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Exploring Brain Effective Connectivity in Visual Perception Using a Hierarchical Correlation Network

机译:使用分层相关网络探索视觉感知中的大脑有效连通性

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Brain-inspired computing is a research hotspot in artificial intelligence (AI). One of the key problems in this field is how to find the bridge between brain connectivity and data correlation in a connection-to-cognition model. Functional magnetic resonance imaging (fMRI) signals provide rich information about brain activities. Existing modeling approaches with fMRI focus on the strength information, but neglect structural information. In a previous work, we proposed a monolayer correlation network (CorrNet) to model the structural connectivity. In this paper, we extend the monolayer CorrNet to a hierarchical correlation network (HcorrNet) by analysing visual stimuli of natural images and fMRI signals in the entire visual cortex, that is, V1, V2 V3, V4, fusiform face area (FFA), the lateral occipital complex (LOC) and parahippocampal place area (PPA). Through the HcorrNet, the efficient connectivity of the brain can be inferred layer by layer. Then, the stimulus-sensitive activity mode of voxels can be extracted, and the forward encoding process of visual perception can be modeled. Both of them can guide the decoding process of fMRI signals, including classification and image reconstruction. In the experiments, we improved a dynamic evolving spike neuron network (SNN) as the classifier, and used Generative Adversarial Networks (GANs) to reconstruct image.
机译:脑激发的计算是人工智能(AI)中的研究热点。该字段中的一个关键问题是如何在连接到认知模型中找到大脑连接和数据相关之间的桥梁。功能磁共振成像(FMRI)信号提供有关大脑活动的丰富信息。现有建模方法与FMRI专注于强度信息,但忽略了结构信息。在以前的工作中,我们提出了一个单层相关网络(CORRNET)来模拟结构连接。在本文中,我们通过分析整个视觉皮层中的自然图像和FMRI信号的可视刺激,即V1,V2 V3,V4,梭形面部区域(FFA),将Monolayer CorrNet扩展到分层相关网络(HCorRNET)。侧枕骨复合体(LOC)和PARAHIPPopal Place面积(PPA)。通过啁啾,可以通过层推断大脑的有效连接。然后,可以提取体素的刺激敏感活动模式,并且可以建模视觉感知的前向编码过程。它们都可以指导FMRI信号的解码过程,包括分类和图像重建。在实验中,我们改进了一种动态发展的尖峰神经元网络(SNN)作为分类器,并使用生成的对抗网络(GANS)来重建图像。

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