Initialization Techniques for Chan-Vese Model with Thresholding

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Chan-Vese model is one of classical active contour models for segmentation based on level set methods. It is the region-based model but in some cases it is still sensitive to the location of initial contours. The image thresholding is a simple but effective tool to separate objects from the background. In this paper, we integrate these two techniques and propose a new method to improve the initialization for Chan-Vese Model. First analyze the distribution of image gray level histogram and find the optimum threshold values, then set the model’s initial contours with thresholds and construct energy functional, lastly iterate the functional formulations until convergence to the object boundary. The method is tested on the plaque images and gives considerable increase in performance.

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227-232

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September 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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[1] V. Caselles, R. Kimmel and G. Sapiro: International Journal of Computer Vision. Vol. 22(1997) , p.61.

Google Scholar

[2] T. Chan and L. Vese: IEEE Transactions on Image Processing, Vol. 10(2001) , p.266.

Google Scholar

[3] J.A. Sethian: Level Set Methods and Fast Marching Methods (Cambridge University Press, United States of America, 1999).

Google Scholar

[4] C. Xu and J. L. Prince: Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Vol. 2(1997) , p.66.

Google Scholar

[5] C. Xu and J.L. Prince: Signal Processing, Vol. 71(1998), p.131.

Google Scholar

[6] Chan T and Vese L: IEEE Transactions on Image Processing, Vol. 10(2001), p.266.

Google Scholar

[7] Wenbing Tao, Hai Jin and Yimin Zhang: IEEE Transactions on Systems Man and Cybernetics Part A-systems and Humans, Vol. 38(2008), p.1181.

DOI: 10.1109/tsmca.2008.2001068

Google Scholar

[8] Marsh P D: Advance in Dental Research, Vol. 8(1994), p.263.

Google Scholar

[9] Information on http: /sites. google. com/site/rexstribeofimageprocessing.

Google Scholar