Litcius/Paper detail

Joint Geometry and Color Projection-Based Point Cloud Quality Metric

Alireza Javaheri, Catarina Brites, Fernando Pereira, João Ascenso

2022IEEE Access32 citationsDOIOpen Access PDF

Abstract

Point cloud coding solutions have been recently standardized to address the needs of multiple application scenarios. The design and assessment of point cloud coding methods require reliable objective quality metrics to evaluate the level of degradation introduced by compression or any other type of processing. Several point cloud objective quality metrics have been recently proposed to reliably estimate human perceived quality, including the so-called projection-based metrics. In this context, this paper proposes a joint geometry and color projection-based point cloud objective quality metric which solves the critical weakness of this type of quality metrics, i.e., the misalignment between the reference and degraded projected images. Moreover, the proposed point cloud quality metric exploits the best performing 2D quality metrics in the literature to assess the quality of the projected images. The experimental results show that the proposed projection-based quality metric offers the best subjective-objective correlation performance in comparison with other metrics in the literature. The Pearson correlation gains regarding D1-PSNR and D2-PSNR metrics range between ~5% to ~70% on three different datasets when data with all coding degradations is considered.

Topics & Concepts

Point cloudComputer scienceMetric (unit)Cloud computingData miningCoding (social sciences)Projection (relational algebra)Context (archaeology)Artificial intelligenceVideo qualityAlgorithmComputer visionMathematicsStatisticsOperating systemEconomicsPaleontologyBiologyOperations managementImage and Video Quality AssessmentComputer Graphics and Visualization Techniques3D Shape Modeling and Analysis