论时空学习对视频质量评价的重要性

Dario Fontanel, David Higham, Benoit Vallade
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摘要

视频质量评估(VQA)在计算机视觉社区引起了很大的兴趣,因为它在为客户提供高质量视频内容的服务中起着关键作用。由于缺乏高质量的参考视频和难以收集主观评价,视频质量评估是一个具有挑战性和尚未解决的问题。此外,大多数公共研究工作只关注用户生成内容(UGC),因此不清楚是否可以采用可靠的解决方案来评估与制作相关的视频的质量。这项工作的目的是评估空间和时间学习对生产相关VQA的重要性。特别是,它评估了LIVE-APV数据集上最先进的UGC视频质量评估视角,展示了从每个视频帧中学习上下文特征的重要性,以及捕获它们之间的时间相关性。
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On the Importance of Spatio-Temporal Learning for Video Quality Assessment
Video quality assessment (VQA) has sparked a lot of interest in the computer vision community, as it plays a critical role in services that provide customers with high quality video content. Due to the lack of high quality reference videos and the difficulties in collecting subjective evaluations, assessing video quality is a challenging and still unsolved problem. Moreover, most of the public research efforts focus only on user-generated content (UGC), making it unclear if reliable solutions can be adopted for assessing the quality of production-related videos. The goal of this work is to assess the importance of spatial and temporal learning for production-related VQA. In particular, it assesses state-of-the-art UGC video quality assessment perspectives on LIVE-APV dataset, demonstrating the importance of learning contextual characteristics from each video frame, as well as capturing temporal correlations between them.
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