Title :
Nonparametric statistical snake based on the minimum stochastic complexity
Author :
Martin, Pascal ; Réfrégier, Philippe ; Galland, Frédéric ; Guérault, Frédéric
Author_Institution :
Phys. & Image Process. Group, Fresnel Inst., Marseille
Abstract :
We propose a nonparametric statistical snake technique that is based on the minimization of the stochastic complexity (minimum description length principle). The probability distributions of the gray levels in the different regions of the image are described with step functions with parameters that are estimated. The segmentation is thus obtained by minimizing a criterion that does not include any parameter to be tuned by the user. We illustrate the robustness of this technique on various types of images with level set and polygonal contour models. The efficiency of this approach is also analyzed in comparison with parametric statistical techniques
Keywords :
image segmentation; statistical analysis; statistical distributions; stochastic processes; gray levels; image segmentation; level set; minimum description length principle; minimum stochastic complexity; nonparametric statistical snake technique; polygonal contour models; probability distributions; step functions; Active contours; Computer vision; Image processing; Image segmentation; Level set; Parameter estimation; Physics; Probability distribution; Robustness; Stochastic processes; Image segmentation; level set; minimum description length principle; snakes; stochastic complexity;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2006.877317