Learning traversability models for autonomous mobile vehicles

被引:0
|
作者
Michael Shneier
Tommy Chang
Tsai Hong
Will Shackleford
Roger Bostelman
James S. Albus
机构
[1] National Institute of Standards and Technology,
来源
Autonomous Robots | 2008年 / 24卷
关键词
Learning; Traversability; Classification; Color models; Texture; Range; Mobile robotics;
D O I
暂无
中图分类号
学科分类号
摘要
Autonomous mobile robots need to adapt their behavior to the terrain over which they drive, and to predict the traversability of the terrain so that they can effectively plan their paths. Such robots usually make use of a set of sensors to investigate the terrain around them and build up an internal representation that enables them to navigate. This paper addresses the question of how to use sensor data to learn properties of the environment and use this knowledge to predict which regions of the environment are traversable. The approach makes use of sensed information from range sensors (stereo or ladar), color cameras, and the vehicle’s navigation sensors. Models of terrain regions are learned from subsets of pixels that are selected by projection into a local occupancy grid. The models include color and texture as well as traversability information obtained from an analysis of the range data associated with the pixels. The models are learned without supervision, deriving their properties from the geometry and the appearance of the scene.
引用
收藏
页码:69 / 86
页数:17
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