Image Quality Assessment via Quality-aware Group Sparse Coding

Image quality assessment has been attracting growing attention at an accelerated pace over the past decade, in the fields of image processing, vision and machine learning. In particular, general purpose blind image quality assessment is technically challenging and lots of state-of-the-art approaches...

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Main Authors: Minglei Tong, Hong Han, Shudong Chen
Format: Article
Language:English
Published: IFSA Publishing, S.L. 2014-12-01
Series:Sensors & Transducers
Subjects:
Online Access:http://www.sensorsportal.com/HTML/DIGEST/december_2014/Vol_183/P_2570.pdf
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spelling doaj-1ec47bf3b2c74330ae14007830db52912020-11-24T22:01:50ZengIFSA Publishing, S.L.Sensors & Transducers2306-85151726-54792014-12-0118312240244Image Quality Assessment via Quality-aware Group Sparse Coding Minglei Tong0 Hong Han1Shudong Chen2School of Electronics and Information, Shanghai University of Electric Power, Shanghai, China Xi Dian University, Xi'an, 710126, Shaanxi, China Institute of Microelectronics of Chinese Academy of Sciences, Wuxi, ChinaImage quality assessment has been attracting growing attention at an accelerated pace over the past decade, in the fields of image processing, vision and machine learning. In particular, general purpose blind image quality assessment is technically challenging and lots of state-of-the-art approaches have been developed to solve this problem, most under the supervised learning framework where the human scored samples are needed for training a regression model. In this paper, we propose an unsupervised learning approach that work without the human label. In the off-line stage, our method trains a dictionary covering different levels of image quality patch atoms across the training samples without knowing the human score, where each atom is associated with a quality score induced from the reference image; at the on-line stage, given each image patch, our method performs group sparse coding to encode the sample, such that the sample quality can be estimated from the few labeled atoms whose encoding coefficients are nonzero. Experimental results on the public dataset show the promising performance of our approach and future research direction is also discussed.http://www.sensorsportal.com/HTML/DIGEST/december_2014/Vol_183/P_2570.pdfImage quality assessmentGroup sparse codingRegression modelSupervised learningSparse dictionary.
collection DOAJ
language English
format Article
sources DOAJ
author Minglei Tong
Hong Han
Shudong Chen
spellingShingle Minglei Tong
Hong Han
Shudong Chen
Image Quality Assessment via Quality-aware Group Sparse Coding
Sensors & Transducers
Image quality assessment
Group sparse coding
Regression model
Supervised learning
Sparse dictionary.
author_facet Minglei Tong
Hong Han
Shudong Chen
author_sort Minglei Tong
title Image Quality Assessment via Quality-aware Group Sparse Coding
title_short Image Quality Assessment via Quality-aware Group Sparse Coding
title_full Image Quality Assessment via Quality-aware Group Sparse Coding
title_fullStr Image Quality Assessment via Quality-aware Group Sparse Coding
title_full_unstemmed Image Quality Assessment via Quality-aware Group Sparse Coding
title_sort image quality assessment via quality-aware group sparse coding
publisher IFSA Publishing, S.L.
series Sensors & Transducers
issn 2306-8515
1726-5479
publishDate 2014-12-01
description Image quality assessment has been attracting growing attention at an accelerated pace over the past decade, in the fields of image processing, vision and machine learning. In particular, general purpose blind image quality assessment is technically challenging and lots of state-of-the-art approaches have been developed to solve this problem, most under the supervised learning framework where the human scored samples are needed for training a regression model. In this paper, we propose an unsupervised learning approach that work without the human label. In the off-line stage, our method trains a dictionary covering different levels of image quality patch atoms across the training samples without knowing the human score, where each atom is associated with a quality score induced from the reference image; at the on-line stage, given each image patch, our method performs group sparse coding to encode the sample, such that the sample quality can be estimated from the few labeled atoms whose encoding coefficients are nonzero. Experimental results on the public dataset show the promising performance of our approach and future research direction is also discussed.
topic Image quality assessment
Group sparse coding
Regression model
Supervised learning
Sparse dictionary.
url http://www.sensorsportal.com/HTML/DIGEST/december_2014/Vol_183/P_2570.pdf
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AT honghan imagequalityassessmentviaqualityawaregroupsparsecoding
AT shudongchen imagequalityassessmentviaqualityawaregroupsparsecoding
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