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Published December 26, 2007 | Published
Book Section - Chapter Open

Non-Parametric Probabilistic Image Segmentation

Abstract

We propose a simple probabilistic generative model for image segmentation. Like other probabilistic algorithms (such as EM on a Mixture of Gaussians) the proposed model is principled, provides both hard and probabilistic cluster assignments, as well as the ability to naturally incorporate prior knowledge. While previous probabilistic approaches are restricted to parametric models of clusters (e.g., Gaussians) we eliminate this limitation. The suggested approach does not make heavy assumptions on the shape of the clusters and can thus handle complex structures. Our experiments show that the suggested approach outperforms previous work on a variety of image segmentation tasks.

Additional Information

© 2007 IEEE. Funding for this research was provided by ONR-MURI Grant N00014-06-1-0734.

Attached Files

Published - Andreetto2007p88092007_Ieee_11Th_International_Conference_On_Computer_Vision_Vols_1-6.pdf

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Andreetto2007p88092007_Ieee_11Th_International_Conference_On_Computer_Vision_Vols_1-6.pdf

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Created:
August 19, 2023
Modified:
January 12, 2024