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Content-aware objective video quality assessment

机译:内容感知的客观视频质量评估

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Since the end-user of video-based systems is often a human observer, prediction of user-perceived video quality (PVQ) is an important task for increasing the user satisfaction. Despite the large variety of objective video quality measures (VQMs), their lack of generalizability remains a problem. This is mainly due to the strong dependency between PVQ and video content. Although this problem is well known, few existing VQMs directly account for the influence of video content on PVQ. Recently, we proposed a method to predict PVQ by introducing relevant video content features in the computation of video distortion measures. The method is based on analyzing the level of spatiotemporal activity in the video and using those as parameters of the anthropomorphic video distortion models. We focus on the experimental evaluation of the proposed methodology based on a total of five public databases, four different objective VQMs, and 105 content related indexes. Additionally, relying on the proposed method, we introduce an approach for selecting the levels of video distortions for the purpose of subjective quality assessment studies. Our results suggest that when adequately combined with content related indexes, even very simple distortion measures (e.g., peak signal to noise ratio) are able to achieve high performance, i.e., high correlation between the VQM and the PVQ. In particular, we have found that by incorporating video content features, it is possible to increase the performance of the VQM by up to 20% relative to its noncontent- aware baseline. c The Authors. Published by SPIE under a Creative Commons Attribution 3.0 Unported License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
机译:由于基于视频的系统的最终用户通常是人类观察者,因此预测用户感知的视频质量(PVQ)是提高用户满意度的重要任务。尽管客观的视频质量度量(VQM)种类繁多,但缺乏通用性仍然是一个问题。这主要是由于PVQ与视频内容之间的强烈依赖性。尽管这个问题是众所周知的,但现有的VQM很少直接说明视频内容对PVQ的影响。最近,我们提出了一种通过在视频失真度量的计算中引入相关视频内容特征来预测PVQ的方法。该方法基于分析视频中的时空活动水平,并将这些水平用作拟人视频失真模型的参数。我们专注于基于总共五个公共数据库,四个不同的客观VQM和105个与内容相关的指标的提议方法的实验评估。此外,依靠提出的方法,我们介绍了一种用于主观质量评估研究目的的选择视频失真级别的方法。我们的结果表明,当与内容相关指标充分结合时,即使非常简单的失真测量(例如峰值信噪比)也能够实现高性能,即VQM和PVQ之间的高度相关性。特别是,我们发现,通过合并视频内容功能,相对于不了解内容的基准,VQM的性能可以提高高达20%。 c作者。由SPIE根据Creative Commons Attribution 3.0 Unported License发布。分发或复制此作品的全部或部分,需要对原始出版物(包括其DOI)进行完全归因。

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