Improving the discriminability of standard subjective quality assessment methods: a case study

Jing Li, P. Callet
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引用次数: 4

Abstract

Subjective assessment for image or video qualities is considered as the most reliable way to obtain the ground truth for the development of objective quality metrics, especially when leaded by Mean Opinion Score (MOS approaches). However, obtained MOS with standard protocols are noisy due to subject's personal characteristics, such as viewing experience, gender or profession, leading to uncertain ground truth driven by the number of panelists/subjects. The usual way to reduce uncertainty relies on raising this number. In this paper, we demonstrate how a recently introduced Maximum Likelihood Estimation (MLE) based quality recovery model can improve the discriminability of standard subjective quality assessment. Compared to straightforward MOS computation, we present a case study where one can save between 26% to 39% in terms of numbers of subjects at the same discriminability.
提高标准主观素质评价方法的可辨别性:个案研究
对图像或视频质量的主观评估被认为是获得客观质量指标发展的基本事实的最可靠的方法,特别是在平均意见得分(MOS方法)的指导下。然而,使用标准协议获得的MOS由于受试者的个人特征(如观看经验、性别或职业)而存在噪声,导致由小组成员/受试者数量驱动的不确定的基础真相。通常减少不确定性的方法是提高这个数字。在本文中,我们展示了最近引入的基于最大似然估计(MLE)的质量恢复模型如何提高标准主观质量评价的可判别性。与直接的MOS计算相比,我们提出了一个案例研究,在相同的可分辨性下,可以节省26%到39%的受试者数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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