论文标题
在水下大满贯的测深点云中,数据驱动的环路闭合检测
Data-driven Loop Closure Detection in Bathymetric Point Clouds for Underwater SLAM
论文作者
论文摘要
自主导航的同时本地化和映射(SLAM)框架依赖于强大的数据关联来识别循环封闭以进行后端轨迹优化。对于配备了多台次回声器(MBE)的自动水下车辆(AUV),数据关联尤其具有挑战性,这是由于海底可识别的地标的稀缺性,而AUV易于使用,而AUV却很容易发生,并且MBES数据的低分辨率特征。循环封闭检测的深度学习解决方案已显示出来自更结构化环境的数据的出色性能。但是,它们转移到海底领域并不是直接的,并且由于缺乏测深的数据集而阻碍了移植它们的努力。因此,在本文中,我们提出了一种神经网络体系结构,旨在展示将这种技术适应在测深数据中匹配的对应关系的潜力。我们从AUV任务中训练我们的框架,并评估其在环闭合检测任务和粗点云对齐任务上的性能。最后,我们对更传统的方法展示了其潜力,并释放其实现和所使用的数据集。
Simultaneous localization and mapping (SLAM) frameworks for autonomous navigation rely on robust data association to identify loop closures for back-end trajectory optimization. In the case of autonomous underwater vehicles (AUVs) equipped with multibeam echosounders (MBES), data association is particularly challenging due to the scarcity of identifiable landmarks in the seabed, the large drift in dead-reckoning navigation estimates to which AUVs are prone and the low resolution characteristic of MBES data. Deep learning solutions to loop closure detection have shown excellent performance on data from more structured environments. However, their transfer to the seabed domain is not immediate and efforts to port them are hindered by the lack of bathymetric datasets. Thus, in this paper we propose a neural network architecture aimed to showcase the potential of adapting such techniques to correspondence matching in bathymetric data. We train our framework on real bathymetry from an AUV mission and evaluate its performance on the tasks of loop closure detection and coarse point cloud alignment. Finally, we show its potential against a more traditional method and release both its implementation and the dataset used.