Point cloud coding solutions have been recently standardized to address the needs of multiple application scenarios. The design and assessment of point cloud coding methods require reliable objective quality metrics to evaluate the level of degradation introduced by compression or any other type of processing. Several point cloud objective quality metrics has been recently proposed to reliable estimate human perceived quality, including the so-called projection-based metrics. In this context, this paper proposes a joint geometry and color projection-based point cloud objective quality metric which solves the critical weakness of this type of quality metrics, i.e., the misalignment between the reference and degraded projected images. Moreover, the proposed point cloud quality metric exploits the best performing 2D quality metrics in the literature to assess the quality of the projected images. The experimental results show that the proposed projection-based quality metric offers the best subjective-objective correlation performance in comparison with other metrics in the literature. The Pearson correlation gains regarding D1-PSNR and D2-PSNR metrics are 17% and 14.2 when data with all coding degradations is considered.
翻译:点云编码方法的设计和评估需要可靠的客观质量指标,以评估压缩或任何其他类型的处理所引入的降解程度。最近提出了若干点云客观质量指标,以可靠地估计人所觉察的质量,包括所谓的基于预测的衡量尺度。在这方面,本文件建议采用一个基于预测的点云计算和颜色的点云计算目标质量联合指标,用以解决这类质量指标的关键弱点,即参考和已退化的预测图像之间的误差。此外,拟议的点云质量指标利用文献中最佳的2D质量指标来评估预测图像的质量。实验结果显示,与文献中的其他指标相比,拟议的基于预测的质量指标提供了最佳的主观-目标相关性表现。在考虑所有编码退化数据时,关于D1-PSNR和D2-PSNR指标的Pearson相关收益为17%和14.2。