15th International Conference on Pattern Recognition (ICPR'00) - Volume 4
Eigensnakes for Vessel Segmentation in Angiography
Barcelona, Spain
September 03-September 08
ISBN: 0-7695-0750-6
In this paper, we introduce a new deformable model, called eigensnake, for segmentation of elongated structures in a probabilistic framework. Instead of snake attraction by specific image features extracted independently of the snake, our eigensnake learns an optimal object description and searches for such image feature in the target image. This is achieved applying principal component analysis on image responses of a bank of gaussian derivative filters. Therefore, attraction by eigensnakes is defined in terms of classification of image features. The potential energy for the snake is defined in terms of likelihood in the feature space and incorporated into a new energy-minimizing scheme. Hence, the snake deforms to minimize the mahalanobis distance in the feature space. A real application of segmenting and tracking coronary vessels in angiography is considered and the results are very encouraging.
Index Terms:
Snakes, Principal Component Analysis, Statistical Learning, Segmentation, Angiography
Citation:
Ricardo Toledo, Xavier Orriols, Petia Radeva, Xavier Binefa, Jordi Vitrià, Cristina Cañero, J.J. Villanueva, "Eigensnakes for Vessel Segmentation in Angiography," icpr, vol. 4, pp.4340, 15th International Conference on Pattern Recognition (ICPR'00) - Volume 4, 2000