LiZIP: An Auto-Regressive Compression Framework for LiDAR Point Clouds

arXiv cs.RO / 3/25/2026

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Key Points

  • LiZIP is a proposed near-lossless, zero-drift LiDAR point-cloud compression framework designed to address bandwidth and real-time processing bottlenecks in autonomous vehicles and V2X transmission.
  • The method uses neural predictive coding with a compact MLP to predict point coordinates from local context, then encodes only sparse residuals to reduce storage and transmission size.
  • Experiments on NuScenes and Argoverse show LiZIP achieves 7.5%–14.8% smaller files than LASzip and outperforms Google Draco (with 24-bit quantization) by 8.8%–11.3% across environments.
  • The paper reports strong compression versus general-purpose GZip as well (38%–48% reduction) and demonstrates generalization to an unseen dataset (Argoverse) without retraining.

Abstract

The massive volume of data generated by LiDAR sensors in autonomous vehicles creates a bottleneck for real-time processing and vehicle-to-everything (V2X) transmission. Existing lossless compression methods often force a trade-off: industry standard algorithms (e.g., LASzip) lack adaptability, while deep learning approaches suffer from prohibitive computational costs. This paper proposes LiZIP, a lightweight, near-lossless zero-drift compression framework based on neural predictive coding. By utilizing a compact Multi-Layer Perceptron (MLP) to predict point coordinates from local context, LiZIP efficiently encodes only the sparse residuals. We evaluate LiZIP on the NuScenes and Argoverse datasets, benchmarking against GZip, LASzip, and Google Draco (configured with 24-bit quantization to serve as a high-precision geometric baseline). Results demonstrate that LiZIP consistently achieves superior compression ratios across varying environments. The proposed system achieves a 7.5%-14.8% reduction in file size compared to the industry-standard LASzip and outperforms Google Draco by 8.8%-11.3% across diverse datasets. Furthermore, the system demonstrates generalization capabilities on the unseen Argoverse dataset without retraining. Against the general purpose GZip algorithm, LiZIP achieves a reduction of 38%-48%. This efficiency offers a distinct advantage for bandwidth constrained V2X applications and large scale cloud archival.