Regularized regression on image manifold for retrieval

@inproceedings{Cai2007RegularizedRO,
  title={Regularized regression on image manifold for retrieval},
  author={Deng Cai and Xiaofei He and Jiawei Han},
  booktitle={Multimedia Information Retrieval},
  year={2007}
}
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… CONTINUE READING

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