论文标题

基于图形匹配

Lightweight Object-level Topological Semantic Mapping and Long-term Global Localization based on Graph Matching

论文作者

Wang, Fan, Zhang, Chaofan, Tang, Fulin, Jiang, Hongkui, Wu, Yihong, Liu, Yong

论文摘要

映射和本地化是实际应用程序中移动机器人的两个基本任务。但是,大多数当前成熟解决方案的准确性和鲁棒性都挑战了大量和动态场景。当计算资源受到限制时,这种情况变得更糟。在本文中,我们提出了一种具有高精度和鲁棒性的新型轻型对象映射和本地化方法。与以前的方法不同,我们的方法不需要先前构造的精确的几何图,这大大释放了存储负担,尤其是用于大规模导航。我们使用具有语义和几何信息的对象级特征来对环境中的地标建模。特别是,首先提出了学习拓扑原始的原始性,以有效地获得和组织对象级地标。在此基础上,我们使用以机器人为中心的映射框架将环境表示为语义拓扑图形,并放宽同时维持全球一致性的负担。此外,还引入了层次结构内存管理机制,以提高在线映射的效率,以有限的计算资源。基于提出的地图,通过构建新的本地语义场景图描述符并执行多构造图匹配以比较场景相似性来实现鲁棒的本地化。最后,我们在低成本嵌入式平台上测试我们的方法以证明其优势。大规模和多课程现实环境的实验结果表明,该方法在轻巧和健壮性方面优于艺术状态。

Mapping and localization are two essential tasks for mobile robots in real-world applications. However, largescale and dynamic scenes challenge the accuracy and robustness of most current mature solutions. This situation becomes even worse when computational resources are limited. In this paper, we present a novel lightweight object-level mapping and localization method with high accuracy and robustness. Different from previous methods, our method does not need a prior constructed precise geometric map, which greatly releases the storage burden, especially for large-scale navigation. We use object-level features with both semantic and geometric information to model landmarks in the environment. Particularly, a learning topological primitive is first proposed to efficiently obtain and organize the object-level landmarks. On the basis of this, we use a robot-centric mapping framework to represent the environment as a semantic topology graph and relax the burden of maintaining global consistency at the same time. Besides, a hierarchical memory management mechanism is introduced to improve the efficiency of online mapping with limited computational resources. Based on the proposed map, the robust localization is achieved by constructing a novel local semantic scene graph descriptor, and performing multi-constraint graph matching to compare scene similarity. Finally, we test our method on a low-cost embedded platform to demonstrate its advantages. Experimental results on a large scale and multi-session real-world environment show that the proposed method outperforms the state of arts in terms of lightweight and robustness.

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