DocumentCode
44930
Title
Convex-Relaxed Kernel Mapping for Image Segmentation
Author
Ben Salah, Miled ; Ben Ayed, Ismail ; Jing Yuan ; Hong Zhang
Author_Institution
Univ. of Alberta, Edmonton, AB, Canada
Volume
23
Issue
3
fYear
2014
fDate
Mar-14
Firstpage
1143
Lastpage
1153
Abstract
This paper investigates a convex-relaxed kernel mapping formulation of image segmentation. We optimize, under some partition constraints, a functional containing two characteristic terms: 1) a data term, which maps the observation space to a higher (possibly infinite) dimensional feature space via a kernel function, thereby evaluating nonlinear distances between the observations and segments parameters and 2) a total-variation term, which favors smooth segment surfaces (or boundaries). The algorithm iterates two steps: 1) a convex-relaxation optimization with respect to the segments by solving an equivalent constrained problem via the augmented Lagrange multiplier method and 2) a convergent fixed-point optimization with respect to the segments parameters. The proposed algorithm can bear with a variety of image types without the need for complex and application-specific statistical modeling, while having the computational benefits of convex relaxation. Our solution is amenable to parallelized implementations on graphics processing units (GPUs) and extends easily to high dimensions. We evaluated the proposed algorithm with several sets of comprehensive experiments and comparisons, including: 1) computational evaluations over 3D medical-imaging examples and high-resolution large-size color photographs, which demonstrate that a parallelized implementation of the proposed method run on a GPU can bring a significant speed-up and 2) accuracy evaluations against five state-of-the-art methods over the Berkeley color-image database and a multimodel synthetic data set, which demonstrates competitive performances of the algorithm.
Keywords
convex programming; graphics processing units; image colour analysis; image resolution; image segmentation; 3D medical imaging; Berkeley color-image database; GPU; application-specific statistical modeling; augmented Lagrange multiplier method; convergent fixed-point optimization; convex-relaxation optimization; convex-relaxed kernel mapping; data term; equivalent constrained problem; graphics processing units; high-resolution large-size color photographs; image segmentation; kernel function; total-variation term; Computational modeling; Data models; Graphics processing units; Image segmentation; Kernel; Optimization; Three-dimensional displays; Image segmentation; augmented Lagrangian method; convex relaxation; fixed-point optimization; graphics processing unit; kernel mapping;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2013.2297019
Filename
6698393
Link To Document