An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study

This research introduces a learning model that estimates the cognitive perception of aesthetics. Taking psychology into account, this bridges the gap between human and machine. The goal is to build a machine-learning model that can estimate beauty in images perceived by human eyes. We have summand o...

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Main Authors: Tousif Osman, Shahreen Shahjahan Psyche, Tonmoay Deb, Adnan Firoze, Rashedur M. Rahman
Format: Article
Language:English
Published: Taylor & Francis Group 2019-04-01
Series:Journal of Information and Telecommunication
Subjects:
Online Access:http://dx.doi.org/10.1080/24751839.2018.1542574
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spelling doaj-fc96fee5e1c842e684d541f90a17bf322020-11-24T21:16:04ZengTaylor & Francis GroupJournal of Information and Telecommunication2475-18392475-18472019-04-013215617910.1080/24751839.2018.15425741542574An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user studyTousif Osman0Shahreen Shahjahan Psyche1Tonmoay Deb2Adnan Firoze3Rashedur M. Rahman4North South UniversityNorth South UniversityNorth South UniversityNorth South UniversityNorth South UniversityThis research introduces a learning model that estimates the cognitive perception of aesthetics. Taking psychology into account, this bridges the gap between human and machine. The goal is to build a machine-learning model that can estimate beauty in images perceived by human eyes. We have summand our research [Firoze, A., Osman, T., Psyche, S. S., & Rahman, R. M. (2018). Scoring photographic rule of thirds in a large MIRFLICKR dataset: A showdown between machine perception and human perception of image aesthetics. Asian Conference on Intelligent Information and Database Systems (pp. 466–475), Springer; Osman, T., Psyche, S. S., Deb, T., Firoze, A., & Rahman, R. M. (2018). Differential color harmony: A robust approach for extracting Harmonic Color features and perceive aesthetics in a large dataset. International Conference on Big Data and Cloud Computing, Springer] together with the idea of humans’ personal preferences and achieved higher than state of the art performances. An extensive user study (374 participants) has been conducted to support claims. Several photographical compositional metrics have been used. Colour gradient, rule of thirds and human subject’s psychology has been picked as features. The consideration of user’s perspective or psychology is one of the key contributions of this research.http://dx.doi.org/10.1080/24751839.2018.1542574Visual aestheticsvisual perceptioncognitive machine-learningcolour analysisrule of thirdscomputer visionimage processingimage compositionFlickr
collection DOAJ
language English
format Article
sources DOAJ
author Tousif Osman
Shahreen Shahjahan Psyche
Tonmoay Deb
Adnan Firoze
Rashedur M. Rahman
spellingShingle Tousif Osman
Shahreen Shahjahan Psyche
Tonmoay Deb
Adnan Firoze
Rashedur M. Rahman
An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
Journal of Information and Telecommunication
Visual aesthetics
visual perception
cognitive machine-learning
colour analysis
rule of thirds
computer vision
image processing
image composition
Flickr
author_facet Tousif Osman
Shahreen Shahjahan Psyche
Tonmoay Deb
Adnan Firoze
Rashedur M. Rahman
author_sort Tousif Osman
title An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
title_short An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
title_full An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
title_fullStr An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
title_full_unstemmed An algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
title_sort algorithmic approach to estimate cognitive aesthetics of images relative to ground truth of human psychology through a large user study
publisher Taylor & Francis Group
series Journal of Information and Telecommunication
issn 2475-1839
2475-1847
publishDate 2019-04-01
description This research introduces a learning model that estimates the cognitive perception of aesthetics. Taking psychology into account, this bridges the gap between human and machine. The goal is to build a machine-learning model that can estimate beauty in images perceived by human eyes. We have summand our research [Firoze, A., Osman, T., Psyche, S. S., & Rahman, R. M. (2018). Scoring photographic rule of thirds in a large MIRFLICKR dataset: A showdown between machine perception and human perception of image aesthetics. Asian Conference on Intelligent Information and Database Systems (pp. 466–475), Springer; Osman, T., Psyche, S. S., Deb, T., Firoze, A., & Rahman, R. M. (2018). Differential color harmony: A robust approach for extracting Harmonic Color features and perceive aesthetics in a large dataset. International Conference on Big Data and Cloud Computing, Springer] together with the idea of humans’ personal preferences and achieved higher than state of the art performances. An extensive user study (374 participants) has been conducted to support claims. Several photographical compositional metrics have been used. Colour gradient, rule of thirds and human subject’s psychology has been picked as features. The consideration of user’s perspective or psychology is one of the key contributions of this research.
topic Visual aesthetics
visual perception
cognitive machine-learning
colour analysis
rule of thirds
computer vision
image processing
image composition
Flickr
url http://dx.doi.org/10.1080/24751839.2018.1542574
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