Screen Content Quality Assessment: Overview, Benchmark, and Beyond

Xiongkuo Min, Ke Gu, Guangtao Zhai, Xiaokang Yang, Wenjun Zhang, P. Callet, Chang Wen Chen
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引用次数: 62

Abstract

Screen content, which is often computer-generated, has many characteristics distinctly different from conventional camera-captured natural scene content. Such characteristic differences impose major challenges to the corresponding content quality assessment, which plays a critical role to ensure and improve the final user-perceived quality of experience (QoE) in various screen content communication and networking systems. Quality assessment of such screen content has attracted much attention recently, primarily because the screen content grows explosively due to the prevalence of cloud and remote computing applications in recent years, and due to the fact that conventional quality assessment methods can not handle such content effectively. As the most technology-oriented part of QoE modeling, image/video content/media quality assessment has drawn wide attention from researchers, and a large amount of work has been carried out to tackle the problem of screen content quality assessment. This article is intended to provide a systematic and timely review on this emerging research field, including (1) background of natural scene vs. screen content quality assessment; (2) characteristics of natural scene vs. screen content; (3) overview of screen content quality assessment methodologies and measures; (4) relevant benchmarks and comprehensive evaluation of the state-of-the-art; (5) discussions on generalizations from screen content quality assessment to QoE assessment, and other techniques beyond QoE assessment; and (6) unresolved challenges and promising future research directions. Throughout this article, we focus on the differences and similarities between screen content and conventional natural scene content. We expect that this review article shall provide readers with an overview of the background, history, recent progress, and future of the emerging screen content quality assessment research.
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屏幕内容质量评估:概述,基准和超越
屏幕内容通常是由计算机生成的,具有许多与传统摄像机捕捉的自然场景内容截然不同的特征。这些特征差异给相应的内容质量评估带来了重大挑战,而内容质量评估对于保证和提高各种屏幕内容传播和网络系统的最终用户感知体验质量(QoE)起着至关重要的作用。近年来,由于云计算和远程计算应用的普及,屏幕内容呈爆炸式增长,传统的质量评估方法无法有效处理这些内容,因此屏幕内容的质量评估备受关注。图像/视频内容/媒体质量评估作为QoE建模中最具技术性的部分,受到了研究者的广泛关注,针对屏幕内容质量评估问题开展了大量的工作。本文旨在对这一新兴研究领域进行系统和及时的回顾,包括:(1)自然场景与屏幕内容质量评估的背景;(2)自然场景与屏幕内容的特点;(3)屏幕内容质量评估方法和措施概述;(四)相关基准和综合评价;(5)讨论从屏幕内容质量评估到质量质量评估的推广,以及质量质量评估之外的其他技术;(6)有待解决的挑战和未来的研究方向。在本文中,我们将重点讨论屏幕内容与传统自然场景内容之间的异同。我们希望这篇综述文章能够为读者提供对新兴屏幕内容质量评估研究的背景、历史、最新进展和未来的概述。
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