Title of article :
Multimodal medical image fusion based on yager’s intuitionistic fuzzy sets
Author/Authors :
Tirupal, T Research Scholar - Department of ECE JNTUK, Kakinada, Andhra Pradesh, India , Chandra Mohan, B Bapatla Engineering College Bapatla, Andhra Pradesh, India , Srinivas Kumar, S Director (R&D) JNTUK - Kakinada Andhra Pradesh, India
Abstract :
The objective of image fusion for medical images is to combine multiple images obtained from various sources into
a single image suitable for better diagnosis. Most of the state-of-the-art image fusing technique is based on nonfuzzy
sets, and the fused image so obtained lags with complementary information. Intuitionistic fuzzy sets (IFS) are
determined to be more suitable for civilian, and medical image processing as more uncertainties are considered compared
with fuzzy set theory. In this paper, an algorithm for effectively fusing multimodal medical images is presented. In
the proposed method, images are initially converted into Yager’s intuitionistic fuzzy complement images (YIFCIs),
and a new objective function called intuitionistic fuzzy entropy (IFE) is employed to obtain the optimum value of the
parameter in membership and non-membership functions. Next, the YIFCIs are compared using contrast visibility (CV)
to construct a decision map (DM). DM is refined with consistency verification to create a fused image. Simulations
on several pairs of multimodal medical images are performed and compared with the existing fusion methods, such as
simple average, discrete cosine transform (DCT), redundant wavelet transform (RWT), intuitionistic fuzzy set, fuzzy
transform and interval-valued intuitionistic fuzzy set (IVIFS). The superiority of the proposed method is presented and
is justified. Fused image quality is also verified with various quality metrics, such as spatial frequency (SF), average
gradient (AG), fusion symmetry (FS), edge information preservation (QAB=F ), entropy (E) and computation time
(CoT).
Keywords :
Decision map , Intuitionistic fuzzy entropy , Multimodal medical images , Intuitionistic fuzzy sets , Image fusion