Place learning and recognition using hidden Markov models
Olivier Aycard, François Charpillet, Dominique Fohr, João Fernando Mari
- Year
- 2002
- Citations
- 37
Abstract
In this paper, we propose a new method based on hidden Markov models to learn and recognize places in an indoor environment by a mobile robot. Hidden Markov models have been used for a long time in pattern recognition, especially in speech recognition. Their main advantages over other methods (e.g. neural networks) are their capabilities to modelize noisy temporal signals of variable length. We show in this paper that this approach is well adapted for learning and recognition of places by a mobile robot. Results of experiments on a real robot with five distinctive places are given.
Keywords
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