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Robust localization using context in omnidirectional imaging

Lucas Paletta, Simone Frintrop, Joachim Hertzberg

Year
2002
Citations
38

Abstract

This work presents the concept to recover and utilize the visual context in panoramic images. Omnidirectional imaging has become recently an efficient basis for robot navigation. The proposed Bayesian reasoning over local image appearances enables to reject false hypotheses which do not fit the structural constraints in corresponding feature trajectories. The methodology is proved with real image data from an office robot to dramatically increase the localization performance in the presence of severe occlusion effects, particularly in noisy environments, and to recover rotational information on the fly.

Keywords

Computer visionArtificial intelligenceOmnidirectional antennaComputer scienceContext (archaeology)RobotFeature (linguistics)Feature extractionVisualizationMobile robot

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