Unified no-reference quality assessment of singly and multiply distorted stereoscopic images

A challenging problem in the no-reference quality assessment of multiply distorted stereoscopic images (MDSIs) is to simulate the monocular and binocular visual properties under a mixed type of distortions. Due to the joint effects of multiple distortions in MDSIs, the underlying monocular and binoc...

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Main Authors: Jiang, Qiuping, Shao, Feng, Gao, Wei, Chen, Zhuo, Jiang, Gangyi, Ho, Yo-Sung
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2020
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Online Access:https://hdl.handle.net/10356/142299
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1422992020-06-18T07:58:32Z Unified no-reference quality assessment of singly and multiply distorted stereoscopic images Jiang, Qiuping Shao, Feng Gao, Wei Chen, Zhuo Jiang, Gangyi Ho, Yo-Sung School of Computer Science and Engineering Rapid-Rich Object Search Lab Engineering::Computer science and engineering No-reference Image Quality Assessment Stereoscopic Image A challenging problem in the no-reference quality assessment of multiply distorted stereoscopic images (MDSIs) is to simulate the monocular and binocular visual properties under a mixed type of distortions. Due to the joint effects of multiple distortions in MDSIs, the underlying monocular and binocular visual mechanisms have different manifestations with those of singly distorted stereoscopic images (SDSIs). This paper presents a unified no-reference quality evaluator for SDSIs and MDSIs by learning monocular and binocular local visual primitives (MB-LVPs). The main idea is to learn MB-LVPs to characterize the local receptive field properties of the visual cortex in response to SDSIs and MDSIs. Furthermore, we also consider that the learning of primitives should be performed in a task-driven manner. For this, two penalty terms including reconstruction error and quality inconsistency are jointly minimized within a supervised dictionary learning framework, generating a set of quality-oriented MB-LVPs for each single and multiple distortion modality. Given an input stereoscopic image, feature encoding is performed using the learned MB-LVPs as codebooks, resulting in the corresponding monocular and binocular responses. Finally, responses across all the modalities are fused with probabilistic weights which are determined by the modality-specific sparse reconstruction errors, yielding the final monocular and binocular features for quality regression. The superiority of our method has been verified on several SDSI and MDSI databases. 2020-06-18T07:58:32Z 2020-06-18T07:58:32Z 2018 Journal Article Jiang, Q., Shao, F., Gao, W., Chen, Z., Jiang, G., & Ho, Y.-S. (2019). Unified no-reference quality assessment of singly and multiply distorted stereoscopic images. IEEE Transactions on Image Processing, 28(4), 1866-1881. doi:10.1109/TIP.2018.2881828 1057-7149 https://hdl.handle.net/10356/142299 10.1109/TIP.2018.2881828 30452360 2-s2.0-85056705930 4 28 1866 1881 en IEEE Transactions on Image Processing © 2018 IEEE. All rights reserved.
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic Engineering::Computer science and engineering
No-reference Image Quality Assessment
Stereoscopic Image
spellingShingle Engineering::Computer science and engineering
No-reference Image Quality Assessment
Stereoscopic Image
Jiang, Qiuping
Shao, Feng
Gao, Wei
Chen, Zhuo
Jiang, Gangyi
Ho, Yo-Sung
Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
description A challenging problem in the no-reference quality assessment of multiply distorted stereoscopic images (MDSIs) is to simulate the monocular and binocular visual properties under a mixed type of distortions. Due to the joint effects of multiple distortions in MDSIs, the underlying monocular and binocular visual mechanisms have different manifestations with those of singly distorted stereoscopic images (SDSIs). This paper presents a unified no-reference quality evaluator for SDSIs and MDSIs by learning monocular and binocular local visual primitives (MB-LVPs). The main idea is to learn MB-LVPs to characterize the local receptive field properties of the visual cortex in response to SDSIs and MDSIs. Furthermore, we also consider that the learning of primitives should be performed in a task-driven manner. For this, two penalty terms including reconstruction error and quality inconsistency are jointly minimized within a supervised dictionary learning framework, generating a set of quality-oriented MB-LVPs for each single and multiple distortion modality. Given an input stereoscopic image, feature encoding is performed using the learned MB-LVPs as codebooks, resulting in the corresponding monocular and binocular responses. Finally, responses across all the modalities are fused with probabilistic weights which are determined by the modality-specific sparse reconstruction errors, yielding the final monocular and binocular features for quality regression. The superiority of our method has been verified on several SDSI and MDSI databases.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Jiang, Qiuping
Shao, Feng
Gao, Wei
Chen, Zhuo
Jiang, Gangyi
Ho, Yo-Sung
format Article
author Jiang, Qiuping
Shao, Feng
Gao, Wei
Chen, Zhuo
Jiang, Gangyi
Ho, Yo-Sung
author_sort Jiang, Qiuping
title Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
title_short Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
title_full Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
title_fullStr Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
title_full_unstemmed Unified no-reference quality assessment of singly and multiply distorted stereoscopic images
title_sort unified no-reference quality assessment of singly and multiply distorted stereoscopic images
publishDate 2020
url https://hdl.handle.net/10356/142299
_version_ 1681058141486186496