The JPEG Pleno Learning-based Point Cloud Coding Standard: Serving Man and Machine
Andr\'e F. R. Guarda (1), Nuno M. M. Rodrigues (1, 2), Fernando, Pereira (1, 3) ((1) Instituto de Telecomunica\c{c}\~oes, Lisbon, Portugal,, (2) ESTG, Polit\'ecnico de Leiria, Leiria, Portugal, (3) Instituto Superior, T\'ecnico - Universidade de Lisboa, Lisbon, Portugal)

TL;DR
This paper details the JPEG Pleno Learning-based Point Cloud Coding standard, which uses deep learning for efficient compression of point clouds, benefiting both human visualization and machine processing, and compares its performance to existing standards.
Contribution
It introduces a comprehensive technical description of the JPEG PCC standard, highlighting its innovative use of deep learning for geometry and color coding in point cloud compression.
Findings
JPEG PCC outperforms MPEG standards in geometry compression
Significant rate reductions achieved in geometry coding
Full learning-based framework enhances overall compression performance
Abstract
Efficient point cloud coding has become increasingly critical for multiple applications such as virtual reality, autonomous driving, and digital twin systems, where rich and interactive 3D data representations may functionally make the difference. Deep learning has emerged as a powerful tool in this domain, offering advanced techniques for compressing point clouds more efficiently than conventional coding methods while also allowing effective computer vision tasks performed in the compressed domain thus, for the first time, making available a common compressed visual representation effective for both man and machine. Taking advantage of this potential, JPEG has recently finalized the JPEG Pleno Learning-based Point Cloud Coding (PCC) standard offering efficient lossy coding of static point clouds, targeting both human visualization and machine processing by leveraging deep learning…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications · 3D Shape Modeling and Analysis
