APM-SLAM:基于紧耦合先验地图的固定路线视觉定位

IF 7.8
Linsong Xue;Qi Luo;Kai Zhang
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引用次数: 0

摘要

沿着固定路线定位是交通应用的基本功能,包括巡逻车、班车、公共汽车,甚至客运车辆。为了实现准确可靠的定位,我们提出了一种紧密耦合的先验地图同步定位与制图(APM-SLAM)系统。APM-SLAM提供了一个全面的异构框架,包括映射和定位过程。制图阶段利用全球导航卫星系统(GNSS)辅助运动结构(SfM)建立可靠的先验地图,包括粗级和精细级组件。定位过程结合了粗精匹配和最大后验概率(MAP)估计来提高姿态精度。通过结合基于深度学习的特征和点描述符,我们的系统即使在具有显著视觉变化的场景中也能保持鲁棒性。与传统的基于地图的方法不同,APM-SLAM将先验地图的点结构建模为概率分布,并将其纳入优化过程。在公共数据集上的大量实验证明了我们的方法在制图精度和定位精度上的优势,达到了分米级的翻译精度。消融研究进一步验证了我们系统中每个组件的有效性。这项工作有助于同时建立地图和利用先验信息进行定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APM-SLAM: Visual Localization for Fixed Routes with Tightly Coupled a Priori Map
Localization along fixed routes is the fundamental function of transportation applications, including patrol vehicles, shuttles, buses, and even passenger vehicles. To achieve accurate and reliable localization, we propose a tightly coupled A Priori Map Simultaneous Localization and Mapping (APM-SLAM) system. APM-SLAM provides a comprehensive and heterogeneous framework, encompassing both mapping and localization processes. The mapping stage leverages Global Navigation Satellite System (GNSS)-aided Structure from Motion (SfM) to establish reliable a priori maps with coarse-and fine-level components. The localization process integrates coarse-to-fine matching with Maximum A Posteriori (MAP) Probability estimation to refine pose accuracy. By incorporating deep learning-based features and point descriptors, our system maintains robustness even in scenarios with significant visual variation. Unlike traditional map-based approaches, APM-SLAM models the a priori map's point structures as probabilistic distributions and incorporates them into the optimization process. Extensive experiments on public datasets demonstrate the superiority of our method in both mapping precision and localization accuracy, achieving decimeter-level translation precision. Ablation studies further validate the effectiveness of each component within our system. This work contributes to establishing maps and utilizing a priori information for localization simultaneously.
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CiteScore
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