Publication | Closed Access
Semantic place classification of indoor environments with mobile robots using boosting
99
Citations
13
References
2005
Year
Artificial IntelligenceLocation InformationEngineeringMachine LearningField RoboticsIntelligent RoboticsIndoor Positioning SystemLocalizationSeminar RoomsMobile RobotImage AnalysisPattern RecognitionHidden Markov ModelLocation AwarenessSemantic Place ClassificationRobot LearningMobile RobotsCartographyMachine VisionVision RoboticsVehicle LocalizationComputer Science3D Object RecognitionComputer VisionIndoor EnvironmentsRoboticsScene Modeling
Indoor environments can typically be divided into places with different functionalities like kitchens, offices, or seminar rooms. We believe that such semantic information enables a mobile robot to more efficiently accomplish a variety of tasks such as human-robot interaction, path-planning, or localization. This paper presents a supervised learning approach to label different locations using boosting. We train a classifier using features extracted from vision and laser range data. Furthermore, we apply a Hidden Markov Model to increase the robustness of the final classification. Our technique has been implemented and tested on real robots as well as in simulation. The experiments demonstrate that our approach can be utilized to robustly classify places into semantic categories. We also present an example of localization using semantic labeling.
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