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Reduced reference image and video quality assessments: review of methods

With the growing demand for image and video-based applications, the requirements of consistent quality assessment metrics of image and video have increased. Different approaches have been proposed in the literature to estimate the perceptual quality of images and videos. These approaches can be divi...

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Published in:EURASIP journal on image and video processing 2022-01, Vol.2022 (1), p.1-31, Article 1
Main Authors: Dost, Shahi, Saud, Faryal, Shabbir, Maham, Khan, Muhammad Gufran, Shahid, Muhammad, Lovstrom, Benny
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description With the growing demand for image and video-based applications, the requirements of consistent quality assessment metrics of image and video have increased. Different approaches have been proposed in the literature to estimate the perceptual quality of images and videos. These approaches can be divided into three main categories; full reference (FR), reduced reference (RR) and no-reference (NR). In RR methods, instead of providing the original image or video as a reference, we need to provide certain features (i.e., texture, edges, etc.) of the original image or video for quality assessment. During the last decade, RR-based quality assessment has been a popular research area for a variety of applications such as social media, online games, and video streaming. In this paper, we present review and classification of the latest research work on RR-based image and video quality assessment. We have also summarized different databases used in the field of 2D and 3D image and video quality assessment. This paper would be helpful for specialists and researchers to stay well-informed about recent progress of RR-based image and video quality assessment. The review and classification presented in this paper will also be useful to gain understanding of multimedia quality assessment and state-of-the-art approaches used for the analysis. In addition, it will help the reader select appropriate quality assessment methods and parameters for their respective applications.
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source Springer Nature - SpringerLink Journals - Fully Open Access ; Publicly Available Content (ProQuest)
subjects Applied Signal Processing
Biometrics
Computer & video games
Engineering
Image classification
Image Processing and Computer Vision
Image quality
Image quality parameters
Multimedia
Multimedia quality assessment
Pattern Recognition
Quality assessment
Reduced reference image quality approaches
Reduced reference video quality approaches
Review
Signal,Image and Speech Processing
Tillämpad signalbehandling
Video data
Video quality parameters
Video transmission
title Reduced reference image and video quality assessments: review of methods
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