神经解码中的前景注意:引导环路c- dec重构fMRI视觉刺激图像

Kai Chen, Yongqiang Ma, Mingyang Sheng, N. Zheng
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引用次数: 2

摘要

近年来,功能磁共振成像(fMRI)对视觉刺激图像的重建受到了广泛关注,为解释人类大脑提供了一种可能。由于功能磁共振成像数据具有高维、高噪声的特点,如何从功能磁共振成像数据中提取稳定、可靠、有用的信息进行图像重建成为一个具有挑战性的问题。受人类视觉注意机制的启发,本文提出了一种重建视觉刺激图像的新方法,该方法首先从功能磁共振成像(fMRI)中解码人类视觉显著区域,将人类视觉显著区域定义为前景注意(f -注意),然后在f -注意的引导下重建视觉图像。由于人脑被强烈地缠绕成脑沟和脑回,一些空间上相邻的体素在实践中是不相连的。因此,在fMRI解码时需要考虑全局信息,因此我们在f-注意解码过程中引入自注意模块,用于捕获全局信息。此外,为了在编码器-解码器的训练过程中获得更多的损失约束,我们还提出了一种新的训练策略loop - c- dec。实验结果表明,f -注意解码器成功解码了fMRI的视觉注意,f -注意引导下的loop - c- dec也能很好地重建视觉刺激图像。
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Foreground-attention in neural decoding: Guiding Loop-Enc-Dec to reconstruct visual stimulus images from fMRI
The reconstruction of visual stimulus images from functional Magnetic Resonance Imaging (fMRI) has received extensive attention in recent years, which provides a possibility to interpret the human brain. Due to the high-dimensional and high-noise characteristics of fMRI data, how to extract stable, reliable and useful information from fMRI data for image reconstruction has become a challenging problem. Inspired by the mechanism of human visual attention, in this paper, we propose a novel method of reconstructing visual stimulus images, which first decodes human visual salient region from fMRI, we define human visual salient region as foreground attention (F-attention), and then reconstructs the visual images guided by F-attention. Because the human brain is strongly wound into sulci and gyri, some spatially adjacent voxels are not connected in practice. Therefore, it is necessary to consider the global information when decoding fMRI, so we introduce the self-attention module for capturing global information into the process of decoding F-attention. In addition, in order to obtain more loss constraints in the training process of encoder-decoder, we also propose a new training strategy called Loop-Enc-Dec. The experimental results show that the F-attention decoder decodes the visual attention from fMRI successfully, and the Loop-Enc-Dec guided by F-attention can also well reconstruct the visual stimulus images.
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