基于地表GICP

M. Vlaminck, H. Luong, W. Philips
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引用次数: 6

摘要

在本文中,我们提出了一种广义ICP算法的扩展,用于点云的配准,用于基于激光雷达的SLAM应用。与平面到平面的代价函数相反,它假设每个点集都是局部平面的,我们建议将底层表面上的附加信息合并到GICP过程中。这样做,我们能够更好地处理激光雷达点云中通常存在的伪影,包括不均匀和稀疏的点密度、噪声和缺失的数据。在KITTI基准的激光雷达序列上的实验表明,与原始GICP算法相比,我们能够大大降低位置误差。
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Surface-Based GICP
In this paper we present an extension of the Generalized ICP algorithm for the registration of point clouds for use in lidar-based SLAM applications. As opposed to the plane-to-plane cost function, which assumes that each point set is locally planar, we propose to incorporate additional information on the underlying surface into the GICP process. Doing so, we are able to deal better with the artefacts that are typically present in lidar point clouds, including an inhomogeneous and sparse point density, noise and missing data. Experiments on lidar sequences of the KITTI benchmark demonstrate that we are able to substantially reduce the positional error compared to the original GICP algorithm.
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