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SimULi: Real-Time LiDAR and Camera Simulation with Unscented Transforms

About

Rigorous testing of autonomous robots, such as self-driving vehicles, is essential to ensure their safety in real-world deployments. This requires building high-fidelity simulators to test scenarios beyond those that can be safely or exhaustively collected in the real-world. Existing neural rendering methods based on NeRF and 3DGS hold promise but suffer from low rendering speeds or can only render pinhole camera models, hindering their suitability to applications that commonly require high-distortion lenses and LiDAR data. Multi-sensor simulation poses additional challenges as existing methods handle cross-sensor inconsistencies by favoring the quality of one modality at the expense of others. To overcome these limitations, we propose SimULi, the first method capable of rendering arbitrary camera models and LiDAR data in real-time. Our method extends 3DGUT, which natively supports complex camera models, with LiDAR support, via an automated tiling strategy for arbitrary spinning LiDAR models and ray-based culling. To address cross-sensor inconsistencies, we design a factorized 3D Gaussian representation and anchoring strategy that reduces mean camera and depth error by up to 40% compared to existing methods. SimULi renders 10-20x faster than ray tracing approaches and 1.5-10x faster than prior rasterization-based work (and handles a wider range of camera models). When evaluated on two widely benchmarked autonomous driving datasets, SimULi matches or exceeds the fidelity of existing state-of-the-art methods across numerous camera and LiDAR metrics.

Haithem Turki, Qi Wu, Xin Kang, Janick Martinez Esturo, Shengyu Huang, Ruilong Li, Zan Gojcic, Riccardo de Lutio• 2025

Related benchmarks

TaskDatasetResultRank
Depth ReconstructionWaymo interp.
MedL20.003
13
Novel View SynthesisWaymo interp.
PSNR30.15
12
LiDAR ReconstructionWaymo Dynamic (val)
Median L2 Error0.002
9
Camera ReconstructionPandaSet
PSNR29.76
8
LiDAR ReconstructionPandaSet
Median L2 Error0.002
8
Novel View SynthesisPandaSet
PSNR27.12
8
Novel View SynthesisWaymo Dynamic (val)
PSNR32.35
8
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