Abstract

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.

Highlights

  • As digital media takes a more central part in our daily lives, research on video quality assessment (VQA) becomes more and more important

  • In our previous study [15], we demonstrated that first-digit distribution (FDD) extracted from different domains are quality-aware features and they can be used for no-reference image quality assessment

  • We proposed a novel No-reference video quality assessment (NR-VQA) algorithm based on a set of novel qualityaware features, which relies on the FDDs of different domains and perceptual features

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Summary

Introduction

As digital media takes a more central part in our daily lives, research on video quality assessment (VQA) becomes more and more important. About 70% of the overall Internet bandwidth is occupied by digital video streaming [1]. It is predicted that the occupied bandwidth will increase to between 80% and 90% by 2022 [2]. The precise estimation of video quality is of vital importance for video streaming and sharing. VQA is crucial in video restoration, reproduction, enhancement, and compression. The scientific community has devoted much attention and effort to this research field, continuously developing and devising algorithms, methods, and metrics that are able to estimate digital videos’ perceptual quality

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