CONF
Suditu_ICCV_2011/IDIAP
HEAT: Iterative Relevance Feedback with One Million Images
Suditu, Nicolae
Fleuret, Francois
https://publications.idiap.ch/index.php/publications/showcite/Suditu_Idiap-RR-33-2011
Related documents
Proceedings of the IEEE International Conference on Computer Vision
2011
2118-2125
It has been shown repeatedly that iterative relevance feedback is a very efficient solution for content-based image retrieval. However, no existing system scales gracefully to hundreds of thousands or millions of images. We present a new approach dubbed Hierarchical and Expandable Adaptive Trace (HEAT) to tackle this problem. Our approach modulates on-the-fly the resolution of the interactive search in different parts of the image collection, by relying on a hierarchical organization of the images computed off-line. Internally, the strategy is to maintain an accurate approximation of the probabilities of relevance of the individual images while fixing an upper bound on the required computation. Our system is compared on the ImageNet database to the state-of-the-art approach it extends, by conducting user evaluations on a sub-collection of 33,000 images. Its scalability is then demonstrated by conducting similar evaluations on 1,000,000 images.
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Suditu_Idiap-RR-33-2011/IDIAP
HEAT: Iterative Relevance Feedback with One Million Images
Suditu, Nicolae
Fleuret, Francois
Bayesian framework
large-scale iterative relevance feedback
query-free interactive image retrieval
user-based evaluation
visual content-based features
Idiap-RR-33-2011
2011
Idiap
August 2011
It has been shown repeatedly that iterative relevance feedback is a very efficient solution for content-based image retrieval. However, no existing system scales gracefully to hundreds of thousands or millions of images. We present a new approach dubbed Hierarchical and Expandable Adaptive Trace (HEAT) to tackle this problem. Our approach modulates on-the-fly the resolution of the interactive search in different parts of the image collection, by relying on a hierarchical organization of the images computed off-line. Internally, the strategy is to maintain an accurate approximation of the probabilities of relevance of the individual images while fixing an upper bound on the required computation. Our system is compared on the ImageNet database to the state-of-the-art approach it extends, by conducting user evaluations on a sub-collection of 33,000 images. Its scalability is then demonstrated by conducting similar evaluations on 1,000,000 images.