DocumentCode
46267
Title
Modified Gradient Search for Level Set Based Image Segmentation
Author
Andersson, Tyrone ; Lathen, G. ; Lenz, Richard ; Borga, M.
Author_Institution
Center for Med. Image Sci. & Visualization, Linkoping Univ., Linkoping, Sweden
Volume
22
Issue
2
fYear
2013
fDate
Feb. 2013
Firstpage
621
Lastpage
630
Abstract
Level set methods are a popular way to solve the image segmentation problem. The solution contour is found by solving an optimization problem where a cost functional is minimized. Gradient descent methods are often used to solve this optimization problem since they are very easy to implement and applicable to general nonconvex functionals. They are, however, sensitive to local minima and often display slow convergence. Traditionally, cost functionals have been modified to avoid these problems. In this paper, we instead propose using two modified gradient descent methods, one using a momentum term and one based on resilient propagation. These methods are commonly used in the machine learning community. In a series of 2-D/3-D-experiments using real and synthetic data with ground truth, the modifications are shown to reduce the sensitivity for local optima and to increase the convergence rate. The parameter sensitivity is also investigated. The proposed methods are very simple modifications of the basic method, and are directly compatible with any type of level set implementation. Downloadable reference code with examples is available online.
Keywords
concave programming; gradient methods; image coding; image segmentation; learning (artificial intelligence); search problems; 2D-3D-experiments; downloadable reference code; general nonconvex functionals; level set based image segmentation; local optima sensitivity; machine learning community; modified gradient descent methods; modified gradient search; optimization problem; parameter sensitivity; resilient propagation; Convergence; Equations; Image segmentation; Level set; Noise; Optimization; Standards; Active contours; gradient methods; image segmentation; level set method; machine learning; optimization; variational problems; Algorithms; Angiography; Brain; Databases, Factual; Humans; Image Processing, Computer-Assisted; ROC Curve; Retinal Vessels;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2012.2220148
Filename
6310053
Link To Document