Title :
Mutual information extremal optimization for multimodal medical image registration
Author :
Sanchez, Pedro Pablo Cespedes ; Ayala, Horacio Legal ; Schaerer, Christian E.
Abstract :
In this paper it is considered the image registration (IR) between medical images of computed tomography and magnetic resonance. Our approach formulates the IR as an optimization problem where mutual information cost function is used as a similarity metric (cost function). The Extremal Optimization algorithm is implemented as the optimizer. The numerical results are contrasted against two state of the art optimization algorithms for this kind of problems (being one deterministic and another evolutionary). Our approach is competitive with the deterministic algorithm in accuracy and with the evolutionary algorithms in computational cost. The qualitative results are quite satisfactory with a 83 % of success, whilst the quantitative results present an average error of 0.36mm with registrations of CT with proton density MR. The results show that the proposal is useful for multimodal registrations.
Keywords :
biomedical MRI; computerised tomography; deterministic algorithms; evolutionary computation; image registration; medical image processing; IR; computational cost; computed tomography; deterministic algorithm; evolutionary algorithms; magnetic resonance; multimodal medical image registration; mutual information cost function; mutual information extremal optimization; proton density MR; similarity metric; Biomedical imaging; Computed tomography; Educational institutions; Image registration; Mutual information; Optimization; Three-dimensional displays; extremal optimization; medical images registration; mutual information;
Conference_Titel :
Computing Conference (CLEI), 2014 XL Latin American
Conference_Location :
Montevideo
DOI :
10.1109/CLEI.2014.6965101