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Fusing range and intensity images for mobile robot localization

José Neira, Juan D. Tardós, Joachim Horn, G. Schmidt

Year
1999
Citations
100

Abstract

We present the two-dimensional (2-D) version of the symmetries and perturbation model (SPmodel), a probabilistic representation model and an extended Kalman filter integration mechanism for uncertain geometric information that is suitable for sensor fusion and integration in multisensor systems. We apply the SPmodel to the problem of location estimation in indoor mobile robotics, experimenting with the mobile robot MACROBE. We have chosen two types of complementary sensory information: (1) range images; (2) intensity images; obtained from a laser sensor. Results of these experiments show that fusing simple and computationally inexpensive sensory information can allow a mobile robot to precisely locate itself. They also demonstrate the generality of the proposed fusion and integration mechanism.

Keywords

Mobile robotArtificial intelligenceComputer scienceSensor fusionComputer visionRoboticsRobotKalman filterProbabilistic logic

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