Object-level attention for aesthetic rating distribution prediction
We study the problem of image aesthetic assessment (IAA) and aim to automatically predict the image aesthetic quality in the form of discrete distribution, which is particularly important in IAA due to its nature of having possibly higher diversification of agreement for aesthetics. Previous works s...
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sg-ntu-dr.10356-1443322020-10-29T02:37:58Z Object-level attention for aesthetic rating distribution prediction Hou, Jingwen Yang, Sheng Lin, Weisi School of Computer Science and Engineering 2020 ACM International Conference on Multimedia Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Image Aesthetic Assessment Object Detection We study the problem of image aesthetic assessment (IAA) and aim to automatically predict the image aesthetic quality in the form of discrete distribution, which is particularly important in IAA due to its nature of having possibly higher diversification of agreement for aesthetics. Previous works show the effectiveness of utilizing object-agnostic attention mechanisms to selectively concentrate on more contributive regions for IAA, e.g., attention is learned to weight pixels of input images when inferring aesthetic values. However, as suggested by some neuropsychology studies, the basic units of human attention are visual objects, i.e., the trace of human attention follows a series of objects. This inspires us to predict contributions of different regions at \textit{object level} for better aesthetics evaluation. With our framework, region-of-interests (RoIs) are proposed by an object detector, and each RoI is associated with a regional feature vector. Then the contribution of each regional feature to the aesthetics prediction is adaptively determined. To the best of our knowledge, this is the first work modeling object-level attention for IAA and experimental results confirm the superiority of our framework over previous relevant methods. Ministry of Education (MOE) Accepted version Tier-2 Fund MOE2016-T2-2-057(S) 2020-10-29T02:32:39Z 2020-10-29T02:32:39Z 2020 Conference Paper Hou, J., Yang, S., & Lin, W. (2020). Object-level attention for aesthetic rating distribution prediction. Proceedings of the 28th ACM International Conference on Multimedia, 816-824. doi:10.1145/3394171.3413695 9781450379885 https://hdl.handle.net/10356/144332 10.1145/3394171.3413695 816 824 en © 2020 Association for Computing Machinery (ACM). All rights reserved. This paper was published in 2020 ACM International Conference on Multimedia and is made available with permission of Association for Computing Machinery (ACM). application/pdf |
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Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Image Aesthetic Assessment Object Detection Hou, Jingwen Yang, Sheng Lin, Weisi Object-level attention for aesthetic rating distribution prediction |
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We study the problem of image aesthetic assessment (IAA) and aim to automatically predict the image aesthetic quality in the form of discrete distribution, which is particularly important in IAA due to its nature of having possibly higher diversification of agreement for aesthetics. Previous works show the effectiveness of utilizing object-agnostic attention mechanisms to selectively concentrate on more contributive regions for IAA, e.g., attention is learned to weight pixels of input images when inferring aesthetic values. However, as suggested by some neuropsychology studies, the basic units of human attention are visual objects, i.e., the trace of human attention follows a series of objects. This inspires us to predict contributions of different regions at \textit{object level} for better aesthetics evaluation. With our framework, region-of-interests (RoIs) are proposed by an object detector, and each RoI is associated with a regional feature vector. Then the contribution of each regional feature to the aesthetics prediction is adaptively determined. To the best of our knowledge, this is the first work modeling object-level attention for IAA and experimental results confirm the superiority of our framework over previous relevant methods. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Hou, Jingwen Yang, Sheng Lin, Weisi |
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Conference or Workshop Item |
author |
Hou, Jingwen Yang, Sheng Lin, Weisi |
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Hou, Jingwen |
title |
Object-level attention for aesthetic rating distribution prediction |
title_short |
Object-level attention for aesthetic rating distribution prediction |
title_full |
Object-level attention for aesthetic rating distribution prediction |
title_fullStr |
Object-level attention for aesthetic rating distribution prediction |
title_full_unstemmed |
Object-level attention for aesthetic rating distribution prediction |
title_sort |
object-level attention for aesthetic rating distribution prediction |
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2020 |
url |
https://hdl.handle.net/10356/144332 |
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1683493646925561856 |