An improved image segmentation approach based on level set and mathematical morphology
Author(s) -
Hua Li,
Abderrahim Elmoataz,
Jaral M. Fadili,
Su Ruan
Publication year - 2003
Publication title -
proceedings of spie, the international society for optical engineering/proceedings of spie
Language(s) - English
Resource type - Conference proceedings
eISSN - 1996-756X
pISSN - 0277-786X
DOI - 10.1117/12.538710
Subject(s) - image segmentation , convolution (computer science) , artificial intelligence , computer vision , level set (data structures) , scale space segmentation , range segmentation , mathematical morphology , computer science , segmentation based object categorization , boundary (topology) , segmentation , image (mathematics) , morphological gradient , distance transform , set (abstract data type) , top hat transform , watershed , level set method , pattern recognition (psychology) , image processing , image texture , mathematics , mathematical analysis , artificial neural network , programming language
International audienceLevel set methods offer a powerful approach for the medical image segmentation since it can handle any of the cavities, concavities, convolution, splitting or merging. However, this method requires specifying initial curves and can only provide good results if these curves are placed near symmetrically with respect to the object boundary. Another well known segmentation technique-morphological watershed transform can segment unique boundaries from an image, but it is very sensitive to small variations of the image magnitude and consequently the number of generated regions is undesirably large and the segmented boundaries is not smooth enough. In this paper, a hybrid 3D medical image segmentation algorithm, which combines the watershed transform and level set techniques, is proposed. This hybrid algorithm resolves the weaknesses of each method. An initial partitioning of the image into primitive regions is produced by applying the watershed transform on the image gradient magnitude, then this segmentation results is treated as the initial localization of the desired contour, and used in the following level set method, which provides closed, smoothed and accurately localized contours or surfaces. Experimental results are also presented and discussed
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