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Pooja Viswanathan, T. Southey, J. J. Little, and Alan K. Mackworth. Automated Place Classification Using Object Detection. In Proceedings of the Canadian Conference on Computer and Robot Vision, CRV 2010, pp. 324–390, Ottawa, Canada, June 2010.
Places in an environment can be described by the objects they contain. This paper discusses the completely automated integration of object detection and place classification in a single system. We first perform automated learning of object-place relations from an online annotated database. We then train object detectors on some of the most frequently occurring objects. Finally we use detection scores as well as learned object-place relations to perform place classification of images. We also discuss areas for improvement and the application of this work to informed visual search. As a whole, the system demonstrates the automated acquisition of training data containing labeled instances (i.e. bounding boxes) and the performance of a state-of-the-art object detection technique trained on this data to perform place classification of realistic indoor scenes.
@InProceedings{PoojaCRV2010, author = {Pooja Viswanathan and T. Southey and J. J. Little and Alan K. Mackworth}, title = {Automated Place Classification Using Object Detection}, year = {2010}, month = {June}, booktitle = {Proceedings of the Canadian Conference on Computer and Robot Vision, CRV 2010}, address = {Ottawa, Canada}, pages = {324-390}, abstract = {Places in an environment can be described by the objects they contain. This paper discusses the completely automated integration of object detection and place classification in a single system. We first perform automated learning of object-place relations from an online annotated database. We then train object detectors on some of the most frequently occurring objects. Finally we use detection scores as well as learned object-place relations to perform place classification of images. We also discuss areas for improvement and the application of this work to informed visual search. As a whole, the system demonstrates the automated acquisition of training data containing labeled instances (i.e. bounding boxes) and the performance of a state-of-the-art object detection technique trained on this data to perform place classification of realistic indoor scenes.}, bib2html_pubtype ={Refereed Conference Proceeding}, bib2html_rescat ={}, }
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