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MCL-JCV: A JND-based H.264/AVC video quality assessment dataset

机译:MCL-JCV:基于JND的H.264 / AVC视频质量评估数据集

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摘要

A compressed video quality assessment dataset based on the just noticeable difference (JND) model, called MCL-JCV, is recently constructed and released. In this work, we explain its design objectives, selected video content and subject test procedures. Then, we conduct statistical analysis on collected JND data. We compute the difference between every two adjacent JND points and propose an outlier detection algorithm to remove unreliable data. We also show that each JND difference group can be well approximated by a normal distribution so that we can adopt the Gaussian mixture model (GMM) to characterize the distribution of multiple JND points. Finally, it is demonstrated by experimental results that the proposed JND analysis performed in the difference domain, called the D-method, achieves a lower BIC (Bayesian information criteria) value than the previously proposed G-method.
机译:最近构建并发布了基于恰好差异(JND)模型的压缩视频质量评估数据集,称为MCL-JCV。在这项工作中,我们解释其设计目标,选定的视频内容和主题测试程序。然后,我们对收集到的JND数据进行统计分析。我们计算每两个相邻JND点之间的差异,并提出一种离群值检测算法,以去除不可靠的数据。我们还表明,每个JND差异组都可以通过正态分布很好地近似,因此我们可以采用高斯混合模型(GMM)来表征多个JND点的分布。最后,通过实验结果证明,在差分域中执行的拟议JND分析(称为D方法)实现了比先前提出的G方法更低的BIC(贝叶斯信息标准)值。

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