2021
DOI: 10.48550/arxiv.2102.11952
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Learning to Drop Points for LiDAR Scan Synthesis

Abstract: Generative modeling of 3D scenes is a crucial topic for aiding mobile robots to improve unreliable observations. However, despite the rapid progress in the natural image domain, building generative models is still challenging for 3D data, such as point clouds. Most existing studies on point clouds have focused on small and uniform-density data. In contrast, 3D LiDAR point clouds widely used in mobile robots are nontrivial to be handled because of the large number of points and varying-density. To circumvent th… Show more

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