首页 /研究 /Mapping and planning under uncertainty in mobile robots with long-range perception
PERCEPTION

Mapping and planning under uncertainty in mobile robots with long-range perception

Pierre Sermanet, Raia Hadsell, Marco Scoffier, Urs Müller, Yann LeCun

发表年份
2008
引用次数
32

摘要

Recent advances in self-supervised learning have enabled very long-range visual detection of obstacles and pathways (to 100 meters or more). Unfortunately, the category and range of regions at such large distances come with a considerable amount of uncertainty. We present a mapping and planning system that accurately represents range and category uncertainties, and accumulates the evidence from multiple frames in a principled way. The system relies on a hyperbolicpolar map centered on the robot with a 200 m radius. Map cells are histograms that accumulate evidence obtained from a self-supervised object classifier operating on image windows. The performance of the system is demonstrated on the LAGR off-road robot platform.

关键词

Artificial intelligenceMobile robotComputer scienceRobotComputer visionHistogramRange (aeronautics)Classifier (UML)PerceptionCognitive neuroscience of visual object recognition

相关论文

查看 PERCEPTION 分类全部论文