Title :
Mumford–Shah Model for One-to-One Edge Matching
Author :
Han, Jingfeng ; Berkels, Benjamin ; Droske, Marc ; Hornegger, Joachim ; Rumpf, Martin ; Schaller, Carlo ; Scorzin, Jasmin ; Urbach, Horst
Author_Institution :
Erlangen-Numburg Univ., Erlangen
Abstract :
This paper presents a new algorithm based on the Mumford-Shah model for simultaneously detecting the edge features of two images and jointly estimating a consistent set of transformations to match them. Compared to the current asymmetric methods in the literature, this fully symmetric method allows one to determine one-to-one correspondences between the edge features of two images. The entire variational model is realized in a multiscale framework of the finite element approximation. The optimization process is guided by an estimation minimization-type algorithm and an adaptive generalized gradient flow to guarantee a fast and smooth relaxation. The algorithm is tested on T1 and T2 magnetic resonance image data to study the parameter setting. We also present promising results of four applications of the proposed algorithm: interobject monomodal registration, retinal image registration, matching digital photographs of neurosurgery with its volume data, and motion estimation for frame interpolation.
Keywords :
approximation theory; edge detection; feature extraction; finite element analysis; image matching; image registration; motion estimation; Mumford-Shah model; adaptive generalized gradient flow; asymmetric methods; edge features; estimation minimization-type algorithm; finite element approximation; frame interpolation; interobject monomodal registration; magnetic resonance image data; matching digital photographs; motion estimation; multiscale framework; neurosurgery; one-to-one edge matching; retinal image registration; Computer vision; Finite element methods; Image edge detection; Image registration; Interpolation; Magnetic resonance; Motion estimation; Neurosurgery; Retina; Testing; Image registration; Mumford– Shah (MS) model; edge detection; Algorithms; Artificial Intelligence; Brain; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Magnetic Resonance Imaging; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity; Subtraction Technique;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2007.906277