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Regularized regression on image manifold for retrieval
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International Multimedia Conference archive
Proceedings of the international workshop on Workshop on multimedia information retrieval table of contents
Augsburg, Bavaria, Germany
SESSION: Image retrieval and multimedia modeling table of contents
Pages: 11 - 20  
Year of Publication: 2007
ISBN:978-1-59593-778-0
Authors
Deng Cai  University of Illinois at Urbana Champaign, Urbana, IL
Xiaofei He  Yahoo! Inc., Burbank, CA
Jiawei Han  University of Illinois at Urbana Champaign, Urbana, IL
Sponsors
SIGMULTIMEDIA: ACM Special Interest Group on Multimedia
ACM: Association for Computing Machinery
SIGGRAPH: ACM Special Interest Group on Computer Graphics and Interactive Techniques
Publisher
ACM  New York, NY, USA
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ABSTRACT

Recently, there have been considerable interests in geometric-based methods for image retrieval. These methods consider the image space as a smooth manifold and apply manifold learning techniques to find a Euclidean embedding. Thus, the Euclidean distances in the embedding space can be used as approximations to the geodesic distances on the manifold. A main advantage of these methods is that the relevance feedbacks during retrieval can be naturally incorporated into the system as prior information. In this paper, we consider the retrieval problem as a classification problem on manifold. Instead of learning a distance measure, we aim to learn a classification function on the image manifold. Considering efficiency is a key issue in image retrieval, especially on the Webscale, we propose a novel approach for image retrieval on manifold. This approach is based on a regularized linear regression framework. The local manifold structure and user-provided relevance feedbacks are incorporated into the image retrieval system through a Locality Preserving Regularizer. Extensive experiments are carried out on a large image database which demonstrates the efficiency and effectiveness of the proposed approach.


REFERENCES

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Collaborative Colleagues:
Deng Cai: colleagues
Xiaofei He: colleagues
Jiawei Han: colleagues