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Published July 15, 2008 | Published
Book Section - Chapter Open

Unsupervised learning of categorical segments in image collections

Abstract

Which one comes first: segmentation or recognition? We propose a probabilistic framework for carrying out the two simultaneously. The framework combines an LDA 'bag of visual words' model for recognition, and a hybrid parametric-nonparametric model for segmentation. If applied to a collection of images, our framework can simultaneously discover the segments of each image, and the correspondence between such segments. Such segments may be thought of as the 'parts' of corresponding objects that appear in the image collection. Thus, the model may be used for learning new categories, detecting/classifying objects, and segmenting images.

Additional Information

© 2008 IEEE. Funding for this research was provided by ONR-MURI Grant N00014-06-1-0734. Lihi Zelnik-Manor is supported by FP7-IRG grant 2009783.

Attached Files

Published - Andreetto2008p84932008_Ieee_Computer_Society_Conference_On_Computer_Vision_And_Pattern_Recognition_Workshops_Vols_1-3.pdf

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Andreetto2008p84932008_Ieee_Computer_Society_Conference_On_Computer_Vision_And_Pattern_Recognition_Workshops_Vols_1-3.pdf

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