Benchmarking of Objective Quality Metrics for Colorless Point Clouds

E. Alexiou, T. Ebrahimi
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引用次数: 13

Abstract

Recent advances in depth sensing and display technologies, along with the significant growth of interest for augmented and virtual reality applications, lay the foundation for the rapid evolution of applications that provide immersive experiences. In such applications, advanced content representations are required in order to increase the engagement of the user with the displayed imageries. Point clouds have emerged as a promising solution to this aim, due to their efficiency in capturing, storing, delivering and rendering of 3D immersive contents. As in any type of imaging, the evaluation of point clouds in terms of visual quality is essential. In this paper, benchmarking results of the state-of-the-art objective metrics in geometry-only point clouds are reported and analyzed under two different types of geometry degradations, namely Gaussian noise and octree- based compression. Human ratings obtained from two subjective experiments are used as the ground truth. Our results show that most objective quality metrics perform well in the presence of noise, whereas one particular method has high predictive power and outperforms the others after octree-based encoding.
无色点云客观质量指标的基准测试
深度传感和显示技术的最新进展,以及对增强现实和虚拟现实应用的兴趣的显着增长,为提供沉浸式体验的应用的快速发展奠定了基础。在这样的应用程序中,为了增加用户对所显示图像的参与,需要高级内容表示。由于点云在捕获、存储、传输和渲染3D沉浸式内容方面的效率,它已经成为实现这一目标的一个有希望的解决方案。与任何类型的成像一样,从视觉质量方面对点云进行评估是必不可少的。本文报道并分析了纯几何点云在高斯噪声和基于八叉树的压缩两种不同几何退化类型下最先进的客观指标的基准测试结果。从两个主观实验中获得的人类评分被用作基础事实。我们的研究结果表明,大多数客观质量指标在存在噪声的情况下表现良好,而一种特定的方法具有很高的预测能力,并且在基于八叉树的编码后优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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