论文标题

提高对比较和提高质量评估准确性的策略

Strategy for Boosting Pair Comparison and Improving Quality Assessment Accuracy

论文作者

Ling, Suiyi, Li, Jing, Perrin, Anne Flore, Li, Zhi, Krasula, Lukáš, Callet, Patrick Le

论文摘要

严格的质量评估模型的开发取决于可靠的主观数据的收集,其中视觉多媒体的感知质量由人类观察者评级。可以根据目标来使用不同的主观评估协议,这确定了主观数据的可区分性和准确性。 单个刺激方法,例如,由于其简单性和效率,绝对类别等级(ACR)已被广泛采用。但是,就可区分性而言,对比较(PC)比ACR具有重要优势。此外,PC避免了观察者对他们对质量量表的理解的偏见的影响。但是,完整的对比较更加耗时。因此,在这项研究中,我们1)采用通用模型来弥合对越野的比较数据和ACR数据,其中可以恢复方差项,并且获得的信息更完整; 2)提出一种通过利用ACR结果作为初始化信息来提高对比较的融合策略; 3)基于PC的最小生成树(MST)制定一种新型的活动批次采样策略。以这种方式,所提出的方法可以达到对比较的相同精度,但具有低至ACR的性能。广泛的实验结果表明了所提出的方法的效率和准确性,这表现优于最新方法。

The development of rigorous quality assessment model relies on the collection of reliable subjective data, where the perceived quality of visual multimedia is rated by the human observers. Different subjective assessment protocols can be used according to the objectives, which determine the discriminability and accuracy of the subjective data. Single stimulus methodology, e.g., the Absolute Category Rating (ACR) has been widely adopted due to its simplicity and efficiency. However, Pair Comparison (PC) is of significant advantage over ACR in terms of discriminability. In addition, PC avoids the influence of observers' bias regarding their understanding of the quality scale. Nevertheless, full pair comparison is much more time-consuming. In this study, we therefore 1) employ a generic model to bridge the pair comparison data and ACR data, where the variance term could be recovered and the obtained information is more complete; 2) propose a fusion strategy to boost pair comparisons by utilizing the ACR results as initialization information; 3) develop a novel active batch sampling strategy based on Minimum Spanning Tree (MST) for PC. In such a way, the proposed methodology could achieve the same accuracy of pair comparison but with the compelxity as low as ACR. Extensive experimental results demonstrate the efficiency and accuracy of the proposed approach, which outperforms the state of the art approaches.

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