Biomedical Engineering Reference
In-Depth Information
6.
REFERENCES
1.
Zhu C, Jiang T. 2003. Multicontext fuzzy clustering for separation of brain tissues in magenetic
resonance images.
NeuroImage
18
685-696.
2.
Pham DL, Prince JL. 1999. Adaptive fuzzy segmentation of magnetic resonance images.
IEEE
Trans Med Imaging
18
(9):737-752.
3.
Xu C, Pham DL, Prince JL. 2000. Medical image segmentation using deformable models. In
Handbook of medical imaging
, Vol. 2:
Medical image processing and analysis
. pp. 129-174.
Bellingham, WA: SPIE Press.
4.
Kass M, Witkin A, Terzopoulos D. 1987. Snakes: active contour models. In
Proceedings of
the IEEE international conference on computer vision
, pp. 259-268. Washington, DC: IEEE
Computer Society.
5.
Osher S, Sethian JA. 1988. Fronts propagating with curvature-dependent speed:
algorithms
based on Hamilton-Jacobi formulations.
J Comput Phys
79
(1):12-49.
6.
Malladi R, Sethian JA, Vemuri BC. 1995. Shape modeling with front propagation: a level set
approach.
IEEE Trans Pattern Anal Machine Intell
17
(2):158-175.
7.
Caselles V, Catte F, Coll T, Dibos F. 1993. A geometric model for active contours.
Num Math
66
:1-31.
8.
Caselles V, Kimmel R, Sapiro G. 1997. Geodesic active contours.
Int J Comput Vision
22
(1)61-
72: .
9.
Chan TF, Vese LA. 2001. Active contours without edges.
IEEE Trans Image Process
10
(2)266-
277.
10.
Hibbard LS. 2004. Region segmentation using information divergence measures.
Med Image
Anal
8
(3):233-244.
11.
Paragios N. 2000. Geodesic active regions and level set methods: contributions and applications
in artifical vision, PhD dissertation, University of Nice, Sophia Antipolis, France.
12.
Paragios N, Deriche R. 2000. Coupled geodesic active regions for image segmentation: a level set
approach. In
Proceedings of the European conference on computer vision (ECCV)
, pp. 224-240.
New York: Springer.
13.
Paragios N, Deriche R. 2002. Geodesic active regions and level set methods for supervised texture
segmentation.
Int J Comput Vision
46
(3):223-247.
14.
Gibou F, Fedkiw R. 2003. A Fast hybrid k-means level set algorithm for segmentation.
Int
J Comput Vision
50
(3):271-293.
15.
Besson SJ, Barlaud M. 2003. DREAM2S: Deformable regions driven by an eulerian accurate
minimization method for image and video segmentation.
Int J Comput Vision
53
(1):45-70.
16.
Zhu S, Yuille A. 1996. Region competition: unifying snakes, region growing, and Bayes/MDL
for multiband image segmentation.
IEEE Trans Pattern Anal Machine Intell
18
(9):884-900.
17.
Kadir T, Brady M. 2003. Unsupervised non-parametric region segmentation using level sets. In
Proceedings of the IEEE international conference on computer vision
, pp. 1267-1274. Wash-
ington, DC: IEEE Computer Society.
18.
Heiler M, Schnorr C. 2003. Natural image statistics for natural image segmentation. In
Pro-
ceedings of the IEEE international conference on computer vision
, Vol. 2, pp. 1259-1266.
Washington, DC: IEEE Computer Society.
19.
Heiler M, Schnorr C. 2005. Natural image statistics for natural image segmentation.
Int J Comput
Vision
63
(1):5-19.
20.
Goldenberg R, Kimmel R, Rivlin E, Rudzsky M. 2002. Cortex segmentation: a fast variational
geometric approach.
IEEE Trans Med Imaging
21
:1544-1551.
21.
Han X, Xu C, Prince JL. 2003. A topology preserving level set method for geometric deformable
models.
IEEE Trans Pattern Anal Machine Intell
25
(6):755-768.
22.
Han X, Pham D, Tosun D, Rettmann ME, Xu C, Prince JL. 2004. CRUISE: cortical reconstruction
using implicit surface evolution.
NeuroImage
23
(3):997-1012.