Hierarchical Object Representations in the Visual Cortex and Computer Vision

Over the past 40 years, neurobiology and computational neuroscience has proved that deeper understanding of visual processes in humans and non-human primates can lead to important advancements in computational perception theories and systems. One of the main difficulties that arises when designing a...

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Superior document:Frontiers Research Topics
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Year of Publication:2016
Language:English
Series:Frontiers Research Topics
Physical Description:1 electronic resource (290 p.)
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spelling Antonio Rodriguez-Sanchez auth
Hierarchical Object Representations in the Visual Cortex and Computer Vision
Frontiers Media SA 2016
1 electronic resource (290 p.)
text txt rdacontent
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Frontiers Research Topics
Over the past 40 years, neurobiology and computational neuroscience has proved that deeper understanding of visual processes in humans and non-human primates can lead to important advancements in computational perception theories and systems. One of the main difficulties that arises when designing automatic vision systems is developing a mechanism that can recognize - or simply find - an object when faced with all the possible variations that may occur in a natural scene, with the ease of the primate visual system. The area of the brain in primates that is dedicated at analyzing visual information is the visual cortex. The visual cortex performs a wide variety of complex tasks by means of simple operations. These seemingly simple operations are applied to several layers of neurons organized into a hierarchy, the layers representing increasingly complex, abstract intermediate processing stages. In this Research Topic we propose to bring together current efforts in neurophysiology and computer vision in order 1) To understand how the visual cortex encodes an object from a starting point where neurons respond to lines, bars or edges to the representation of an object at the top of the hierarchy that is invariant to illumination, size, location, viewpoint, rotation and robust to occlusions and clutter; and 2) How the design of automatic vision systems benefit from that knowledge to get closer to human accuracy, efficiency and robustness to variations.
English
object recognition
Neuronal modeling
shape
Neuromorphic
Computational neuroscence
Attention
Visual Cortex
Computer Vision
2-88919-798-0
Mazyar Fallah auth
Ales Leonardis auth
language English
format eBook
author Antonio Rodriguez-Sanchez
spellingShingle Antonio Rodriguez-Sanchez
Hierarchical Object Representations in the Visual Cortex and Computer Vision
Frontiers Research Topics
author_facet Antonio Rodriguez-Sanchez
Mazyar Fallah
Ales Leonardis
author_variant a r s ars
author2 Mazyar Fallah
Ales Leonardis
author2_variant m f mf
a l al
author_sort Antonio Rodriguez-Sanchez
title Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_full Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_fullStr Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_full_unstemmed Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_auth Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_new Hierarchical Object Representations in the Visual Cortex and Computer Vision
title_sort hierarchical object representations in the visual cortex and computer vision
series Frontiers Research Topics
series2 Frontiers Research Topics
publisher Frontiers Media SA
publishDate 2016
physical 1 electronic resource (290 p.)
isbn 2-88919-798-0
illustrated Not Illustrated
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