Temporal and spatial ensemble statistics are formed by distinct mechanisms

Our brains can extract a summary representation of the facial characteristics provided by a group of faces. To date, there has been a lack of clarity as to what calculations the brain is actually performing during this ensemble perception. For example, does ensemble processing average the fiducial p...

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Main Authors: Ying, Haojiang, Burns J., Edwin J., Choo, Amanda M., Xu, Hong
Other Authors: School of Social Sciences
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/152281
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1522812021-08-05T01:06:43Z Temporal and spatial ensemble statistics are formed by distinct mechanisms Ying, Haojiang Burns J., Edwin J. Choo, Amanda M. Xu, Hong School of Social Sciences Social sciences::Psychology Rapid Serial Visual Presentation Adaptation Our brains can extract a summary representation of the facial characteristics provided by a group of faces. To date, there has been a lack of clarity as to what calculations the brain is actually performing during this ensemble perception. For example, does ensemble processing average the fiducial points (e.g., distance between the eyes, width of the mouth) and surface characteristics (e.g., skin tone) of a set of faces in a fashion that produces what we call a ‘morph average’ face from the group? Or does ensemble perception extract a general ‘gist average’ of the face set (e.g., these faces are unattractive)? Here, we take advantage of the fact that the ‘morph average’ face derived from a group of faces is more attractive than the ‘gist average’. If ensemble perception is performing morph averaging, then the adaptation aftereffects elicited by a morphed average face from a group should be equivalent to those elicited by the group. By contrast, if ensemble perception reflects gist averaging, then the aftereffects produced by the group should be distinct from those elicited by the more attractive morphed average face. In support of the morph averaging hypothesis, we show that the adaptation aftereffects derived via temporal ensemble perception of a group of faces are equal to those produced by the group's morphed average face. Moreover, these effects increase as a linear function of increasing attractiveness in the underlying group. We also reveal that spatial ensemble processing is not equal to temporal ensemble processing, but instead reflects the ‘gist’ attractiveness of the group of faces; e.g., these faces are unattractive. Finally, gist averaging of a spatially presented group of faces is abolished when a temporal manipulation is additionally employed; under these circumstances, morph averaging becomes apparent again. In summary, we have shown for the first time that temporal and spatial ensemble statistics reflect qualitatively different perceptual calculations. Ministry of Education (MOE) Nanyang Technological University Supported by Nanyang Technological University Research Scholarship (HY), Undergraduate Research Experience on Campus (AC), College of Arts, Humanities and Social Sciences Incentive Scheme (HX), and Ministry of Education - Singapore Academic Research Fund (AcRF) Tier 1 (HX). H. Ying is also supported by the Ministry of Education - China Project of Humanities and Social Sciences (19YJC190030), the City & University strategy-Soochow University Leading Research Team in Humanities and Social Sciences. Parts of this research (data from Exp 1) were presented at the Annual Meeting of Visual Science Society (VSS), May 2017, St. Pete Beach, Florida. The research reported here forms part of H. Ying's Ph.D. thesis at Nanyang Technological University. 2021-08-05T01:06:43Z 2021-08-05T01:06:43Z 2020 Journal Article Ying, H., Burns J., E. J., Choo, A. M. & Xu, H. (2020). Temporal and spatial ensemble statistics are formed by distinct mechanisms. Cognition, 195, 104128-. https://dx.doi.org/10.1016/j.cognition.2019.104128 0010-0277 https://hdl.handle.net/10356/152281 10.1016/j.cognition.2019.104128 31731114 2-s2.0-85074670671 195 104128 en Cognition © 2019 Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Social sciences::Psychology
Rapid Serial Visual Presentation
Adaptation
spellingShingle Social sciences::Psychology
Rapid Serial Visual Presentation
Adaptation
Ying, Haojiang
Burns J., Edwin J.
Choo, Amanda M.
Xu, Hong
Temporal and spatial ensemble statistics are formed by distinct mechanisms
description Our brains can extract a summary representation of the facial characteristics provided by a group of faces. To date, there has been a lack of clarity as to what calculations the brain is actually performing during this ensemble perception. For example, does ensemble processing average the fiducial points (e.g., distance between the eyes, width of the mouth) and surface characteristics (e.g., skin tone) of a set of faces in a fashion that produces what we call a ‘morph average’ face from the group? Or does ensemble perception extract a general ‘gist average’ of the face set (e.g., these faces are unattractive)? Here, we take advantage of the fact that the ‘morph average’ face derived from a group of faces is more attractive than the ‘gist average’. If ensemble perception is performing morph averaging, then the adaptation aftereffects elicited by a morphed average face from a group should be equivalent to those elicited by the group. By contrast, if ensemble perception reflects gist averaging, then the aftereffects produced by the group should be distinct from those elicited by the more attractive morphed average face. In support of the morph averaging hypothesis, we show that the adaptation aftereffects derived via temporal ensemble perception of a group of faces are equal to those produced by the group's morphed average face. Moreover, these effects increase as a linear function of increasing attractiveness in the underlying group. We also reveal that spatial ensemble processing is not equal to temporal ensemble processing, but instead reflects the ‘gist’ attractiveness of the group of faces; e.g., these faces are unattractive. Finally, gist averaging of a spatially presented group of faces is abolished when a temporal manipulation is additionally employed; under these circumstances, morph averaging becomes apparent again. In summary, we have shown for the first time that temporal and spatial ensemble statistics reflect qualitatively different perceptual calculations.
author2 School of Social Sciences
author_facet School of Social Sciences
Ying, Haojiang
Burns J., Edwin J.
Choo, Amanda M.
Xu, Hong
format Article
author Ying, Haojiang
Burns J., Edwin J.
Choo, Amanda M.
Xu, Hong
author_sort Ying, Haojiang
title Temporal and spatial ensemble statistics are formed by distinct mechanisms
title_short Temporal and spatial ensemble statistics are formed by distinct mechanisms
title_full Temporal and spatial ensemble statistics are formed by distinct mechanisms
title_fullStr Temporal and spatial ensemble statistics are formed by distinct mechanisms
title_full_unstemmed Temporal and spatial ensemble statistics are formed by distinct mechanisms
title_sort temporal and spatial ensemble statistics are formed by distinct mechanisms
publishDate 2021
url https://hdl.handle.net/10356/152281
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