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Have We Scene It All? Scene Graph-Aware Deep Point Cloud Compression

IEEE Robotics and Automation Letters (IEEE RA-L), 2025
9 October 2025
Nikolaos Stathoulopoulos
Christoforos Kanellakis
G. Nikolakopoulos
    3DPC
ArXiv (abs)PDFHTMLGithub (20★)
Main:7 Pages
6 Figures
Bibliography:1 Pages
Abstract

Efficient transmission of 3D point cloud data is critical for advanced perception in centralized and decentralized multi-agent robotic systems, especially nowadays with the growing reliance on edge and cloud-based processing. However, the large and complex nature of point clouds creates challenges under bandwidth constraints and intermittent connectivity, often degrading system performance. We propose a deep compression framework based on semantic scene graphs. The method decomposes point clouds into semantically coherent patches and encodes them into compact latent representations with semantic-aware encoders conditioned by Feature-wise Linear Modulation (FiLM). A folding-based decoder, guided by latent features and graph node attributes, enables structurally accurate reconstruction. Experiments on the SemanticKITTI and nuScenes datasets show that the framework achieves state-of-the-art compression rates, reducing data size by up to 98% while preserving both structural and semantic fidelity. In addition, it supports downstream applications such as multi-robot pose graph optimization and map merging, achieving trajectory accuracy and map alignment comparable to those obtained with raw LiDAR scans.

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