Title of article :
Medical Image Fusion Based on Fast Finite Shearlet Transform and Sparse Representation
Author/Authors :
Tan, Ling School of Computer and Software - Nanjing University of Information Science & Technology - Nanjing, China , Yu, Xin School of Computer and Software - Nanjing University of Information Science & Technology - Nanjing, China
Abstract :
Clinical diagnosis has high requirements for the visual effect of medical images. To obtain rich detail features and clear edges for
fusion medical images, an image fusion algorithm FFST-SR-PCNN based on fast finite shearlet transform (FFST) and sparse
representation is proposed, aiming at the problem of poor clarity of edge details that is conducive to maintaining the details of
source image in current algorithms. Firstly, the source image is decomposed into low-frequency coefficients and high-frequency
coefficients by FFST. Secondly, the K-SVD method is used to train the low-frequency coefficients to obtain the overcomplete
dictionary D, and then the OMP algorithm sparsely encodes the low-frequency coefficients to complete the fusion of the lowfrequency coefficients. Then, a high-frequency coefficient is applied to excite a pulse-coupled neural network, and the fusion
coefficient of the high-frequency coefficient is selected according to the number of ignitions. Finally, the fused low-frequency
coefficient and high-frequency coefficient are reconstructed into the fused medical image by FFST inverse transform. The experimental results show that the image fusion result of the proposed algorithm is about 35% higher than the comparison algorithms for the edge information transfer factor QAB/F index and has achieved good results in both subjective visual effects and
objective evaluation indicators.
Keywords :
Transform , Sparse , FFST , K-SVD , FFST-SR-PCNN
Journal title :
Computational and Mathematical Methods in Medicine