OmniLiDAR: A Unified Diffusion Framework for Multi-Domain 3D LiDAR Generation
Youquan Liu, Weidong Yang, Ao Liang, Xiang Xu, Lingdong Kong, Yang Wu, Dekai Zhu, Xin Li, Runnan Chen, Ben Fei, Tongliang Liu, Wanli Ouyang

TL;DR
OmniLiDAR introduces a unified diffusion framework for multi-domain 3D LiDAR generation, enabling controllable synthesis across diverse sensing conditions and domains with novel training and feature modeling strategies.
Contribution
The paper proposes a novel unified diffusion model with cross-domain training, feature modeling, and domain adaptation techniques for multi-domain LiDAR generation.
Findings
Strong generation fidelity demonstrated across eight domains.
Improved downstream performance in semantic segmentation and object detection.
Enhanced robustness under various corruptions and limited-label scenarios.
Abstract
LiDAR scene generation is increasingly important for scalable simulation and synthetic data creation, especially under diverse sensing conditions that are costly to capture at scale. Typically, diffusion-based LiDAR generators are developed under single-domain settings, requiring separate models for different datasets or sensing conditions and hindering unified, controllable synthesis under heterogeneous distribution shifts. To this end, we present OmniLiDAR, a unified text-conditioned diffusion framework that generates LiDAR scans in a shared range-image representation across eight representative domains spanning three shift types: adverse weather, sensor-configuration changes (e.g., reduced beams), and cross-platform acquisition (vehicle, drone, and quadruped). To enable training a single model over heterogeneous domains without isolating optimization by domain, we introduce a…
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