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A Continuous Probabilistic Framework for Image Matching
Authors:Hayit Greenspan   Jacob Goldberger  Lenny Ridel
Affiliation:a Tel Aviv University, Tel Aviv, 69978, Israel;b The Weizmann Institute of Science, Rehovot, 76100, Israel
Abstract:
In this paper we describe a probabilistic image matching scheme in which the image representation is continuous and the similarity measure and distance computation are also defined in the continuous domain. Each image is first represented as a Gaussian mixture distribution and images are compared and matched via a probabilistic measure of similarity between distributions. A common probabilistic and continuous framework is applied to the representation as well as the matching process, ensuring an overall system that is theoretically appealing. Matching results are investigated and the application to an image retrieval system is demonstrated.
Keywords:Abbreviations: image matchingAbbreviations: image representationAbbreviations: Gaussian mixture modelingAbbreviations: Kullback–  Leibler distanceAbbreviations: probabilistic matching
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