A Novel Efficient Medical Image Segmentation Methodology
J. Bernard. Advanced Computational Intelligence: An International Journal (ACII), 1 (2):
8(October 2014)
Abstract
Image segmentation plays a crucial role in many medical applications. The threshold based medical image
segmentation approach is the most common and effective method for medical image segmentation, but it
has some shortcomings such as high complexity, poor real time capability and premature convergence, etc.
To address above issues, an improved evolution strategies is proposed to use for medical image
segmentation, there are 2 populations concurrently during evolution, one focuses on local search in order
to search solutions near optimal solution, and the other population that implemented based on chaotic
theory focuses on global search so as to keep the variety of individuals and jump out from the local
maximum to overcome the problem of premature convergence. The encoding scheme, fitness function, and
evolution operators are also designed. The experimental results validated the effectiveness and efficiency of
the proposed approach.
%0 Journal Article
%1 noauthororeditor
%A Bernard, JYvonne
%D 2014
%J Advanced Computational Intelligence: An International Journal (ACII)
%K Algorithm Chaotic Evolutionary Image Methodology Theory segmentation
%N 2
%P 8
%T A Novel Efficient Medical Image Segmentation Methodology
%U http://airccse.org/journal/acii/papers/1214acii02.pdf
%V 1
%X Image segmentation plays a crucial role in many medical applications. The threshold based medical image
segmentation approach is the most common and effective method for medical image segmentation, but it
has some shortcomings such as high complexity, poor real time capability and premature convergence, etc.
To address above issues, an improved evolution strategies is proposed to use for medical image
segmentation, there are 2 populations concurrently during evolution, one focuses on local search in order
to search solutions near optimal solution, and the other population that implemented based on chaotic
theory focuses on global search so as to keep the variety of individuals and jump out from the local
maximum to overcome the problem of premature convergence. The encoding scheme, fitness function, and
evolution operators are also designed. The experimental results validated the effectiveness and efficiency of
the proposed approach.
@article{noauthororeditor,
abstract = {Image segmentation plays a crucial role in many medical applications. The threshold based medical image
segmentation approach is the most common and effective method for medical image segmentation, but it
has some shortcomings such as high complexity, poor real time capability and premature convergence, etc.
To address above issues, an improved evolution strategies is proposed to use for medical image
segmentation, there are 2 populations concurrently during evolution, one focuses on local search in order
to search solutions near optimal solution, and the other population that implemented based on chaotic
theory focuses on global search so as to keep the variety of individuals and jump out from the local
maximum to overcome the problem of premature convergence. The encoding scheme, fitness function, and
evolution operators are also designed. The experimental results validated the effectiveness and efficiency of
the proposed approach. },
added-at = {2018-03-28T07:18:00.000+0200},
author = {Bernard, JYvonne},
biburl = {https://www.bibsonomy.org/bibtex/224b25b42712d02ab4a62d1c8e1d6b3da/janakirob},
interhash = {eaedb7d46abeb58b5ce456d51b16c7ad},
intrahash = {24b25b42712d02ab4a62d1c8e1d6b3da},
issn = {2454-3934},
journal = {Advanced Computational Intelligence: An International Journal (ACII)},
keywords = {Algorithm Chaotic Evolutionary Image Methodology Theory segmentation},
language = {English},
month = {October},
number = 2,
pages = 8,
timestamp = {2018-03-28T07:18:00.000+0200},
title = {A Novel Efficient Medical Image Segmentation Methodology },
url = {http://airccse.org/journal/acii/papers/1214acii02.pdf},
volume = 1,
year = 2014
}