A new state vector and a map joining algorithm for range-only SLAM
Adizul Ahmad, Shoudong Huang, Jianguo Wang, Gamini Dissanayake
- Year
- 2012
- Citations
- 3
Abstract
This paper presents a new state vector and a map joining algorithm for range-only SLAM problems. Local maps are built by least squares optimization using the new state vector and a landmark initialization strategy which is an improvement on our preliminary work [1]. The map joining algorithm combines the local maps using least squares optimization to maintain the estimation consistency. Both the local map building and the map joining algorithm maintain a list of “unused range observations” to minimize the potential for information loss. The accuracy of the proposed method is evaluated using a simulation dataset, and an experimental dataset provided by the Robotics Institute at Carnegie Mellon University (CMU).
Keywords
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