Objective quality assessment of 3D point clouds is essential for the development of immersive multimedia systems in real-world applications. Despite the success of perceptual quality evaluation for 2D images and videos, blind/no-reference metrics are still scarce for 3D point clouds with large-scale irregularly distributed 3D points. Therefore, in this paper, we propose an objective point cloud quality index with Structure Guided Resampling (SGR) to automatically evaluate the perceptually visual quality of 3D dense point clouds. The proposed SGR is a general-purpose blind quality assessment method without the assistance of any reference information. Specifically, considering that the human visual system (HVS) is highly sensitive to structure information, we first exploit the unique normal vectors of point clouds to execute regional pre-processing which consists of keypoint resampling and local region construction. Then, we extract three groups of quality-related features, including: 1) geometry density features; 2) color naturalness features; 3) angular consistency features. Both the cognitive peculiarities of the human brain and naturalness regularity are involved in the designed quality-aware features that can capture the most vital aspects of distorted 3D point clouds. Extensive experiments on several publicly available subjective point cloud quality databases validate that our proposed SGR can compete with state-of-the-art full-reference, reduced-reference, and no-reference quality assessment algorithms.
翻译:3D点云的客观质量评估对于在现实世界应用中开发隐性多媒体系统至关重要。尽管对 2D 图像和视频的感知质量评估取得了成功,但对于3D点云和大规模非正常分布的3D点点,盲/不参照度指标仍然很少。因此,在本文件中,我们建议采用一个客观点云质量指数,配有结构引导抽样(SGR),以自动评估3D 密度云的视觉质量。拟议的SGR是一种通用盲质量评估方法,没有任何参考信息的帮助。具体地说,考虑到人类视觉系统(HVS)对结构信息非常敏感,我们首先利用点云中独特的正常云载体进行区域预处理,其中包括关键点抽样和本地区域建设。然后,我们抽取了三组质量相关特征,包括:(1) 几何测量密度特征;(2) 颜色自然特征;(3) 三角一致性特征。人类大脑的认知特性和自然规律性都涉及设计的质量认知特征特征,这些特征都对结构信息十分敏感,我们首先利用点云层云云的独特性云的典型性实验,然后利用一些公开质量参考点,从而测定了现有的标准。