Point cloud quality assessment (PCQA) has become an appealing research field in recent days. Considering the importance of saliency detection in quality assessment, we propose an effective full-reference PCQA metric which makes the first attempt to utilize the saliency information to facilitate quality prediction, called point cloud quality assessment using 3D saliency maps (PQSM). Specifically, we first propose a projection-based point cloud saliency map generation method, in which depth information is introduced to better reflect the geometric characteristics of point clouds. Then, we construct point cloud local neighborhoods to derive three structural descriptors to indicate the geometry, color and saliency discrepancies. Finally, a saliency-based pooling strategy is proposed to generate the final quality score. Extensive experiments are performed on four independent PCQA databases. The results demonstrate that the proposed PQSM shows competitive performances compared to multiple state-of-the-art PCQA metrics.
翻译:近几天来,点云质量评估(PCQA)已成为一个颇有吸引力的研究领域。考虑到在质量评估中突出发现的重要性,我们建议采用有效的全参考PCQA衡量标准,首次尝试利用突出信息促进质量预测,即使用3D突出地图(PQSM)进行点云质量评估。具体地说,我们首先建议采用基于预测的点云突出度地图生成方法,引入深度信息,以更好地反映点云的几何特征。然后,我们建造点云地方邻居,以产生3个结构描述仪,以显示几何、肤色和显著差异。最后,建议采用基于显著的集合战略来产生最后的质量评分。对4个独立的PCQA数据库进行了广泛的实验。结果显示,拟议的PQSM显示与多种最先进的PCQA衡量标准相比,有竞争力的表现。