When multiple robots are involved in the process of simultaneous localization and mapping (SLAM), a global map should be constructed by merging the local maps built by individual robots, so as to provide a better representation of the environment. Hence, the map-merging methods play a crucial rule in multi-robot systems and determine the performance of multi-robot SLAM. This paper looks into the key problem of map merging for multiple-ground-robot SLAM and reviews the typical map-merging methods for several important types of maps in SLAM applications: occupancy grid maps, feature-based maps, and topological maps. These map-merging approaches are classified based on their working mechanism or the type of features they deal with. The concepts and characteristics of these map-merging methods are elaborated in this review. The contents summarized in this paper provide insights and guidance for future multiple-ground-robot SLAM solutions.
CITATION STYLE
Yu, S., Fu, C., Gostar, A. K., & Hu, M. (2020). A review on map-merging methods for typical map types in multiple-ground-robot slam solutions. Sensors (Switzerland), 20(23), 1–20. https://doi.org/10.3390/s20236988
Mendeley helps you to discover research relevant for your work.