video quality assessment
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2022 ◽  
Vol 2022 (1) ◽  
Author(s):  
Shahi Dost ◽  
Faryal Saud ◽  
Maham Shabbir ◽  
Muhammad Gufran Khan ◽  
Muhammad Shahid ◽  
...  

AbstractWith 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.


Displays ◽  
2021 ◽  
Vol 70 ◽  
pp. 102075 ◽  
Author(s):  
Da Pan ◽  
XueTing Wang ◽  
Ping Shi ◽  
ShaoDe Yu

Electronics ◽  
2021 ◽  
Vol 10 (22) ◽  
pp. 2768
Author(s):  
Domonkos Varga

No-reference video quality assessment (NR-VQA) has piqued the scientific community’s interest throughout the last few decades, owing to its importance in human-centered interfaces. The goal of NR-VQA is to predict the perceptual quality of digital videos without any information about their distortion-free counterparts. Over the past few decades, NR-VQA has become a very popular research topic due to the spread of multimedia content and video databases. For successful video quality evaluation, creating an effective video representation from the original video is a crucial step. In this paper, we propose a powerful feature vector for NR-VQA inspired by Benford’s law. Specifically, it is demonstrated that first-digit distributions extracted from different transform domains of the video volume data are quality-aware features and can be effectively mapped onto perceptual quality scores. Extensive experiments were carried out on two large, authentically distorted VQA benchmark databases.


2021 ◽  
pp. 39-50
Author(s):  
Hassan Imani ◽  
Selim Zaim ◽  
Md Baharul Islam ◽  
Masum Shah Junayed

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