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Dynamics of scene representations in the human brain revealed by magnetoencephalography and deep neural networks

机译:磁脑和深神经网络揭示人脑中场景表示的动态

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摘要

Human scene recognition is a rapid multistep process evolving over time from single scene image to spatial layout processing. We used multivariate pattern analyses on magnetoencephalography (MEG) data to unravel the time course of this cortical process. Following an early signal for lower-level visual analysis of single scenes at 100 ms, we found a marker of real-world scene size, i.e. spatial layout processing, at 250 ms indexing neural representations robust to changes in unrelated scene properties and viewing conditions. For a quantitative model of how scene size representations may arise in the brain, we compared MEG data to a deep neural network model trained on scene classification. Representations of scene size emerged intrinsically in the model, and resolved emerging neural scene size representation. Together our data provide a first description of an electrophysiological signal for layout processing in humans, and suggest that deep neural networks are a promising framework to investigate how spatial layout representations emerge in the human brain.
机译:人类场景识别是一种从单场图像到空间布局处理的时间快速多步骤过程。我们在磁性脑图(MEG)数据上使用了多变量模式分析,以解开该皮质过程的时间过程。在100毫秒的单个场景的较低级别视觉分析的早期信号之后,我们发现了一个现实世界场景大小的标记,即空间布局处理,在250 ms索引神经表示中稳健地改变不相关场景属性和查看条件。对于大脑中可能出现的场景大小表示的定量模型,我们将MEG数据与在场景分类上培训的深度神经网络模型中比较。在模型中的本质上出现的场景大小的表示,并解决了新兴神经场景大小表示。我们的数据一起提供了用于人类布局处理的电生理信号的首次描述,并表明深神经网络是一个有望的框架,用于调查空间布局表示如何在人脑中出现的方式。

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