RoGs: Large Scale Road Surface Reconstruction with Meshgrid Gaussian
Road surface reconstruction plays a crucial role in autonomous driving, which can be used for road lane perception and autolabeling. Recently, mesh-based road surface reconstruction algorithms have shown promising reconstruction results. However, these mesh-based methods suffer from slow speed and p...
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Zusammenfassung: | Road surface reconstruction plays a crucial role in autonomous driving, which
can be used for road lane perception and autolabeling. Recently, mesh-based
road surface reconstruction algorithms have shown promising reconstruction
results. However, these mesh-based methods suffer from slow speed and poor
reconstruction quality. To address these limitations, we propose a novel
large-scale road surface reconstruction approach with meshgrid Gaussian, named
RoGs. Specifically, we model the road surface by placing Gaussian surfels in
the vertices of a uniformly distributed square mesh, where each surfel stores
color, semantic, and geometric information. This square mesh-based layout
covers the entire road with fewer Gaussian surfels and reduces the overlap
between Gaussian surfels during training. In addition, because the road surface
has no thickness, 2D Gaussian surfel is more consistent with the physical
reality of the road surface than 3D Gaussian sphere. Then, unlike previous
initialization methods that rely on point clouds, we introduce a vehicle
pose-based initialization method to initialize the height and rotation of the
Gaussian surfel. Thanks to this meshgrid Gaussian modeling and pose-based
initialization, our method achieves significant speedups while improving
reconstruction quality. We obtain excellent results in reconstruction of road
surfaces in a variety of challenging real-world scenes. |
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DOI: | 10.48550/arxiv.2405.14342 |