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Relating deep neural network representations to EEG-fMRI spatiotemporal dynamics in a perceptual decision-making task

机译:在感知决策任务中将深度神经网络表示与EEG-FMRI时空动力相关

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The hierarchical architecture of deep convolutional neural networks (CNN) resembles the multi-level processing stages of the human visual system during object recognition. Converging evidence suggests that this hierarchical organization is key to the CNN achieving human-level performance in object categorization. In this paper, we leverage the hierarchical organization of the CNN to investigate the spatiotemporal dynamics of rapid visual processing in the human brain. Specifically we focus on perceptual decisions associated with different levels of visual ambiguity. Using simultaneous EEG-fMRI, we demonstrate the temporal and spatial hierarchical correspondences between the multi-stage processing in CNN and the activity observed in the EEG and fMRI. The hierarchical correspondence suggests a processing pathway during rapid visual decisionmaking that involves the interplay between sensory regions, the default mode network (DMN) and the frontal-parietal control network (FPCN).
机译:深度卷积神经网络(CNN)的分层体系结构类似于物体识别期间人类视觉系统的多级处理阶段。融合证据表明,该分层组织是CNN在对象分类中实现人为级性能的关键。在本文中,我们利用CNN的分层组织来研究人脑中快速视觉处理的时空动态。具体而言,我们专注于与不同层次的视觉模糊性相关的感知决定。使用同步EEG-FMRI,我们展示了CNN中的多级处理与EEG和FMRI中观察到的活动之间的时间和空间分层对应。分层对应涉及快速视觉决策过程中的处理途径,其涉及感觉区域,默认模式网络(DMN)和前视网(FPCN)之间的相互作用。

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