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News Cover Assessment via Multi-task Learning

Online personalized news product needs a suitable cover for the article. The news cover demands to be with high image quality, and draw readers' attention at same time, which is extraordinary challenging due to the subjectivity of the task. In this paper, we assess the news cover from image cla...

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Published in:arXiv.org 2019-07
Main Authors: Sun, Zixun, Zhao, Shuang, Zhu, Chengwei, Chen, Xiao
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Zhao, Shuang
Zhu, Chengwei
Chen, Xiao
description Online personalized news product needs a suitable cover for the article. The news cover demands to be with high image quality, and draw readers' attention at same time, which is extraordinary challenging due to the subjectivity of the task. In this paper, we assess the news cover from image clarity and object salience perspective. We propose an end-to-end multi-task learning network for image clarity assessment and semantic segmentation simultaneously, the results of which can be guided for news cover assessment. The proposed network is based on a modified DeepLabv3+ model. The network backbone is used for multiple scale spatial features exaction, followed by two branches for image clarity assessment and semantic segmentation, respectively. The experiment results show that the proposed model is able to capture important content in images and performs better than single-task learning baselines on our proposed game content based CIA dataset.
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subjects Clarity
Image quality
Image segmentation
Learning
News
Semantic segmentation
Semantics
title News Cover Assessment via Multi-task Learning
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