Title :
Improving web image search results using query-relative classifiers
Author :
Krapac, Josip ; Allan, Moray ; Verbeek, Jakob ; Jurie, Frédéric
Author_Institution :
LEAR team, INRIA Rhone-Alpes, Rhône-Alpes, France
Abstract :
Web image search using text queries has received considerable attention. However, current state-of-the-art approaches require training models for every new query, and are therefore unsuitable for real-world web search applications. The key contribution of this paper is to introduce generic classifiers that are based on query-relative features which can be used for new queries without additional training. They combine textual features, based on the occurence of query terms in web pages and image meta-data, and visual histogram representations of images. The second contribution of the paper is a new database for the evaluation of web image search algorithms. It includes 71478 images returned by a web search engine for 353 different search queries, along with their meta-data and ground-truth annotations. Using this data set, we compared the image ranking performance of our model with that of the search engine, and with an approach that learns a separate classifier for each query. Our generic models that use query-relative features improve significantly over the raw search engine ranking, and also outperform the query-specific models.
Keywords :
image classification; query processing; search engines; ground-truth annotations; image metadata; image ranking performance; images visual histogram; query-relative classifiers; real-world web search applications; search engine ranking; text queries; textual features; training models; web image search algorithms; Graphical models; Histograms; Image databases; Image retrieval; Poles and towers; Search engines; Spatial databases; Visual databases; Web pages; Web search;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2010 IEEE Conference on
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4244-6984-0
DOI :
10.1109/CVPR.2010.5540092