泡泡一分钟:Topomap: Topological Mapping and Navigation Based on Visual SLAM Maps

Topomap: Topological Mapping and Navigation Based on Visual SLAM Maps算法

Fabian Bl¨ochliger, Marius Fehr, Marcin Dymczyk, Thomas Schneider and Roland Siegwartapp

Topomap:基于Visual SLAM地图的拓扑映射和导航框架

https://arxiv.org/pdf/1709.05533.pdfide

Abstract—Visual robot navigation within large-scale, semistructured environments deals with various challenges such as computation intensive path planning algorithms or insufficient knowledge about traversable spaces. Moreover, many state of-the-art navigation approaches only operate locally instead of gaining a more conceptual understanding of the planning objective. This limits the complexity of tasks a robot can accomplish and makes it harder to deal with uncertainties that are present in the context of real-time robotics applications.性能

大规模半结构化环境中的视觉机器人导航处理各类挑战,例如计算密集型路径规划算法或关于可穿越空间的不充分知识。此外,许多最早进的导航方法仅在本地运行,而不是对规划目标进行更概念性的理解。这限制了机器人能够完成的任务的复杂性,而且使得处理实时机器人应用中存在的不肯定性变得更加困难。测试

In this work, we present Topomap, a framework which simplifies the navigation task by providing a map to the robot which is tailored for path planning use. This novel approach transforms a sparse feature-based map from a visual Simultaneous Localization And Mapping (SLAM) system into a three-dimensional topological map. This is done in two steps. First, we extract occupancy information directly from the noisy sparse point cloud. Then, we create a set of convex free-space clusters, which are the vertices of the topological map. We show that this representation improves the efficiency of global planning, and we provide a complete derivation of our algorithm. Planning experiments on real world datasets demonstrate that we achieve similar performance as RRT* with significantly lower computation times and storage requirements. Finally, we test our algorithm on a mobile robotic platform to prove its advantages.ui

在这项工做中,咱们介绍了Topomap,这是一个简化导航任务的框架,它为机器人提供了一个专为路径规划使用而定制的地图。这种新颖的方法将稀疏的基于特征的地图从视觉同时定位和建图(SLAM)系统转换为三维拓扑地图。这分两步完成。 首先,咱们直接从嘈杂的稀疏点云中提取占用信息。而后,咱们建立一组凸自由空间簇,它们是拓扑图的顶点。咱们证实了这种表示提升了全局规划的效率,而且咱们提供了算法的完整推导。在现实世界数据集上进行规划实验代表,咱们实现了与RRT *相似的性能,同时显着下降了计算时间和存储要求。最后,咱们在移动机器人平台上测试咱们的算法,以证实其优点。this

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