Crafting the MPEG metrics for objective and perceptual quality assessment of volumetric videos.

Quality and user experience Pub Date : 2023-01-01 Epub Date: 2023-06-06 DOI:10.1007/s41233-023-00057-4
Jean-Eudes Marvie, Yana Nehmé, Danillo Graziosi, Guillaume Lavoué
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Abstract

Efficient objective and perceptual metrics are valuable tools to evaluate the visual impact of compression artifacts on the visual quality of volumetric videos (VVs). In this paper, we present some of the MPEG group efforts to create, benchmark and calibrate objective quality assessment metrics for volumetric videos represented as textured meshes. We created a challenging dataset of 176 volumetric videos impaired with various distortions and conducted a subjective experiment to gather human opinions (more than 5896 subjective scores were collected). We adapted two state-of-the-art model-based metrics for point cloud evaluation to our context of textured mesh evaluation by selecting efficient sampling methods. We also present a new image-based metric for the evaluation of such VVs whose purpose is to reduce the cumbersome computation times inherent to the point-based metrics due to their use of multiple kd-tree searches. Each metric presented above is calibrated (i.e., selection of best values for parameters such as the number of views or grid sampling density) and evaluated on our new ground-truth subjective dataset. For each metric, the optimal selection and combination of features is determined by logistic regression through cross-validation. This performance analysis, combined with MPEG experts' requirements, lead to the validation of two selected metrics and recommendations on the features of most importance through learned feature weights.

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制作用于体积视频的客观和感知质量评估的MPEG度量。
有效的客观和感知度量是评估压缩伪影对体积视频(VV)视觉质量的视觉影响的有价值的工具。在本文中,我们介绍了MPEG小组为创建、基准测试和校准以纹理网格表示的体积视频的客观质量评估指标所做的一些努力。我们创建了一个由176个因各种失真而受损的体积视频组成的具有挑战性的数据集,并进行了一项主观实验来收集人类的意见(收集了5896多个主观分数)。我们通过选择有效的采样方法,将两种最先进的基于模型的点云评估指标应用于纹理网格评估。我们还提出了一种新的基于图像的度量来评估这种VV,其目的是减少基于点的度量由于使用多个kd树搜索而固有的繁琐计算时间。上面提出的每个度量都经过校准(即,选择视图数量或网格采样密度等参数的最佳值),并在我们新的真实性主观数据集上进行评估。对于每个度量,通过交叉验证通过逻辑回归确定特征的最佳选择和组合。这种性能分析,结合MPEG专家的要求,通过学习特征权重,对两个选定的指标和最重要特征的建议进行了验证。
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