A generalized quality assessment method for natural and screen content images

Abstract A generalized objective quality assessment method is proposed for natural images and screen content images. Since natural images and screen content images have different statistical properties, the modelling of a generalized quality assessment method that works for both types of images is c...

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Main Authors: Woei‐Tan Loh, David B. L. Bong
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12016
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spelling doaj-3adfcaa1d1c74c26aad593c79fe49d6d2021-07-14T13:25:38ZengWileyIET Image Processing1751-96591751-96672021-01-0115116617910.1049/ipr2.12016A generalized quality assessment method for natural and screen content imagesWoei‐Tan Loh0David B. L. Bong1Department of Electrical and Electronic Engineering Universiti Malaysia Sarawak Kota Samarahan MalaysiaDepartment of Electrical and Electronic Engineering Universiti Malaysia Sarawak Kota Samarahan MalaysiaAbstract A generalized objective quality assessment method is proposed for natural images and screen content images. Since natural images and screen content images have different statistical properties, the modelling of a generalized quality assessment method that works for both types of images is complicated because some properties of natural images and screen content images are conflicting to one another. The proposed method assesses the perceptual quality of an image based on edge magnitude and direction. In this method, an image is first separated into regions with high and low gradients. Gradient is used due to the small perceptual span of the human visual system for textual content. For high gradient regions, small kernel size of Prewitt operators is used to obtain the gradient magnitude and direction. Correspondingly, bigger kernel size of Prewitt operators is utilized for low gradient regions. Visual quality indices are computed from both regions and pooled to obtain the final quality index. From the performance comparison, it is shown that the proposed method could assess the perceived quality of natural images and screen content images with high accuracy.https://doi.org/10.1049/ipr2.12016
collection DOAJ
language English
format Article
sources DOAJ
author Woei‐Tan Loh
David B. L. Bong
spellingShingle Woei‐Tan Loh
David B. L. Bong
A generalized quality assessment method for natural and screen content images
IET Image Processing
author_facet Woei‐Tan Loh
David B. L. Bong
author_sort Woei‐Tan Loh
title A generalized quality assessment method for natural and screen content images
title_short A generalized quality assessment method for natural and screen content images
title_full A generalized quality assessment method for natural and screen content images
title_fullStr A generalized quality assessment method for natural and screen content images
title_full_unstemmed A generalized quality assessment method for natural and screen content images
title_sort generalized quality assessment method for natural and screen content images
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-01-01
description Abstract A generalized objective quality assessment method is proposed for natural images and screen content images. Since natural images and screen content images have different statistical properties, the modelling of a generalized quality assessment method that works for both types of images is complicated because some properties of natural images and screen content images are conflicting to one another. The proposed method assesses the perceptual quality of an image based on edge magnitude and direction. In this method, an image is first separated into regions with high and low gradients. Gradient is used due to the small perceptual span of the human visual system for textual content. For high gradient regions, small kernel size of Prewitt operators is used to obtain the gradient magnitude and direction. Correspondingly, bigger kernel size of Prewitt operators is utilized for low gradient regions. Visual quality indices are computed from both regions and pooled to obtain the final quality index. From the performance comparison, it is shown that the proposed method could assess the perceived quality of natural images and screen content images with high accuracy.
url https://doi.org/10.1049/ipr2.12016
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AT davidblbong ageneralizedqualityassessmentmethodfornaturalandscreencontentimages
AT woeitanloh generalizedqualityassessmentmethodfornaturalandscreencontentimages
AT davidblbong generalizedqualityassessmentmethodfornaturalandscreencontentimages
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