Blind image quality assessment with hierarchy : degradation from local structure to deep semantics

Though blind image quality assessment (BIQA) is highly desired in perceptual-oriented image processing systems, it is extremely difficult to design a reliable BIQA method. With the help of the prior knowledge, the human visual system (HVS) hierarchically perceives the quality degradation during the...

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Main Authors: Wu, Jinjian, Zeng, Jichen, Dong, Weisheng, Shi, Guangming, Lin, Weisi
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/151370
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1513702021-06-23T08:12:11Z Blind image quality assessment with hierarchy : degradation from local structure to deep semantics Wu, Jinjian Zeng, Jichen Dong, Weisheng Shi, Guangming Lin, Weisi School of Computer Science and Engineering Engineering::Computer science and engineering Blind Image Quality Assessment Hierarchical Feature Though blind image quality assessment (BIQA) is highly desired in perceptual-oriented image processing systems, it is extremely difficult to design a reliable BIQA method. With the help of the prior knowledge, the human visual system (HVS) hierarchically perceives the quality degradation during the visual recognition. Inspired by this, we suggest different levels of distortion generate individual degradations on hierarchical features, and propose to consider the degradations on both low and high level features for quality prediction. By mimicking the orientation selectivity (OS) mechanism in the primary visual cortex, an OS based local structure is designed for low-level visual information representation. At the meantime, the deep residual network, which possesses multiple levels for feature integration, is employed to extract the deep semantics for high-level visual content representation. By fusing the local structure and the deep semantics, a hierarchical feature set is acquired. Next, the correlations between the degradations of image qualities and their corresponding hierarchical feature sets are analyzed, and a novel hierarchical feature degradation (HFD) based BIQA (HFD-BIQA) method is built. Experimental results on the legacy and wild image quality assessment databases demonstrate the prediction accuracy of the proposed HFD-BIQA method, and verify that the HFD-BIQA performs highly consistent with the subjective perception. 2021-06-23T08:12:11Z 2021-06-23T08:12:11Z 2019 Journal Article Wu, J., Zeng, J., Dong, W., Shi, G. & Lin, W. (2019). Blind image quality assessment with hierarchy : degradation from local structure to deep semantics. Journal of Visual Communication and Image Representation, 58, 353-362. https://dx.doi.org/10.1016/j.jvcir.2018.12.005 1047-3203 https://hdl.handle.net/10356/151370 10.1016/j.jvcir.2018.12.005 2-s2.0-85058441665 58 353 362 en Journal of Visual Communication and Image Representation © 2018 Elsevier Inc. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Blind Image Quality Assessment
Hierarchical Feature
spellingShingle Engineering::Computer science and engineering
Blind Image Quality Assessment
Hierarchical Feature
Wu, Jinjian
Zeng, Jichen
Dong, Weisheng
Shi, Guangming
Lin, Weisi
Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
description Though blind image quality assessment (BIQA) is highly desired in perceptual-oriented image processing systems, it is extremely difficult to design a reliable BIQA method. With the help of the prior knowledge, the human visual system (HVS) hierarchically perceives the quality degradation during the visual recognition. Inspired by this, we suggest different levels of distortion generate individual degradations on hierarchical features, and propose to consider the degradations on both low and high level features for quality prediction. By mimicking the orientation selectivity (OS) mechanism in the primary visual cortex, an OS based local structure is designed for low-level visual information representation. At the meantime, the deep residual network, which possesses multiple levels for feature integration, is employed to extract the deep semantics for high-level visual content representation. By fusing the local structure and the deep semantics, a hierarchical feature set is acquired. Next, the correlations between the degradations of image qualities and their corresponding hierarchical feature sets are analyzed, and a novel hierarchical feature degradation (HFD) based BIQA (HFD-BIQA) method is built. Experimental results on the legacy and wild image quality assessment databases demonstrate the prediction accuracy of the proposed HFD-BIQA method, and verify that the HFD-BIQA performs highly consistent with the subjective perception.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Wu, Jinjian
Zeng, Jichen
Dong, Weisheng
Shi, Guangming
Lin, Weisi
format Article
author Wu, Jinjian
Zeng, Jichen
Dong, Weisheng
Shi, Guangming
Lin, Weisi
author_sort Wu, Jinjian
title Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
title_short Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
title_full Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
title_fullStr Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
title_full_unstemmed Blind image quality assessment with hierarchy : degradation from local structure to deep semantics
title_sort blind image quality assessment with hierarchy : degradation from local structure to deep semantics
publishDate 2021
url https://hdl.handle.net/10356/151370
_version_ 1703971246206615552