Copyright © 2002 Elsevier Science B.V. All rights reserved.
Dual-T-Snakes model for medical imaging segmentation
Available online 11 October 2002.
Abstract
The Dual-T-Snakes model plus dynamic programming (DP) techniques is a powerful methodology for boundary extraction and segmentation of 2D images. However, the original Dual-T-Snakes is not efficient for noisy images due to nonconvexity problems. In this paper we improve the model through multigrid and region growing methods to get more robustness against local minima. Besides, we demonstrate the advantage of using pass-band filtering methods and a fuzzy segmentation technique plus Dual-T-Snakes. We test these methods for artificial and cell images.
Author Keywords: Snakes; Dual-T-Snakes; Fuzzy; Segmentation
Article Outline
- 1. Introduction
- 2. T-Snakes model
- 3. Dual snakes
- 4. Original Dual-T-Snakes algorithm
- 5. Segmentation framework
- 6. Improving Dual-T-Snakes
- 7. Experimental results
- 7.1. Fuzzy connectedness
- 7.2. Blood cells
- 7.3. Electronic micrography of nucleolus
- 7.4. Electronic micrography of cat cells
- 8. Discussion
- 9. Conclusions and future works
- Acknowledgements
- Appendix A
- References






E-mail Article
Add to my Quick Links

Cited By in Scopus (2)






