Dealing with robustness in mobile robot guidance while operating with visual strategies
Giovanni Bianco, Alexander Zelinsky
- 发表年份
- 2002
- 引用次数
- 7
摘要
This paper introduces a theory to formally and practically analyze the robustness issues of visual guidance methods for robot navigation. The first aspect is related to the convergence of the navigation system to the goal. It is shown how the dynamic system which drives the strategies can be analyzed by using classical concepts such as the Lyapunov functions. The second aspect concerns the conservativeness of the resulting navigation vector fields. It is shown how this deals with the repeatability of the trials. Furthermore, the selection of the best landmarks to perform the navigation processes strongly affects the conservativeness thus providing a formal way to do landmark learning. The theory has been tested with two different visual methods that have been derived from the biological world: the snapshot model and the landmark model.
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