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Unsupervised image-set clustering using an information theoretic framework.
Authors:Jacob Goldberger  Shiri Gordon  Hayit Greenspan
Affiliation:Engineering Department, Bar-Ilan University, Ramat-Gan 52900, Israel. goldbej@eng.biu.ac.il
Abstract:In this paper, we combine discrete and continuous image models with information-theoretic-based criteria for unsupervised hierarchical image-set clustering. The continuous image modeling is based on mixture of Gaussian densities. The unsupervised image-set clustering is based on a generalized version of a recently introduced information-theoretic principle, the information bottleneck principle. Images are clustered such that the mutual information between the clusters and the image content is maximally preserved. Experimental results demonstrate the performance of the proposed framework for image clustering on a large image set. Information theoretic tools are used to evaluate cluster quality. Particular emphasis is placed on the application of the clustering for efficient image search and retrieval.
Keywords:
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