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Information-based Active SLAM via Topological Feature Graphs

Beipeng Mu, Matthew Giamou, Liam Paull, Ali‐akbar Agha‐mohammadi, John J. Leonard, Jonathan P. How

Year
2015
Citations
4
Access
Open access

Abstract

Active SLAM is the task of actively planning robot paths while simultaneously building a map and localizing within. Existing work has focused on planning paths with occupancy grid maps, which do not scale well and suffer from long term drift. This work proposes a Topological Feature Graph (TFG) representation that scales well and develops an active SLAM algorithm with it. The TFG uses graphical models, which utilize independences between variables, and enables a unified quantification of exploration and exploitation gains with a single entropy metric. Hence, it facilitates a natural and principled balance between map exploration and refinement. A probabilistic roadmap path-planner is used to generate robot paths in real time. Experimental results demonstrate that the proposed approach achieves better accuracy than a standard grid-map based approach while requiring orders of magnitude less computation and memory resources.

Keywords

Occupancy grid mappingComputer scienceSimultaneous localization and mappingGridMotion planningComputationProbabilistic logicRobotFeature (linguistics)Graph

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