Title :
An iterative possibilistic image segmentation system: Application to breast cancer detection
Author :
Eziddin, W. ; Montagner, J. ; Solaiman, B.
Abstract :
A novel approach for digital mammograms segmentation is proposed. This approach aims to segment the mammograms using an iterative fusion process of information obtained from multiple sources of knowledge (contextual, image processing algorithm, a priori knowledge, etc). Initial Fuzzy Membership Maps (IFMMs) of different thematic classes are first estimated using available information. These IFMM´s are then interpreted as Possibility Distribution Maps (PDMs), which represent the possibility for each analyzed pixel to be one of the different thematic classes in the considered image, these possibility values are then iteratively updated using contextual (spatial) information. An additional class called “Rejection” is used to manage ambiguity and to delay the segmentation operation until the establishment of high level possibility degrees for these pixels. The segmentation results are given as a thematic map as well as a confidence curve evaluating the segmentation result quality.
Keywords :
cancer; fuzzy set theory; fuzzy systems; image recognition; image segmentation; iterative methods; mammography; medical image processing; possibility theory; breast cancer detection; contextual information; digital mammograms segmentation; initial fuzzy membership map; iterative fusion; iterative possibilistic image segmentation; possibility distribution map; possibility theory; Cognition; Estimation; Fuzzy set theory; Image segmentation; Iterative methods; Pixel; Telecommunications; Fuzzy Segmentation; Iterative Fusion; Mammography; Possibility Theory;
Conference_Titel :
Information Fusion (FUSION), 2010 13th Conference on
Conference_Location :
Edinburgh
Print_ISBN :
978-0-9824438-1-1
DOI :
10.1109/ICIF.2010.5712098