LR-SGS: Robust LiDAR-Reflectance-Guided Salient Gaussian Splatting for Self-Driving Scene Reconstruction
arXiv cs.AI / 3/16/2026
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Key Points
- LR-SGS proposes a robust LiDAR-reflectance-guided Salient Gaussian Splatting framework that jointly leverages LiDAR geometry, reflectance, and RGB for better self-driving scene reconstruction.
- It introduces a structure-aware Salient Gaussian representation initialized from LiDAR- and reflectance-based feature points, refined with a salient transform and improved density control to better capture edges and planes.
- The approach converts LiDAR intensity into a reflectance-like material channel attached to each Gaussian and aligns it with RGB to enforce boundary consistency and lighting invariance.
- Experiments on the Waymo Open Dataset show LR-SGS achieves superior reconstruction with fewer Gaussians and shorter training time, outperforming OmniRe by 1.18 dB PSNR on Complex Lighting scenes.
- The work points to more efficient and robust neural rendering for autonomous driving, with potential impacts on perception, mapping, and downstream planning.
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