Performance Evaluation of a Statistical and a Neural Network Model for Nonrigid Shape-Based Registration


Autoria(s): Angelopoulou, A.; Psarrou, A.; Garcia-Rodriguez, J.; Mentzelopoulos, M.
Data(s)

19/01/2017

Resumo

Shape-based registration methods frequently encounters in the domains of computer vision, image processing and medical imaging. The registration problem is to find an optimal transformation/mapping between sets of rigid or nonrigid objects and to automatically solve for correspondences. In this paper we present a comparison of two different probabilistic methods, the entropy and the growing neural gas network (GNG), as general feature-based registration algorithms. Using entropy shape modelling is performed by connecting the point sets with the highest probability of curvature information, while with GNG the points sets are connected using nearest-neighbour relationships derived from competitive hebbian learning. In order to compare performances we use different levels of shape deformation starting with a simple shape 2D MRI brain ventricles and moving to more complicated shapes like hands. Results both quantitatively and qualitatively are given for both sets.

Formato

application/pdf

Identificador

http://westminsterresearch.wmin.ac.uk/17840/1/PID4465957.pdf

Angelopoulou, A., Psarrou, A., Garcia-Rodriguez, J. and Mentzelopoulos, M. (2017) Performance Evaluation of a Statistical and a Neural Network Model for Nonrigid Shape-Based Registration. In: Sixth International Conference on Image Processing Theory, Tools and Applications (IPTA'16), 12 to end of 15 Dec 2016, Finland.

Idioma(s)

en

Publicador

IEEE

Relação

http://westminsterresearch.wmin.ac.uk/17840/

https://dx.doi.org/10.1109/IPTA.2016.7820990

10.1109/IPTA.2016.7820990

Palavras-Chave #Science and Technology
Tipo

Conference or Workshop Item

NonPeerReviewed