Learning Occupancy Grid Maps with Forward Sensor Models

被引:0
|
作者
Sebastian Thrun
机构
[1] Stanford University,Computer Science Department
来源
Autonomous Robots | 2003年 / 15卷
关键词
mobile robotics; mapping; Bayesian techniques; probabilistic inference; robot navigation; SLAM;
D O I
暂无
中图分类号
学科分类号
摘要
This article describes a new algorithm for acquiring occupancy grid maps with mobile robots. Existing occupancy grid mapping algorithms decompose the high-dimensional mapping problem into a collection of one-dimensional problems, where the occupancy of each grid cell is estimated independently. This induces conflicts that may lead to inconsistent maps, even for noise-free sensors. This article shows how to solve the mapping problem in the original, high-dimensional space, thereby maintaining all dependencies between neighboring cells. As a result, maps generated by our approach are often more accurate than those generated using traditional techniques. Our approach relies on a statistical formulation of the mapping problem using forward models. It employs the expectation maximization algorithm for searching maps that maximize the likelihood of the sensor measurements.
引用
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页码:111 / 127
页数:16
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