No-Reference Point Cloud Quality Assessment via Graph Convolutional Network
Wu Chen, Qiuping Jiang, Wei Zhou, Feng Shao, Guangtao Zhai, Weisi Lin

TL;DR
This paper introduces a no-reference point cloud quality assessment method using graph convolutional networks to analyze multi-view image dependencies, achieving superior performance on benchmark datasets.
Contribution
It proposes a novel GCN-based approach for no-reference point cloud quality assessment that models mutual dependencies among multi-view projections.
Findings
Outperforms state-of-the-art metrics on benchmark datasets
Effectively captures mutual dependencies among multi-view images
Provides a robust no-reference quality prediction method
Abstract
Three-dimensional (3D) point cloud, as an emerging visual media format, is increasingly favored by consumers as it can provide more realistic visual information than two-dimensional (2D) data. Similar to 2D plane images and videos, point clouds inevitably suffer from quality degradation and information loss through multimedia communication systems. Therefore, automatic point cloud quality assessment (PCQA) is of critical importance. In this work, we propose a novel no-reference PCQA method by using a graph convolutional network (GCN) to characterize the mutual dependencies of multi-view 2D projected image contents. The proposed GCN-based PCQA (GC-PCQA) method contains three modules, i.e., multi-view projection, graph construction, and GCN-based quality prediction. First, multi-view projection is performed on the test point cloud to obtain a set of horizontally and vertically projected…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · 3D Shape Modeling and Analysis · Advanced Optical Sensing Technologies
MethodsGraph Convolutional Network · Sparse Evolutionary Training
