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LiDAR-GS:Real-time LiDAR Re-Simulation using Gaussian Splatting

7 October 2024
Qifeng Chen
Sheng Yang
Sicong Du
Tao Tang
Peng Chen
Yuchi Huo
    3DGS
    AI4CE
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Abstract

We present LiDAR-GS, a Gaussian Splatting (GS) method for real-time, high-fidelity re-simulation of LiDAR scans in public urban road scenes. Recent GS methods proposed for cameras have achieved significant advancements in real-time rendering beyond Neural Radiance Fields (NeRF). However, applying GS representation to LiDAR, an active 3D sensor type, poses several challenges that must be addressed to preserve high accuracy and unique characteristics. Specifically, LiDAR-GS designs a differentiable laser beam splatting, using range-view representation for precise surface splatting by projecting lasers onto micro cross-sections, effectively eliminating artifacts associated with local affine approximations. Furthermore, LiDAR-GS leverages Neural Gaussian Representation, which further integrate view-dependent clues, to represent key LiDAR properties that are influenced by the incident direction and external factors. Combining these practices with some essential adaptations, e.g., dynamic instances decomposition, LiDAR-GS succeeds in simultaneously re-simulating depth, intensity, and ray-drop channels, achieving state-of-the-art results in both rendering frame rate and quality on publically available large scene datasets when compared with the methods using explicit mesh or implicit NeRF. Our source code is publicly available atthis https URL.

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@article{chen2025_2410.05111,
  title={ LiDAR-GS:Real-time LiDAR Re-Simulation using Gaussian Splatting },
  author={ Qifeng Chen and Sheng Yang and Sicong Du and Tao Tang and Peng Chen and Yuchi Huo },
  journal={arXiv preprint arXiv:2410.05111},
  year={ 2025 }
}
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