DocumentCode
1448444
Title
Effective Level Set Image Segmentation With a Kernel Induced Data Term
Author
Ben Salah, Miled ; Mitiche, Amar ; Ben Ayed, Ismail
Author_Institution
Inst. Nat. de la Rech. Sci. (INRS-EMT), Montreal, QC, Canada
Volume
19
Issue
1
fYear
2010
Firstpage
220
Lastpage
232
Abstract
This study investigates level set multiphase image segmentation by kernel mapping and piecewise constant modeling of the image data thereof. A kernel function maps implicitly the original data into data of a higher dimension so that the piecewise constant model becomes applicable. This leads to a flexible and effective alternative to complex modeling of the image data. The method uses an active curve objective functional with two terms: an original term which evaluates the deviation of the mapped image data within each segmentation region from the piecewise constant model and a classic length regularization term for smooth region boundaries. Functional minimization is carried out by iterations of two consecutive steps: 1) minimization with respect to the segmentation by curve evolution via Euler-Lagrange descent equations and 2) minimization with respect to the regions parameters via fixed point iterations. Using a common kernel function, this step amounts to a mean shift parameter update. We verified the effectiveness of the method by a quantitative and comparative performance evaluation over a large number of experiments on synthetic images, as well as experiments with a variety of real images such as medical, satellite, and natural images, as well as motion maps.
Keywords
image segmentation; iterative methods; minimisation; Euler-Lagrange descent equations; classic length regularization term; fixed point iterations; functional minimization; kernel induced data term; kernel mapping; level set multiphase image segmentation; piecewise constant modeling; Kernel mapping; level set image segmentation; mean shift; multiphase; piecewise constant model;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2009.2032940
Filename
5256326
Link To Document