Point Cloud Geometry Scalable Coding Using a Resolution and Quality-conditioned Latents Probability Estimator
Daniele Mari, Andr\'e F. R. Guarda, Nuno M. M. Rodrigues, Simone, Milani, and Fernando Pereira

TL;DR
This paper introduces SRQH, a scalable coding scheme for point clouds that models relationships between different resolutions and qualities, enabling efficient multi-resolution decoding with minimal quality loss.
Contribution
It proposes a novel joint quality and resolution scalability method for deep learning-based point cloud coding, addressing the challenge of flexible, multi-resolution, and quality decoding.
Findings
Enables decoding at multiple resolutions and qualities from a single bitstream.
Achieves limited rate-distortion penalty compared to non-scalable coding.
Integrates effectively with JPEG Pleno standard for point cloud coding.
Abstract
In the current age, users consume multimedia content in very heterogeneous scenarios in terms of network, hardware, and display capabilities. A naive solution to this problem is to encode multiple independent streams, each covering a different possible requirement for the clients, with an obvious negative impact in both storage and computational requirements. These drawbacks can be avoided by using codecs that enable scalability, i.e., the ability to generate a progressive bitstream, containing a base layer followed by multiple enhancement layers, that allow decoding the same bitstream serving multiple reconstructions and visualization specifications. While scalable coding is a well-known and addressed feature in conventional image and video codecs, this paper focuses on a new and very different problem, notably the development of scalable coding solutions for deep learning-based Point…
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Taxonomy
Topics3D Shape Modeling and Analysis · Remote Sensing and LiDAR Applications · 3D Surveying and Cultural Heritage
MethodsBalanced Selection
