DocumentCode :
2178800
Title :
Learning and inferring image segmentations using the GBP typical cut algorithm
Author :
Shental, Noam ; Zomet, Assaf ; Hertz, Tomer ; Weiss, Yair
Author_Institution :
Sch. of Comput. Sci. & Eng., The Hebrew Univ. of Jerusalem, Israel
fYear :
2003
fDate :
13-16 Oct. 2003
Firstpage :
1243
Abstract :
Significant progress in image segmentation has been made by viewing the problem in the framework of graph partitioning. In particular, spectral clustering methods such as "normalized cuts" (ncuts) can efficiently calculate good segmentations using eigenvector calculations. However, spectral methods when applied to images with local connectivity often oversegment homogenous regions. More importantly, they lack a straightforward probabilistic interpretation which makes it difficult to automatically set parameters using training data. In this paper we revisit the typical cut criterion proposed by Blatt et al. (1997) and Gdalyahu et al (2001). We show that computing the typical cut is equivalent to performing inference in an undirected graphical model. This equivalence allows us to use the powerful machinery of graphical models for learning and inferring image segmentations. For inferring segmentations we show that the generalized belief propagation (GBP) algorithm can give excellent results with a runtime that is usually faster than the ncut eigensolver. For learning segmentations we derive a maximum likelihood learning algorithm to learn affinity matrices from labelled datasets. We illustrate both learning and inference on challenging real and synthetic images.
Keywords :
computer vision; directed graphs; graph colouring; image segmentation; inference mechanisms; learning (artificial intelligence); GBP algorithm; affinity matrices; cut algorithm; eigenvector calculations; generalized belief propagation; graph partitioning; graphical model; image segmentation; inferring segmentation; learning segmentation; local connectivity; maximum likelihood learning algorithm; ncut eigensolver; normalized cuts; oversegment homogenous regions; probabilistic interpretation; real images; spectral clustering methods; synthetic images; training data; Belief propagation; Clustering algorithms; Clustering methods; Graphical models; Image segmentation; Inference algorithms; Machine learning; Machinery; Partitioning algorithms; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision, 2003. Proceedings. Ninth IEEE International Conference on
Conference_Location :
Nice, France
Print_ISBN :
0-7695-1950-4
Type :
conf
DOI :
10.1109/ICCV.2003.1238633
Filename :
1238633
Link To Document :
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