论文标题
通过图相似性推断点云质量
Inferring Point Cloud Quality via Graph Similarity
论文作者
论文摘要
我们提出了GraphSIM - 一种客观指标,可准确预测点云的主观质量,并具有叠加的几何形状和颜色障碍。由人类视力系统对高空间频率组件(例如,轮廓,边缘)更敏感的事实,并且对局部结构变化更为重,我们首先提取几何键点,通过重新采集参考点云网状信息来形成对象骨架,从而提取几何键点;然后,我们构建以这些关键点为中心的本地图,以用于参考和扭曲点云,然后共同汇总了颜色梯度矩(例如,零点,第一和第二),这些矩矩(例如,零点,第一和第二)是在所有其他点和同一局部图中的中心键之间得出的,以获得重要的特征相似性(又称局部意义);最终相似性指数是通过在所有颜色通道上汇总局部图显着性并在所有图中平均获得的。我们的GraphSim使用两个大型和独立的点云评估数据集进行了验证,涉及广泛的障碍(例如,重新采样,压缩,添加噪声),可靠地证明了所有扭曲的最先进性能,这些扭曲的表现在预测主观平均值得分(MOS)方面具有明显的增长,并且与这些点的基于点的距离持续距离相比,相比之下。消融研究进一步表明,通过检查其关键模块和参数,GraphSIM被推广到各种情况,并具有一致的性能。
We propose the GraphSIM -- an objective metric to accurately predict the subjective quality of point cloud with superimposed geometry and color impairments. Motivated by the facts that human vision system is more sensitive to the high spatial-frequency components (e.g., contours, edges), and weighs more to the local structural variations rather individual point intensity, we first extract geometric keypoints by resampling the reference point cloud geometry information to form the object skeleton; we then construct local graphs centered at these keypoints for both reference and distorted point clouds, followed by collectively aggregating color gradient moments (e.g., zeroth, first, and second) that are derived between all other points and centered keypoint in the same local graph for significant feature similarity (a.k.a., local significance) measurement; Final similarity index is obtained by pooling the local graph significance across all color channels and by averaging across all graphs. Our GraphSIM is validated using two large and independent point cloud assessment datasets that involve a wide range of impairments (e.g., re-sampling, compression, additive noise), reliably demonstrating the state-of-the-art performance for all distortions with noticeable gains in predicting the subjective mean opinion score (MOS), compared with those point-wise distance-based metrics adopted in standardization reference software. Ablation studies have further shown that GraphSIM is generalized to various scenarios with consistent performance by examining its key modules and parameters.