Object segmentation controls image reconstruction from natural scenes.
The structure of the physical world projects images onto our eyes. However, those images are often poorly representative of environmental structure: well-defined boundaries within the eye may correspond to irrelevant features of the physical world, while critical features of the physical world may b...
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doaj-d9049448ca954ebfbd1e042058deb5882021-07-02T08:01:28ZengPublic Library of Science (PLoS)PLoS Biology1544-91731545-78852017-08-01158e100261110.1371/journal.pbio.1002611Object segmentation controls image reconstruction from natural scenes.Peter NeriThe structure of the physical world projects images onto our eyes. However, those images are often poorly representative of environmental structure: well-defined boundaries within the eye may correspond to irrelevant features of the physical world, while critical features of the physical world may be nearly invisible at the retinal projection. The challenge for the visual cortex is to sort these two types of features according to their utility in ultimately reconstructing percepts and interpreting the constituents of the scene. We describe a novel paradigm that enabled us to selectively evaluate the relative role played by these two feature classes in signal reconstruction from corrupted images. Our measurements demonstrate that this process is quickly dominated by the inferred structure of the environment, and only minimally controlled by variations of raw image content. The inferential mechanism is spatially global and its impact on early visual cortex is fast. Furthermore, it retunes local visual processing for more efficient feature extraction without altering the intrinsic transduction noise. The basic properties of this process can be partially captured by a combination of small-scale circuit models and large-scale network architectures. Taken together, our results challenge compartmentalized notions of bottom-up/top-down perception and suggest instead that these two modes are best viewed as an integrated perceptual mechanism.http://europepmc.org/articles/PMC5565198?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peter Neri |
spellingShingle |
Peter Neri Object segmentation controls image reconstruction from natural scenes. PLoS Biology |
author_facet |
Peter Neri |
author_sort |
Peter Neri |
title |
Object segmentation controls image reconstruction from natural scenes. |
title_short |
Object segmentation controls image reconstruction from natural scenes. |
title_full |
Object segmentation controls image reconstruction from natural scenes. |
title_fullStr |
Object segmentation controls image reconstruction from natural scenes. |
title_full_unstemmed |
Object segmentation controls image reconstruction from natural scenes. |
title_sort |
object segmentation controls image reconstruction from natural scenes. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Biology |
issn |
1544-9173 1545-7885 |
publishDate |
2017-08-01 |
description |
The structure of the physical world projects images onto our eyes. However, those images are often poorly representative of environmental structure: well-defined boundaries within the eye may correspond to irrelevant features of the physical world, while critical features of the physical world may be nearly invisible at the retinal projection. The challenge for the visual cortex is to sort these two types of features according to their utility in ultimately reconstructing percepts and interpreting the constituents of the scene. We describe a novel paradigm that enabled us to selectively evaluate the relative role played by these two feature classes in signal reconstruction from corrupted images. Our measurements demonstrate that this process is quickly dominated by the inferred structure of the environment, and only minimally controlled by variations of raw image content. The inferential mechanism is spatially global and its impact on early visual cortex is fast. Furthermore, it retunes local visual processing for more efficient feature extraction without altering the intrinsic transduction noise. The basic properties of this process can be partially captured by a combination of small-scale circuit models and large-scale network architectures. Taken together, our results challenge compartmentalized notions of bottom-up/top-down perception and suggest instead that these two modes are best viewed as an integrated perceptual mechanism. |
url |
http://europepmc.org/articles/PMC5565198?pdf=render |
work_keys_str_mv |
AT peterneri objectsegmentationcontrolsimagereconstructionfromnaturalscenes |
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1721335280321953792 |