Local Luminance Patterns for Point Cloud Quality Assessment

Rafael Diniz, P. Freitas, Mylène C. Q. Farias
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引用次数: 22

Abstract

In recent years, there has been an increase in the popularity of Point Clouds (PC) as the preferred data structure for representing 3D visual contents. Examples of PC applications range from 3D representations of small objects up to large maps. The advent of PC adoption triggered the development of new coding, transmission, and presentation methodologies. And, along with these, novel methods for evaluating the visual quality of PC contents. This paper presents a new objective full-reference visual quality metric for PC contents, which uses a proposed descriptor entitled Local Luminance Patterns (LLP). It extracts the statistics of the luminance information of reference and test PCs and compares their statistics to assess the perceived quality of the test PC. The proposed PC quality assessment method can be applied to both large and small scale PCs. Using publicly available PC quality datasets, we compared the proposed method with current state-of-the-art PC quality metrics, obtaining competing results.
用于点云质量评估的局部亮度模式
近年来,点云(PC)作为表示3D视觉内容的首选数据结构越来越受欢迎。PC应用程序的示例范围从小物体的3D表示到大地图。PC的出现引发了新的编码、传输和表示方法的发展。与此同时,还出现了评估PC内容视觉质量的新方法。本文提出了一种新的PC内容的客观全参考视觉质量度量,它使用了一个被提议的描述符,称为局部亮度模式(LLP)。它提取参考PC和测试PC的亮度信息的统计数据,并将其统计数据进行比较,以评估测试PC的感知质量。所提出的PC机质量评价方法适用于大型和小型PC机。使用公开可用的PC质量数据集,我们将所提出的方法与当前最先进的PC质量指标进行了比较,得到了相互竞争的结果。
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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