Semantic labeling of places
Cyrill Stachniss, Óscar Martínez Mozos, Axel Rottmann, Wolfram Burgard
- 发表年份
- 2005
- 引用次数
- 30
- 访问权限
- 开放获取
摘要
Indoor environments can typically be divided into places with different \nfunctionalities like corridors, kitchens, offices, or seminar rooms. We believe that \nsuch semantic information enables a mobile robot to more efficiently accomplish a \nvariety of tasks such as human-robot interaction, path-planning, or localization. In \nthis paper, we propose an approach to classify places in indoor environments into \ndifferent categories. Our approach uses AdaBoost to boost simple features extracted from vision and laser range data. Furthermore,we apply a Hidden Markov Model to take spatial dependencies between robot poses into account and to increase the robustness of the classification. Our technique has been implemented and tested on real robots as well as in simulation. Experiments presented in this paper demonstrate that our approach can be utilized to robustly classify places into semantic categories.
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