Performance Comparison of Landmark Recognition Systems for Navigating Mobile Robots
Tom Duckett, Ulrich Nehmzow
- Year
- 2000
- Citations
- 15
- Access
- Open access
Abstract
Self-localisation is an essential competence for mobile robot navigation. Due to the fundamental unreliability of dead reckoning, a robot must depend on its perception of external environmental features or landmarks to localise itself. A key question is how to evaluate landmark recognition systems for mobile robots. This paper answers this question by means of quantitative performance measures. An empirical study is presented in which a number of algorithms are compared in four environments. The results of this analysis are then applied to the development of a novel landmark recognition system for a Nomad 200 robot. Subsequent experiments demonstrate that the new system obtains a similar level of performance to the best alternative method, but at a much lower computational cost. Introduction The most important requirement for robot navigation --- other than staying operational and avoiding collisions --- is that of establishing one's own position (self- localisation). O...
Keywords
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