AbstractHuman 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 ~100ms, we found a marker of real-world scene size, i.e., spatial layout processing, at ~250ms 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 intri...
A fundamental question of cognition and perception has asked how the human brain represents the loca...
In navigating our environment, we rapidly process and extract meaning from visual cues. However, the...
The human visual system can rapidly recognize objects despite transformations that alter their appea...
The complex multi-stage architecture of cortical visual pathways provides the neural basis for effic...
Representations learned by deep convolutional neural networks (CNNs) for object recognition are a wi...
Our remarkable ability to process complex visual scenes is supported by a network of scene-selective...
A comprehensive picture of object processing in the human brain requires combining both spatial and ...
Summary Successful visual navigation requires a sense of the geometry of the local environment. How ...
Recognizing an object takes just a fraction of a second, less than the blink of an eye. Applying mul...
How do we understand the complex patterns of neural responses that underlie scene understanding? Stu...
The human visual system can only represent a small subset of the many objects present in cluttered s...
Visual scene category representations emerge very rapidly, yet the computational transformations tha...
The human visual system rapidly recognizes the categories and global properties of complex natural s...
To interact with objects in complex environments, we must know what they are and where they are in s...
<div><p>Visual scene category representations emerge very rapidly, yet the computational transformat...
A fundamental question of cognition and perception has asked how the human brain represents the loca...
In navigating our environment, we rapidly process and extract meaning from visual cues. However, the...
The human visual system can rapidly recognize objects despite transformations that alter their appea...
The complex multi-stage architecture of cortical visual pathways provides the neural basis for effic...
Representations learned by deep convolutional neural networks (CNNs) for object recognition are a wi...
Our remarkable ability to process complex visual scenes is supported by a network of scene-selective...
A comprehensive picture of object processing in the human brain requires combining both spatial and ...
Summary Successful visual navigation requires a sense of the geometry of the local environment. How ...
Recognizing an object takes just a fraction of a second, less than the blink of an eye. Applying mul...
How do we understand the complex patterns of neural responses that underlie scene understanding? Stu...
The human visual system can only represent a small subset of the many objects present in cluttered s...
Visual scene category representations emerge very rapidly, yet the computational transformations tha...
The human visual system rapidly recognizes the categories and global properties of complex natural s...
To interact with objects in complex environments, we must know what they are and where they are in s...
<div><p>Visual scene category representations emerge very rapidly, yet the computational transformat...
A fundamental question of cognition and perception has asked how the human brain represents the loca...
In navigating our environment, we rapidly process and extract meaning from visual cues. However, the...
The human visual system can rapidly recognize objects despite transformations that alter their appea...