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Regularized Data Fusion Improves Image Segmentation.

Authors :
Hutchison, David
Kanade, Takeo
Kittler, Josef
Kleinberg, Jon M.
Mattern, Friedemann
Mitchell, John C.
Naor, Moni
Nierstrasz, Oscar
Pandu Rangan, C.
Steffen, Bernhard
Sudan, Madhu
Terzopoulos, Demetri
Tygar, Doug
Vardi, Moshe Y.
Weikum, Gerhard
Hamprecht, Fred A.
Schnörr, Christoph
Jähne, Bernd
Lange, Tilman
Buhmann, Joachim
Source :
Pattern Recognition (9783540749332); 2007, p234-243, 10p
Publication Year :
2007

Abstract

The ability of a segmentation algorithm to uncover an interesting partition of an image critically depends on its capability to utilize and combine all available, relevant information. This paper investigates a method to automatically weigh different data sources, such that a meaningful segmentation is uncovered. Different sources of information naturally arise in image segmentation, e.g. as intensity measurements, local texture information or edge maps. The data fusion is controlled by a regularization mechanism, favoring sparse solutions. Regularization parameters as well as the clustering complexity are determined by the concept of cluster stability yielding maximally reproducible segmentations. Experiments on the Berkeley segmentation database show that our segmentation approach outperforms competing segmentation algorithms and performs comparably to supervised boundary detectors. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISBNs :
9783540749332
Database :
Complementary Index
Journal :
Pattern Recognition (9783540749332)
Publication Type :
Book
Accession number :
33175247
Full Text :
https://doi.org/10.1007/978-3-540-74936-3_24