From Object Detection to Room Categorization in Robotics
David Fernandez-Chaves, José-Raúl Ruiz-Sarmiento, Nicolai Petkov, Javier González-Jiménez
- Year
- 2020
- Citations
- 11
Abstract
This article deals with the problem of room categorization, i.e. the classification of a room as being a bathroom, kitchen, living-room, bedroom, etc., by an autonomous robot operating in home environments. For that, we propose a room categorization system based on a Bayesian probabilistic framework that combines object detections and its semantics. For detecting objects we resort to a state-of-the-art CNN, Mask R-CNN, while the meaning or semantics of those detections is provided by an ontology. Such an ontology encodes the relations between object and room categories, that is, in which room types the different object categories are typically found (toilets in bathrooms, microwaves in kitchens, etc.). The Bayesian framework is in charge of fusing both sources of information and providing a probability distribution over the set of categories the room can belong to. The proposed system has been evaluated in houses from the [email protected] dataset, validating its effectiveness under real-world conditions.
Keywords
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