3D Surface Reconstruction from Voxel-based Lidar Data
To achieve fully autonomous navigation, vehicles need to compute an accurate model of their direct surrounding. In this paper, a 3D surface reconstruction algorithm from heterogeneous density 3D data is presented. The proposed method is based on a TSDF voxel-based representation, where an adaptive n...
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Zusammenfassung: | To achieve fully autonomous navigation, vehicles need to compute an accurate
model of their direct surrounding. In this paper, a 3D surface reconstruction
algorithm from heterogeneous density 3D data is presented. The proposed method
is based on a TSDF voxel-based representation, where an adaptive neighborhood
kernel sourced on a Gaussian confidence evaluation is introduced. This enables
to keep a good trade-off between the density of the reconstructed mesh and its
accuracy. Experimental evaluations carried on both synthetic (CARLA) and real
(KITTI) 3D data show a good performance compared to a state of the art method
used for surface reconstruction. |
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DOI: | 10.48550/arxiv.1906.10515 |