Cmdm-Vac: Improving A Perceptual Quality Metric For 3D Graphics By Integrating A Visual Attention Complexity Measure

Y. Nehmé, Mona Abid, G. Lavoué, Matthieu Perreira Da Silva, P. Callet
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引用次数: 3

Abstract

Many objective quality metrics have been proposed over the years to automate the task of subjective quality assessment. However, few of them are designed for 3D graphical contents with appearance attributes; existing ones are based on geometry and color measures, yet they ignore the visual saliency of the objects. In this paper, we combined an optimal subset of geometry-based and color-based features, provided by a state-of-the-art quality metric for 3D colored meshes, with a visual attention complexity feature adapted to 3D graphics. The performance of our proposed new metric is evaluated on a dataset of 80 meshes with diffuse colors, generated from 5 source models corrupted by commonly used geometry and color distortions. With our proposed metric, we showed that the use of the attentional complexity feature brings a significant gain in performance and better stability.
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Cmdm-Vac:通过集成视觉注意复杂性度量来改进3D图形的感知质量度量
多年来,人们提出了许多客观质量度量来自动化主观质量评估任务。然而,它们很少是为具有外观属性的3D图形内容设计的;现有的方法是基于几何形状和颜色测量,但它们忽略了物体的视觉显著性。在本文中,我们结合了基于几何和基于颜色的特征的最优子集,由最先进的3D彩色网格质量度量提供,以及适合3D图形的视觉注意力复杂性特征。我们提出的新度量的性能在80个带有漫射颜色的数据集上进行了评估,这些数据集由5个被常用几何形状和颜色扭曲损坏的源模型生成。通过我们提出的度量,我们表明使用注意力复杂性特征可以显著提高性能和更好的稳定性。
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