Strategy for Boosting Pair Comparison and Improving Quality Assessment Accuracy
October 01, 2020 Β· Declared Dead Β· π arXiv.org
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Authors
Suiyi Ling, Jing Li, Anne Flore Perrin, Zhi Li, LukΓ‘Ε‘ Krasula, Patrick Le Callet
arXiv ID
2010.00370
Category
cs.AI: Artificial Intelligence
Citations
9
Venue
arXiv.org
Last Checked
4 months ago
Abstract
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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