1. SLAM and map merging
- Author
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Elena López Guillén, David Schleicher Gómez, Ángel León García, Manuel Ocaña Miguel, Rafael Barea Navarro, and Luis Miguel Bergasa Pascual
- Subjects
business.industry ,Rao-blackwellised particle filter ,Fast-slam ,Mobile robot ,Global Map ,Robotics ,Ciencia de la Computación e Inteligencia Artificial ,Simultaneous localization and mapping ,Geography ,Odometry ,Control and Systems Engineering ,Robot ,Computer vision ,Multi-robot SLAM ,Scan-matching ,Artificial intelligence ,Localization system ,business ,Software - Abstract
This paper presents a multi-robot mapping and localization system. Learning maps and efficient exploration of an unknown environment is a fundamental problem in mobile robotics usually called SLAM (simultaneous localization and mapping problem). Our approach involves a team of mobile robots that uses Scan-Matching and Fast-SLAM techniques based on scan-laser and odometry information for mapping large environments. The single maps generated for each robot are more accurate than the maps generated only by odometry. When a robot detects another, it sends its processed map and the master robot generates a very accurate global map. This method cuts down the global map building time. Some experimental results and conclusions are presented. Comunidad de Madrid and the University of Alcalá, support through the projects RoboCity2030 (CAM-S-0505/DPI/000176) and SLAM-MULEX (CCG07-UAH/DPI-1736).