Region Segmentation via Deformable Model-Guided Split and Merge


Autoria(s): Liu, Lifeng; Sclaroff, Stan
Data(s)

20/10/2011

20/10/2011

04/12/2000

Resumo

An improved method for deformable shape-based image segmentation is described. Image regions are merged together and/or split apart, based on their agreement with an a priori distribution on the global deformation parameters for a shape template. The quality of a candidate region merging is evaluated by a cost measure that includes: homogeneity of image properties within the combined region, degree of overlap with a deformed shape model, and a deformation likelihood term. Perceptually-motivated criteria are used to determine where/how to split regions, based on the local shape properties of the region group's bounding contour. A globally consistent interpretation is determined in part by the minimum description length principle. Experiments show that the model-based splitting strategy yields a significant improvement in segmention over a method that uses merging alone.

Office of Naval Research Young Investigator Award (N00014-96-1-0661); National Science Foundation (IIS-9624168, EIA-9623865)

Identificador

Liu, Lifeng; Sclaroff, Stan. "Region Segmentation via Deformable Model-Guided Split and Merge", Technical Report BUCS-2000-024, Computer Science Department, Boston University, December 4, 2000. [Available from: http://hdl.handle.net/2144/1817]

http://hdl.handle.net/2144/1817

Idioma(s)

en_US

Publicador

Boston University Computer Science Department

Relação

BUCS Technical Reports;BUCS-TR-2000-024

Tipo

Technical Report