Deep Learning based Joint Geometry and Attribute Up-sampling for Large-Scale Colored Point Clouds
Yun Zhang, Feifan Chen, Na Li, Zhiwei Guo, Xu Wang, Fen Miao, Sam Kwong

TL;DR
This paper introduces a deep learning framework for joint geometry and attribute up-sampling of large-scale colored point clouds, significantly improving quality and introducing a new dataset for this task.
Contribution
It proposes a novel joint up-sampling method with an attribute enhancement module and releases a large-scale dataset for colored point cloud up-sampling.
Findings
Achieves high PSNR scores at various up-sampling rates.
Outperforms state-of-the-art methods in quality metrics.
Provides a new large-scale dataset for the community.
Abstract
Colored point cloud, which includes geometry and attribute components, is a mainstream representation enabling realistic and immersive 3D applications. To generate large-scale and denser colored point clouds, we propose a deep learning-based Joint Geometry and Attribute Up-sampling (JGAU) method that learns to model both geometry and attribute patterns while leveraging spatial attribute correlations. First, we establish and release a large-scale dataset for colored point cloud up-sampling called SYSU-PCUD, containing 121 large-scale colored point clouds with diverse geometry and attribute complexities across six categories and four sampling rates. Second, to improve the quality of up-sampled point clouds, we propose a deep learning-based JGAU framework that jointly up-samples geometry and attributes. It consists of a geometry up-sampling network and an attribute up-sampling network,…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Interactive and Immersive Displays
