla experiments. In this paper, we demonstrate the reconstruction capabilities of the enhanced 3T fMRI data, highlighting its proficiency in generating superior input visual images compared to data-intensive methods trained and tested on a single subject.

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