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Environmental map building for a mobile robot using infrared range-finder sensors

Yun‐Su Ha, Heon‐Hui Kim

Year
2004
Citations
10

Abstract

This paper presents a methodology for building a high-accuracy environmental map using a mobile robot. The design approach uses low-cost infrared range-finder sensors incorporating with neural networks. To enhance the map quality, the errors occurring from the sensors are corrected. The non-linearity error of the sensors is compensated using a backpropagation neural network and the random error of readings including the uncertainty of the environment is taken into a sensor model as a probabilistic approach. The map is represented by an occupancy grid framework and updated by the Bayesian estimation mechanism. The effectiveness of the proposed method is verified through a series of experiments.

Keywords

Occupancy grid mappingMobile robotComputer scienceArtificial intelligenceArtificial neural networkProbabilistic logicRange (aeronautics)RobotBackpropagationGrid reference

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