Illuminance Measurement and SLAM of A Mobile Robot based on Computational Intelligence
Hironobu Sasaki, Naoyuki Kubota, Kazuhiko Taniguchi, Yasutsugu Nogawa
- Year
- 2007
- Citations
- 4
Abstract
This paper proposes self-localization and map building methods based on a steady-state genetic algorithm and self organizing map for a mobile robot used for illuminance measurement. According to the measured distance by a laser range finder, the map is updated sequentially. When the difference between the self-position on the building map and the estimated self-position based on the measured distance is larger than the predefined threshold, the proposed method corrects the self-location and updates the map to be more accurate. Finally we show experimental results of the proposed method.
Keywords
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