JOURNAL ARTICLE

Multiscale deep context modeling for lossless point cloud geometry compression

Abstract

We propose a practical deep generative approach for lossless point cloud geometry compression, called MSVoxelDNN, and show that it significantly reduces the rate compared to the MPEG G-PCC codec. Our previous work based on autoregressive models (VoxelDNN) has a fast training phase, however, inference is slow as the occupancy probabilities are predicted sequentially, voxel by voxel. In this work, we employ a multiscale architecture which models voxel occupancy in coarse-to-fine order. At each scale, MSVoxelDNN divides voxels into eight conditionally independent groups, thus requiring a single network evaluation per group instead of one per voxel. We evaluate the performance of MSVoxelDNN on a set of point clouds from Microsoft Voxelized Upper Bodies (MVUB) and MPEG, showing that the current method speeds up encoding/decoding times significantly compared to the previous VoxelDNN, while having average rate saving over G-PCC of 17.5%. The implementation is available at https://github.com/Weafre/MSVoxelDNN.

Keywords:
Lossless compression Point cloud Computer science Context (archaeology) Compression (physics) Cloud computing Point (geometry) Geometry Data compression Geology Artificial intelligence Materials science Mathematics

Metrics

4
Cited By
0.59
FWCI (Field Weighted Citation Impact)
29
Refs
0.59
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

3D Shape Modeling and Analysis
Physical Sciences →  Engineering →  Computational Mechanics
Computer Graphics and Visualization Techniques
Physical Sciences →  Computer Science →  Computer Graphics and Computer-Aided Design
Advanced Numerical Analysis Techniques
Physical Sciences →  Engineering →  Computational Mechanics
© 2026 ScienceGate Book Chapters — All rights reserved.