Blind image quality assessment based on joint log-contrast statistics
During recent years, quality-aware features extracted from natural scene statistics (NSS) models have been used in development of blind image quality assessment (BIQA) algorithms. Generally, the univariate distributions of bandpass coefficients are used to fit a parametric probabilistic model and th...
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sg-ntu-dr.10356-1513292021-06-22T05:12:45Z Blind image quality assessment based on joint log-contrast statistics Li, Qiaohong Lin, Weisi Gu, Ke Zhang, Yabin Fang, Yuming School of Computer Science and Engineering Engineering::Computer science and engineering Blind Image Quality Assessment No-reference During recent years, quality-aware features extracted from natural scene statistics (NSS) models have been used in development of blind image quality assessment (BIQA) algorithms. Generally, the univariate distributions of bandpass coefficients are used to fit a parametric probabilistic model and the model parameters serve as the quality-aware features. However, the inter-location, inter-direction and inter-scale correlations of natural images cannot be well exploited by such NSS models, as it is hard to capture such dependencies using univariate marginal distributions. In this paper, we build a novel NSS model of joint log-contrast distribution to take into account the across space and direction correlations of natural images (inter-scale correlation to be explored as the next step). Furthermore, we provide a new efficient approach to extract quality-aware features as the gradient of log-likelihood on the NSS model, instead of using model parameters directly. Finally, we develop an effective joint-NSS model based BIQA metric called BJLC (BIQA based on joint log-contrast statistics). Extensive experiments on four public large-scale image databases have validated that objective quality scores predicted by the proposed BIQA method are in higher accordance with subjective ratings generated by human observers compared with existing methods. 2021-06-22T05:12:44Z 2021-06-22T05:12:44Z 2019 Journal Article Li, Q., Lin, W., Gu, K., Zhang, Y. & Fang, Y. (2019). Blind image quality assessment based on joint log-contrast statistics. Neurocomputing, 331, 189-198. https://dx.doi.org/10.1016/j.neucom.2018.11.015 0925-2312 0000-0002-3476-5779 https://hdl.handle.net/10356/151329 10.1016/j.neucom.2018.11.015 2-s2.0-85057417529 331 189 198 en Neurocomputing © 2018 Elsevier B.V. All rights reserved. |
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Engineering::Computer science and engineering Blind Image Quality Assessment No-reference Li, Qiaohong Lin, Weisi Gu, Ke Zhang, Yabin Fang, Yuming Blind image quality assessment based on joint log-contrast statistics |
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During recent years, quality-aware features extracted from natural scene statistics (NSS) models have been used in development of blind image quality assessment (BIQA) algorithms. Generally, the univariate distributions of bandpass coefficients are used to fit a parametric probabilistic model and the model parameters serve as the quality-aware features. However, the inter-location, inter-direction and inter-scale correlations of natural images cannot be well exploited by such NSS models, as it is hard to capture such dependencies using univariate marginal distributions. In this paper, we build a novel NSS model of joint log-contrast distribution to take into account the across space and direction correlations of natural images (inter-scale correlation to be explored as the next step). Furthermore, we provide a new efficient approach to extract quality-aware features as the gradient of log-likelihood on the NSS model, instead of using model parameters directly. Finally, we develop an effective joint-NSS model based BIQA metric called BJLC (BIQA based on joint log-contrast statistics). Extensive experiments on four public large-scale image databases have validated that objective quality scores predicted by the proposed BIQA method are in higher accordance with subjective ratings generated by human observers compared with existing methods. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Li, Qiaohong Lin, Weisi Gu, Ke Zhang, Yabin Fang, Yuming |
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Article |
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Li, Qiaohong Lin, Weisi Gu, Ke Zhang, Yabin Fang, Yuming |
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Li, Qiaohong |
title |
Blind image quality assessment based on joint log-contrast statistics |
title_short |
Blind image quality assessment based on joint log-contrast statistics |
title_full |
Blind image quality assessment based on joint log-contrast statistics |
title_fullStr |
Blind image quality assessment based on joint log-contrast statistics |
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Blind image quality assessment based on joint log-contrast statistics |
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blind image quality assessment based on joint log-contrast statistics |
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2021 |
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https://hdl.handle.net/10356/151329 |
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1703971190839705600 |