Title :
Variational Segmentation of Vector-Valued Images With Gradient Vector Flow
Author :
Jaouen, V. ; Gonzalez, P. ; Stute, Simon ; Guilloteau, D. ; Chalon, S. ; Buvat, I. ; Tauber, C.
Author_Institution :
Imaging & Brain, Univ. Francois-Rabelais de Tours, Tours, France
Abstract :
In this paper, we extend the gradient vector flow field for robust variational segmentation of vector-valued images. Rather than using scalar edge information, we define a vectorial edge map derived from a weighted local structure tensor of the image that enables the diffusion of the gradient vectors in accurate directions through the 4D gradient vector flow equation. To reduce the contribution of noise in the structure tensor, image channels are weighted according to a blind estimator of contrast. The method is applied to biological volume delineation in dynamic PET imaging, and validated on realistic Monte Carlo simulations of numerical phantoms as well as on real images.
Keywords :
Monte Carlo methods; edge detection; gradient methods; image segmentation; numerical analysis; biological volume delineation; blind estimator; gradient vector flow field; gradient vectors; image channels; numerical phantoms; real images; realistic Monte Carlo simulations; robust variational segmentation; scalar edge information; structure tensor; vector valued images; weighted local structure tensor; Force; Image edge detection; Image segmentation; Mathematical model; Positron emission tomography; Tensile stress; Vectors; Deformable models; dynamic PET; gradient vector flow; structure tensor;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2014.2353854