使用自然视频统计模型的无参考视频质量度量

Christian Galea, R. Farrugia
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引用次数: 2

摘要

对高质量多媒体内容的需求正在迅速增长,这导致服务提供商采用服务质量(QoS)策略来监控交付内容的质量。然而,通常使用的QoS参数与最终用户感知到的实际质量没有很好的相关性。为了解决这个问题,人们提出了许多客观的视频质量评估(VQA)指标。然而,这些指标大多依赖于原始未失真视频的额外信息的可用性,这将增加所需的带宽。本文提出了一种无参考(NR) VQA算法,该算法利用空间和时间特征提取自然视频统计模型,在不需要从发射机获取额外信息的情况下,对最终用户体验到的视频质量进行建模。这些特征是基于这样的观察,即自然场景的统计数据在原始内容上是规则的,但在存在失真的情况下会发生显著变化。该方法在主观数据下的Spearman秩序相关系数(SROCC)为0.8161,在统计上与现有的最先进的完整和简化的参考VQA指标相同,有时甚至优于该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A no-reference video quality metric using a Natural Video Statistical Model
The demand for high quality multimedia content is increasing rapidly, which has resulted in service providers employing Quality of Service (QoS) strategies to monitor the quality of delivered content. However, the QoS parameters commonly used do not correlate well with the actual quality perceived by the end-users. Numerous objective video quality assessment (VQA) metrics have been proposed to address this problem. However, most of these metrics rely on the availability of additional information from the original undistorted video to perform adequately, which will increase the bandwidth required. This paper presents a No-Reference (NR) VQA algorithm, which extracts a Natural Video Statistical Model using both spatial and temporal features to model the quality experienced by the end-users without needing additional information from the transmitter. These features are based on the observation that the statistics of natural scenes are regular on pristine content but are significantly altered in the presence of distortion. The proposed method achieves a Spearman Rank Order Correlation Coefficient (SROCC) of 0.8161 with subjective data, which is statistically identical and sometimes superior to existing state-of-the-art full and reduced reference VQA metrics.
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