Spatially intermixed objects of different categories are parsed automatically

Abstract Our visual system is able to separate spatially intermixed objects into different categorical groups (e.g., berries and leaves) using the shape of feature distribution: Determining whether all objects belong to one or several categories depends on whether the distribution has one or several...

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Main Authors: Vladislav A. Khvostov, Anton O. Lukashevich, Igor S. Utochkin
Format: Article
Language:English
Published: Nature Publishing Group 2021-01-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-020-79828-4
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spelling doaj-a41de43ad9214254903dcf18ac55de622021-01-17T12:40:12ZengNature Publishing GroupScientific Reports2045-23222021-01-011111810.1038/s41598-020-79828-4Spatially intermixed objects of different categories are parsed automaticallyVladislav A. Khvostov0Anton O. Lukashevich1Igor S. Utochkin2Psychology Department, HSE UniversityPsychology Department, HSE UniversityPsychology Department, HSE UniversityAbstract Our visual system is able to separate spatially intermixed objects into different categorical groups (e.g., berries and leaves) using the shape of feature distribution: Determining whether all objects belong to one or several categories depends on whether the distribution has one or several peaks. Despite the apparent ease of rapid categorization, it is a very computationally demanding task, given severely limited “bottlenecks” of attention and working memory capable of processing only a few objects at a time. Here, we tested whether this rapid categorical parsing is automatic or requires attention. We used the visual mismatch negativity (vMMN) ERP component known as a marker of automatic sensory discrimination. 20 volunteers (16 female, mean age—22.7) participated in our study. Loading participants’ attention with a central task, we observed a substantial vMMN response to unattended background changes of categories defined by certain length-orientation conjunctions. Importantly, this occurred in conditions where the distributions of these features had several peaks and, hence, supported categorical separation. These results suggest that spatially intermixed objects are parsed into distinct categories automatically and give new insight into how the visual system can bypass the severe processing restrictions and form rich perceptual experience.https://doi.org/10.1038/s41598-020-79828-4
collection DOAJ
language English
format Article
sources DOAJ
author Vladislav A. Khvostov
Anton O. Lukashevich
Igor S. Utochkin
spellingShingle Vladislav A. Khvostov
Anton O. Lukashevich
Igor S. Utochkin
Spatially intermixed objects of different categories are parsed automatically
Scientific Reports
author_facet Vladislav A. Khvostov
Anton O. Lukashevich
Igor S. Utochkin
author_sort Vladislav A. Khvostov
title Spatially intermixed objects of different categories are parsed automatically
title_short Spatially intermixed objects of different categories are parsed automatically
title_full Spatially intermixed objects of different categories are parsed automatically
title_fullStr Spatially intermixed objects of different categories are parsed automatically
title_full_unstemmed Spatially intermixed objects of different categories are parsed automatically
title_sort spatially intermixed objects of different categories are parsed automatically
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-01-01
description Abstract Our visual system is able to separate spatially intermixed objects into different categorical groups (e.g., berries and leaves) using the shape of feature distribution: Determining whether all objects belong to one or several categories depends on whether the distribution has one or several peaks. Despite the apparent ease of rapid categorization, it is a very computationally demanding task, given severely limited “bottlenecks” of attention and working memory capable of processing only a few objects at a time. Here, we tested whether this rapid categorical parsing is automatic or requires attention. We used the visual mismatch negativity (vMMN) ERP component known as a marker of automatic sensory discrimination. 20 volunteers (16 female, mean age—22.7) participated in our study. Loading participants’ attention with a central task, we observed a substantial vMMN response to unattended background changes of categories defined by certain length-orientation conjunctions. Importantly, this occurred in conditions where the distributions of these features had several peaks and, hence, supported categorical separation. These results suggest that spatially intermixed objects are parsed into distinct categories automatically and give new insight into how the visual system can bypass the severe processing restrictions and form rich perceptual experience.
url https://doi.org/10.1038/s41598-020-79828-4
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AT antonolukashevich spatiallyintermixedobjectsofdifferentcategoriesareparsedautomatically
AT igorsutochkin spatiallyintermixedobjectsofdifferentcategoriesareparsedautomatically
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