Title of article :
Segmentation of Intensity-Corrupted Medical Images Using Adaptive Weight-Based Hybrid Active Contours
Author/Authors :
Aziz Memon, Asif School of Computer Science and Engineering - Chung-Ang University - Seoul, Republic of Korea , Soomro, Shafiullah Department of Computer Science - Quaid-e-Awam University of Engineering Science and Technology - Shaheed Benazirabad, Pakistan , Tanseef Shahid, Muhammad School of Computer Science and Engineering - Chung-Ang University - Seoul, Republic of Korea , Munir, Asad Department of Industrial and Information Engineering - Università degli Studi di Udine - Udine, Italy , Niaz, Asim School of Computer Science and Engineering - Chung-Ang University - Seoul, Republic of Korea , Choi, Kwang Nam School of Computer Science and Engineering - Chung-Ang University - Seoul, Republic of Korea
Abstract :
Segmentation accuracy is an important criterion for evaluating the performance of segmentation techniques used to extract objects
of interest from images, such as the active contour model. However, segmentation accuracy can be affected by image artifacts such
as intensity inhomogeneity, which makes it difficult to extract objects with inhomogeneous intensities. To address this issue, this
paper proposes a hybrid region-based active contour model for the segmentation of inhomogeneous images. The proposed
hybrid energy functional combines local and global intensity functions; an incorporated weight function is parameterized based
on local image contrast. The inclusion of this weight function smoothens the contours at different intensity level boundaries,
thereby yielding improved segmentation. The weight function suppresses false contour evolution and also regularizes object
boundaries. Compared with other state-of-the-art methods, the proposed approach achieves superior results over synthetic and
real images. Based on a quantitative analysis over the mini-MIAS and PH2 databases, the superiority of the proposed model in
terms of segmentation accuracy, as compared with the ground truths, was confirmed. Furthermore, when using the proposed
model, the processing time for image segmentation is lower than those when using other methods.
Keywords :
Weight-Based , PH2 , mini-MIAS , ROIs
Journal title :
Computational and Mathematical Methods in Medicine