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An objective method for combining multiple subjective data sets

机译:组合多个主观数据集的客观方法

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International recommendations for subjective video quality assessment (e.g., ITU-R BT.500-11) include specifications for how to perform many different types of subjective tests. In addition to displaying the video sequences in different ways, subjective tests also have different rating scales, different words associated with these scales, and many other test variables that change from one laboratory to another (e.g., viewer expertise and criticality, cultural differences, physical test environments). Thus, it is very difficult to directly compare or combine results from two or more subjective experiments. The ability to compare and combine results from multiple subjective experiments would greatly benefit developers and users of video technology since standardized subjective data bases could be expanded upon to include new source material and past measurement results could be related to newer measurement results. This paper presents a subjective method and an objective method for combining multiple subjective data sets. The subjective method utilizes a large meta-test with selected video clips from each subjective data set. The objective method utilizes the functional relationships between objective video quality metrics (extracted from the video sequences) and corresponding subjective mean opinion scores (MOSs). The objective mapping algorithm, called the iterated nested least-squares algorithm (INLSA), relates two or more independent data sets that are themselves correlated with some common intermediate variables (i.e, the objective video quality metrics). We demonstrate that the objective method can be used as an effective substitute for the expensive and time consuming subjective meta-test.
机译:关于主观视频质量评估的国际建议(例如,ITU-R BT.500-11)包括有关如何执行许多不同类型的主观测试的规范。除了以不同的方式显示视频序列外,主观测试还具有不同的评分标准,与这些标准相关的不同单词以及从一个实验室到另一个实验室的许多其他测试变量(例如,观看者的专业知识和批评程度,文化差异,测试环境)。因此,很难直接比较或合并两个或多个主观实验的结果。比较和合并来自多个主观实验的结果的能力将极大地受益于视频技术的开发人员和用户,因为可以扩展标准化的主观数据库,以包括新的原始资料,并且过去的测量结果可能与更新的测量结果相关。本文提出了一种结合多个主观数据集的主观方法和客观方法。主观方法利用从每个主观数据集中选择的视频剪辑进行的大型元测试。客观方法利用客观视频质量指标(从视频序列中提取)与相应的主观平均意见得分(MOS)之间的功能关系。目标映射算法称为迭代嵌套最小二乘算法(INLSA),它涉及两个或多个独立的数据集,这些数据集本身与一些常见的中间变量(即,目标视频质量指标)相关联。我们证明了客观方法可以用作昂贵且耗时的主观元测试的有效替代方法。

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