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Bathymetric factor graph SLAM with sparse point cloud alignment

机译:带稀疏点云对齐的测深因子图SLAM

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This paper reports on a factor graph simultaneous localization and mapping framework for autonomous underwater vehicle localization based on terrain-aided navigation. The method requires no prior bathymetric map and only assumes that the autonomous underwater vehicle has the ability to sparsely sense the local water column depth, such as with a bottom-looking Doppler velocity log. Since dead-reckoned navigation is accurate in short time windows, the vehicle accumulates several water column depth point clouds???or submaps???during the course of its survey. We propose an xy-alignment procedure between these submaps in order to enforce consistent bathymetric structure over time, and therefore attempt to bound long-term navigation drift. We evaluate the submap alignment method in simulation and present performance results from multiple autonomous underwater vehicle field trials.
机译:本文报告了一种基于地形辅助导航的水下机器人自主定位的因子图同时定位与制图框架。该方法不需要事先的测深图,仅假设自主水下航行器具有稀疏感测局部水柱深度的能力,例如具有底视多普勒速度测井仪的能力。由于在短时间窗内进行精确的无人驾驶导航,车辆在测量过程中会积聚几个水柱深度点云或子图。我们建议在这些子图之间执行xy对齐过程,以便随着时间的推移实施一致的测深结构,并因此尝试限制长期导航漂移。我们在仿真中评估子图对齐方法,并从多个自主的水下航行器野外试验中获得性能结果。

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