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Scenique: a multimodal image retrieval interface
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AVI archive
Proceedings of the working conference on Advanced visual interfaces table of contents
Napoli, Italy
DEMONSTRATION SESSION: Demos session table of contents
Pages 476-477  
Year of Publication: 2008
ISBN:1-978-60558-141-5
Authors
Ilaria Bartolini  University of Bologna, Italy
Paolo Ciaccia  University of Bologna, Italy
Sponsors
SIGCHI Italy : SIGCHI Italy
SIGCHI : Specialist Interest Group in Computer-Human Interaction of the ACM
SIGMULTIMEDIA: ACM Special Interest Group on Multimedia
Publisher
ACM  New York, NY, USA
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ABSTRACT

Searching for images by using low-level visual features, such as color and texture, is known to be a powerful, yet imprecise, retrieval paradigm. The same is true if search relies only on keywords (or tags), either derived from the image context or user-provided annotations. In this demo we present Scenique, a multimodal image retrieval system that provides the user with two basic facilities: 1) an image annotator, that is able to predict keywords for new (i.e., unlabelled) images, and 2) an integrated query facility that allows the user to search for images using both visual features and tags, possibly organized in semantic dimensions. We demonstrate the accuracy of image annotation and the improved precision that Scenique obtains with respect to querying with either only features or keywords.


REFERENCES

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1
I. Bartolini and P. Ciaccia. Imagination: Accurate Image Annotation Using Link-analysis Techniques. In AMR 2007, Paris, France, July 2007.
2

Collaborative Colleagues:
Ilaria Bartolini: colleagues
Paolo Ciaccia: colleagues