Joint Categorization Of Objects And Rooms For Mobile Robots

J. R. Ruiz-Sarmiento,C. Galindo, J. Gonzalez-Jimenez

2015 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2015)

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摘要
In general, the problems of objects' and rooms' categorizations for robotic applications have been addressed separately. The current trend is, however, towards a joint modelling of both issues in order to leverage their mutual contextual relations: object room (e.g. the detection of a microwave indicates that the room is likely to be a kitchen), and room object (e.g. if the robot is in a bathroom, it is probable to find a toilet). Probabilistic Graphical Models (PGMs) are typically employed to conveniently cope with such relations, relying on inference processes to hypothesize about objects' and rooms' categories. In this work we present a Conditional Random Field (CRF) model, a particular type of PGM, to jointly categorize objects and rooms from RGBD images exploiting object-object and object-room relations. The learning phase of the proposed CRF uses Human Knowledge (HK) to eliminate the necessity of gathering real training data. Concretely, HK is acquired through elicitation and codified into an ontology, which is exploited to effortless generate an arbitrary number of representative synthetic samples for training. The performance of the proposed CRF model has been assessed using the NYU2 dataset, achieving a success of 70% categorizing both, objects and rooms.
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关键词
NYU2 dataset,representative synthetic samples,HK,human knowledge,learning phase,object-object relations,object-room relations,RGBD images,CRF,conditional random field model,inference processes,PGM,probabilistic graphical models,contextual relations,robotic applications,mobile robots,room categorization,object categorization
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