Semantic Hierarchies for Visual Object Recognition
Conference on Computer Vision & Pattern Recognition - jun 2007
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In this paper we propose to use lexical semantic networks
to extend the state-of-the-art object recognition techniques.
We use the semantics of image labels to integrate
prior knowledge about inter-class relationships into the visual
appearance learning. We show how to build and train
a semantic hierarchy of discriminative classifiers and how
to use it to perform object detection. We evaluate how our
approach influences the classification accuracy and speed
on the PASCAL VOC challenge 2006 dataset, a set of challenging
real-world images. We also demonstrate additional
features that become available to object recognition due to
the extension with semantic inference tools - we can classify
high-level categories, such as animals, and we can train
part detectors, for example a window detector, by pure inference
in the semantic network.
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BibTex references
@InProceedings{MS07,
author = "Marcin Marsza{\l}ek and Cordelia Schmid",
title = "Semantic Hierarchies for Visual Object Recognition",
booktitle = "Conference on Computer Vision \& Pattern Recognition",
month = "jun",
year = "2007",
keywords = "LEAR",
url = "http://lear.inrialpes.fr/pubs/2007/MS07"
}
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