2021
DOI: 10.48550/arxiv.2111.10638
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A Gaussian Process-Based Ground Segmentation for Sloped Terrains

Abstract: A Gaussian Process (GP) based ground segmentation method is proposed in this paper which is fully developed in a probabilistic framework. The proposed method tends to obtain a continuous realistic model of the ground. The LiDAR three-dimensional point cloud data is used as the sole source of the input data. The physical realities of the data are taken into account to properly classify sloped ground as well as the flat ones. Furthermore, unlike conventional ground segmentation methods, no height or distance con… Show more

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