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Boosting Image Retrieval (2000)

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by Kinh Tieu , Paul Viola
Venue:International Journal of Computer Vision
Citations:217 - 4 self
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BibTeX

@INPROCEEDINGS{Tieu00boostingimage,
    author = {Kinh Tieu and Paul Viola},
    title = {Boosting Image Retrieval},
    booktitle = {International Journal of Computer Vision},
    year = {2000},
    pages = {228--235}
}

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Abstract

We present an approach for image retrieval using a very large number of highly selective features and efficient online learning. Our approach is predicated on the assumption that each image is generated by a sparse set of visual "causes" and that images which are visually similar share causes. We propose a mechanism for computing a very large number of highly selective features which capture some aspects of this causal structure (in our implementation there are over 45,000 highly selective features). At query time a user selects a few example images, and a technique known as "boosting" is used to learn a classification function in this feature space. By construction, the boosting procedure learns a simple classifier which only relies on 20 of the features. As a result a very large database of images can be scanned rapidly, perhaps a million images per second. Finally we will describe a set of experiments performed using our retrieval system on a database of 3000 images. 1. Introductio...

Citations

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1491 Support-vector networks - Cortes, Vapnik - 1995
849 The Laplacian pyramid as a compact image code - Burt, Adelson - 1983
769 P.: Query by image and video content: the QBIC system - Flickner, Sawhney, et al.
764 Neural network-based face detection - Rowley, Baluja, et al. - 1996
606 W: Boosting the Margin: A New Explanation for the Effectiveness of Voting Methods. The Annals of Statistics - Schapire, Freund, et al. - 1998
415 Content-based manipulation of image databases - Pentland, Picard, et al. - 1996
271 Image indexing using color correlograms - Huang, Kumar, et al. - 1997
242 H.: Fast multiresolution image querying - JACOBS, FINKELSTEIN, et al. - 1995
216 T.: A general framework for object detection - PAPAGEORGIOU, OREN, et al. - 1998
167 Noise removal via Bayesian wavelet coring - Simoncelli, Adelson - 1996
126 Shape quantization and recognition with randomized trees - Amit, Geman - 1997
81 Query by image example: the candid approach - Kelly, Cannon - 1995
64 Asymptotics of graphical projection pursuit - Diaconis, Freedman - 1984
52 An optimized interaction strategy for bayesian relevance feedback - Cox, Miller, et al. - 1998
42 Efficient query refinement for image retrieval - Nastar, Mitschke, et al. - 1998
30 Structure driven image database retrieval - DeBonet, Viola - 1998
7 Multiple instance learning for natural scene classification - Ratan, Maron - 1998
4 Corel stock photo images. http://www.corel.com - Corporation
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