首页 /研究 /Long-term human affordance maps
PERCEPTION

Long-term human affordance maps

Raffaele Limosani, Luis Yoichi Morales, Jani Even, Florent Ferreri, Atsushi Watanabe, Filippo Cavallo, Paolo Dario, Norihiro Hagita

发表年份
2015
引用次数
5

摘要

This paper presents a work on mapping the use of space by humans in long periods of time. Daily geometric maps with the same coordinate frame were generated with SLAM, and in a similar manner, daily affordance density maps (places people use) were generated with the output of a human tracker running on the robot. The contribution of the paper is two-fold: an approach to detect geometric changes to cluster them in similar geometric configurations and the building of geometric and affordance composite maps on each cluster. This approach avoids the loss of long term retrieved information. Geometric similarity was computed using a normal distance approach on the maps. The analysis was performed on data collected by a mobile robot for a period of 4 months accumulating data equivalent to 70 days. Experimental results show that the system is capable of detecting geometric changes in the environment and clustering similar geometric configurations.

关键词

AffordanceCluster analysisArtificial intelligenceComputer visionFrame (networking)Computer scienceSimilarity (geometry)RobotTerm (time)Geometric modeling

相关论文

查看 PERCEPTION 分类全部论文