Ensemble statistics of faces

Ensemble statistics describes the ability of the visual system to summarize the information provided by a group of objects. This thesis refines the theoretical framework of ensemble statistics of faces throughout four studies. Study 1 investigated involuntary ensemble statistics of facial expressio...

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Main Author: Ying, Haojiang
Other Authors: Xu Hong
Format: Theses and Dissertations
Language:English
Published: 2019
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Online Access:https://hdl.handle.net/10356/89893
http://hdl.handle.net/10220/47740
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-898932020-06-24T08:40:36Z Ensemble statistics of faces Ying, Haojiang Xu Hong School of Social Sciences DRNTU::Social sciences::Psychology::Experimental psychology Ensemble statistics describes the ability of the visual system to summarize the information provided by a group of objects. This thesis refines the theoretical framework of ensemble statistics of faces throughout four studies. Study 1 investigated involuntary ensemble statistics of facial expressions during rapid serial visual presentation (RSVP). Prolonged exposure to RSVP of faces led to significant facial expression adaptation aftereffects, which could be explained by ensemble statistics. Further testing clarified that this representation was only modulated by the mean information in that stream. In summary, Study 1 examined the involuntary ensemble coding of facial expressions and hinted at the potential mechanism behind the formation of face space. Comparing adaptation aftereffects, Study 2 showed that temporal and spatial ensemble statistics of faces arise from distinct mechanisms that produce qualitatively different perceptual outcomes. The visual system extracts the low-level ‘computational’ average from faces when faces are presented individually across time. However, the spatial ensemble statistics summarizes the higher-level gist. Study 2, for the first time, showed there are distinctive mechanisms for ensemble coding of the same facial charateristics. Studying facial attractiveness adaptation and the ‘cheerleader effect’ (i.e. faces are perceived as more attractive when surrounded by others rather than being alone), Study 3 linked these two important phenomena in facial attractiveness with ensemble statistics. The mean attractiveness of the crowd (determined by ensemble statistics) biased the perceived attractiveness of the subsequently viewed face (the adaptation aftereffect). Similarly, the levels of attractiveness in a simultaneously presented crowd could also affect a target face (the ‘cheerleader effect’). Both past and present experience (determined by ensemble statistics) therefore impact the perception of facial attractiveness. Study 3 showed that the ensemble coding is ubiquitous in face perception and shapes two important phenomena in facial attractiveness. Also, the findings suggested how external factors, the previous and present exposures to faces, affect the attractiveness perception. Converging evidence from Study 4 emphasized the role of attention in both explicit and implicit ensemble statistics of facial expressions, and also suggested that the ensemble statistics is a weighted average of the visual input rather than the simple average. This study further clarified the averaging mechanism of ensemble coding and unveiled the relationship between ensemble coding of the face and attention. Taken together, the thesis examined the mechanisms involved in high-level ensemble statistics and the relationship among ensemble statistics, face perception, and attention. The results may shed light on a more comprehensive understanding of face perception and visual processing. Doctor of Philosophy 2019-02-28T02:12:17Z 2019-12-06T17:36:04Z 2019-02-28T02:12:17Z 2019-12-06T17:36:04Z 2019 Thesis Ying, H. (2019). Ensemble statistics of faces. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/89893 http://hdl.handle.net/10220/47740 10.32657/10220/47740 en 287 p. application/pdf
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Social sciences::Psychology::Experimental psychology
spellingShingle DRNTU::Social sciences::Psychology::Experimental psychology
Ying, Haojiang
Ensemble statistics of faces
description Ensemble statistics describes the ability of the visual system to summarize the information provided by a group of objects. This thesis refines the theoretical framework of ensemble statistics of faces throughout four studies. Study 1 investigated involuntary ensemble statistics of facial expressions during rapid serial visual presentation (RSVP). Prolonged exposure to RSVP of faces led to significant facial expression adaptation aftereffects, which could be explained by ensemble statistics. Further testing clarified that this representation was only modulated by the mean information in that stream. In summary, Study 1 examined the involuntary ensemble coding of facial expressions and hinted at the potential mechanism behind the formation of face space. Comparing adaptation aftereffects, Study 2 showed that temporal and spatial ensemble statistics of faces arise from distinct mechanisms that produce qualitatively different perceptual outcomes. The visual system extracts the low-level ‘computational’ average from faces when faces are presented individually across time. However, the spatial ensemble statistics summarizes the higher-level gist. Study 2, for the first time, showed there are distinctive mechanisms for ensemble coding of the same facial charateristics. Studying facial attractiveness adaptation and the ‘cheerleader effect’ (i.e. faces are perceived as more attractive when surrounded by others rather than being alone), Study 3 linked these two important phenomena in facial attractiveness with ensemble statistics. The mean attractiveness of the crowd (determined by ensemble statistics) biased the perceived attractiveness of the subsequently viewed face (the adaptation aftereffect). Similarly, the levels of attractiveness in a simultaneously presented crowd could also affect a target face (the ‘cheerleader effect’). Both past and present experience (determined by ensemble statistics) therefore impact the perception of facial attractiveness. Study 3 showed that the ensemble coding is ubiquitous in face perception and shapes two important phenomena in facial attractiveness. Also, the findings suggested how external factors, the previous and present exposures to faces, affect the attractiveness perception. Converging evidence from Study 4 emphasized the role of attention in both explicit and implicit ensemble statistics of facial expressions, and also suggested that the ensemble statistics is a weighted average of the visual input rather than the simple average. This study further clarified the averaging mechanism of ensemble coding and unveiled the relationship between ensemble coding of the face and attention. Taken together, the thesis examined the mechanisms involved in high-level ensemble statistics and the relationship among ensemble statistics, face perception, and attention. The results may shed light on a more comprehensive understanding of face perception and visual processing.
author2 Xu Hong
author_facet Xu Hong
Ying, Haojiang
format Theses and Dissertations
author Ying, Haojiang
author_sort Ying, Haojiang
title Ensemble statistics of faces
title_short Ensemble statistics of faces
title_full Ensemble statistics of faces
title_fullStr Ensemble statistics of faces
title_full_unstemmed Ensemble statistics of faces
title_sort ensemble statistics of faces
publishDate 2019
url https://hdl.handle.net/10356/89893
http://hdl.handle.net/10220/47740
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