Framework for Natural Landmark-based Robot Localization

Montero, A.S.,Sekkati, H.,Jochen Lang, Laganière, R.

Computer and Robot Vision(2012)

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摘要
In this paper we present a framework for vision-based robot localization using natural planar landmarks. Specifically, we demonstrate our framework with planar targets using Fern classifiers that have been shown to be robust against illumination changes, perspective distortion, motion blur, and occlusions. We add stratified sampling in the image plane to increase robustness of the localization scheme in cluttered environments and on-line checking for false detection of targets to decrease false positives. We use all matching points to improve pose estimation and an off-line target evaluation strategy to improve a priori map building. We report experiments demonstrating the accuracy and speed of localization. Our experiments entail synthetic and real data. Our framework and our improvements are however more general and the Fern classifier could be replaced by other techniques.
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关键词
SLAM (robots),clutter,image classification,image matching,image sampling,mobile robots,object detection,pose estimation,robot vision,Fern classifiers,cluttered environments,false positives,illumination changes,image plane,localization accuracy,localization speed,map building,matching points,motion blur,natural planar landmark-based robot localization framework,occlusions,offline target evaluation strategy,online checking,perspective distortion,planar targets,pose estimation improvement,stratified sampling,target false detection,vision-based robot localization,Ferns,feature matching,natural planar landmarks,robot localization,
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