Perceptual video quality assessment: the journey continues!

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Avinab Saha, Sai Karthikey Pentapati, Zaixi Shang, Ramit Pahwa, Bowen Chen, Hakan Emre Gedik, Sandeep Mishra, A. Bovik
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引用次数: 2

Abstract

Perceptual Video Quality Assessment (VQA) is one of the most fundamental and challenging problems in the field of Video Engineering. Along with video compression, it has become one of two dominant theoretical and algorithmic technologies in television streaming and social media. Over the last 2 decades, the volume of video traffic over the internet has grown exponentially, powered by rapid advancements in cloud services, faster video compression technologies, and increased access to high-speed, low-latency wireless internet connectivity. This has given rise to issues related to delivering extraordinary volumes of picture and video data to an increasingly sophisticated and demanding global audience. Consequently, developing algorithms to measure the quality of pictures and videos as perceived by humans has become increasingly critical since these algorithms can be used to perceptually optimize trade-offs between quality and bandwidth consumption. VQA models have evolved from algorithms developed for generic 2D videos to specialized algorithms explicitly designed for on-demand video streaming, user-generated content (UGC), virtual and augmented reality (VR and AR), cloud gaming, high dynamic range (HDR), and high frame rate (HFR) scenarios. Along the way, we also describe the advancement in algorithm design, beginning with traditional hand-crafted feature-based methods and finishing with current deep-learning models powering accurate VQA algorithms. We also discuss the evolution of Subjective Video Quality databases containing videos and human-annotated quality scores, which are the necessary tools to create, test, compare, and benchmark VQA algorithms. To finish, we discuss emerging trends in VQA algorithm design and general perspectives on the evolution of Video Quality Assessment in the foreseeable future.
感性视频质量测评:征程还在继续!
感知视频质量评估(VQA)是视频工程领域最基本、最具挑战性的问题之一。与视频压缩一起,它已经成为电视流媒体和社交媒体的两大主要理论和算法技术之一。在过去的20年里,由于云服务的快速发展、更快的视频压缩技术以及高速、低延迟的无线互联网连接的增加,互联网上的视频流量呈指数级增长。这就产生了向日益复杂和要求越来越高的全球观众提供大量图片和视频数据的问题。因此,开发算法来衡量人类感知的图片和视频的质量变得越来越重要,因为这些算法可以用来感知优化质量和带宽消耗之间的权衡。VQA模型已经从为普通2D视频开发的算法发展到专门为点播视频流、用户生成内容(UGC)、虚拟现实和增强现实(VR和AR)、云游戏、高动态范围(HDR)和高帧率(HFR)场景设计的算法。在此过程中,我们还描述了算法设计的进步,从传统的手工制作的基于特征的方法开始,并以当前的深度学习模型为精确的VQA算法提供动力。我们还讨论了包含视频和人工注释质量分数的主观视频质量数据库的发展,这些数据库是创建、测试、比较和基准测试VQA算法的必要工具。最后,我们讨论了VQA算法设计的新趋势以及视频质量评估在可预见的未来发展的一般观点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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