Fast Lidar Localization Using Multiresolution Gaussian Mixture Maps

2015 IEEE International Conference on Robotics and Automation (ICRA)(2015)

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摘要
This paper reports on a fast multiresolution scan matcher for vehicle localization in urban environments for self-driving cars. State-of-the-art approaches to vehicle localization rely on observing road surface reflectivity with a three-dimensional (3D) light detection and ranging (LIDAR) scanner to achieve centimeter-level accuracy. However, these approaches can often fail when faced with adverse weather conditions that obscure the view of the road paint (e. g., puddles and snowdrifts) or poor road surface texture. We propose a new scan matching algorithm that leverages Gaussian mixture maps to exploit the structure in the environment; these maps are a collection of Gaussian mixtures over the z-height distribution. We achieve real-time performance by developing a novel branch-and-bound, multiresolution approach that makes use of rasterized lookup tables of these Gaussian mixtures. Results are shown on two datasets that are 3.0 k m : a standard trajectory and another under adverse weather conditions.
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关键词
fast LIDAR localization,multiresolution Gaussian mixture maps,fast multiresolution scan matcher,vehicle localization,self-driving cars,urban environments,road surface reflectivity,three-dimensional light detection and ranging scanner,3D LIDAR scanner,centimeter-level accuracy,road paint,road surface texture,scan matching algorithm,z-height distribution,branch-and-bound multiresolution approach,rasterized lookup tables
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