2023
DOI: 10.48550/arxiv.2301.10100
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Using a Waffle Iron for Automotive Point Cloud Semantic Segmentation

Abstract: Semantic segmentation of point clouds in autonomous driving datasets requires techniques that can process large numbers of points over large field of views. Today, most deep networks designed for this task exploit 3D sparse convolutions to reduce memory and computational loads. The best methods then further exploit specificities of rotating lidar sampling patterns to further improve the performance, e.g., cylindrical voxels, or range images (for feature fusion from multiple point cloud representations). In con… Show more

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