Medical image fusion based on quaternion wavelet transform

Medical image fusion can combine multi-modal images into an integrated higher-quality image, which can provide more comprehensive and accurate pathological information than individual image does. Traditional transform domain-based image fusion methods usually ignore the dependencies between coefficients and may lead to the inaccurate representation of source image. To improve the quality of fused image, a medical image fusion method based on the dependencies of quaternion wavelet transform coefficients is proposed. First, the source images are decomposed into low-frequency component and high-frequency component by quaternion wavelet transform. Then, a clarity evaluation index based on quaternion wavelet transform amplitude and phase is constructed and a contextual activity measure is designed. These measures are utilized to fuse the high-frequency coefficients and the choose-max fusion rule is applied to the low-frequency components. Finally, the fused image can be obtained by inverse quaternion wavelet transform. The experimental results on some brain multi-modal medical images demonstrate that the proposed method has achieved advanced fusion result.

[1]  Zhang De-xiang,et al.  Fusion of polarimetric image using contourlet transform , 2011, 2011 International Conference on Consumer Electronics, Communications and Networks (CECNet).

[2]  Xiaojun Wu,et al.  Statistical Modeling of Multi-modal Medical Image Fusion Method Using C-CHMM and M-PCNN , 2014, 2014 22nd International Conference on Pattern Recognition.

[3]  Eduardo Bayro-Corrochano,et al.  The Theory and Use of the Quaternion Wavelet Transform , 2005, Journal of Mathematical Imaging and Vision.

[4]  Linping Li,et al.  Image fusion based on principal component analysis in dual-tree complex wavelet transform domain , 2012, 2012 International Conference on Wavelet Active Media Technology and Information Processing (ICWAMTIP).

[5]  Mingjing Li,et al.  Image fusion algorithm based on contrast pyramid and application , 2013, Proceedings 2013 International Conference on Mechatronic Sciences, Electric Engineering and Computer (MEC).

[6]  Yong Yang,et al.  Multimodal Medical Image Fusion through a New DWT Based Technique , 2010, 2010 4th International Conference on Bioinformatics and Biomedical Engineering.

[7]  Sun Shengli Study of Image Fusion Based on Grad Pyramid Algorithm , 2007 .

[8]  R. S. Rajesh,et al.  survey of spatial domain image fusion techniques , 2014 .

[9]  Ujwala Patil,et al.  Image fusion using hierarchical PCA. , 2011, 2011 International Conference on Image Information Processing.

[10]  Bo Fu,et al.  Magnitude-Phase of Quaternion Wavelet Transform for Texture Representation Using Multilevel Copula , 2013, IEEE Signal Processing Letters.

[11]  Vladimir Petrovic,et al.  Objective image fusion performance measure , 2000 .

[12]  Xiao-Jun Wu,et al.  Multi-focus image fusion using quaternion wavelet transform , 2016, 2016 23rd International Conference on Pattern Recognition (ICPR).

[13]  Xiaoqing Luo,et al.  Image Fusion Using Quaternion Wavelet Transform and Multiple Features , 2017, IEEE Access.

[14]  Bao-Long Guo,et al.  Research on Image Fusion Based on the Nonsubsampled Contourlet Transform , 2007, 2007 IEEE International Conference on Control and Automation.

[15]  Sheng Zhang,et al.  Multiscale texture classification using reduced quaternion wavelet transform , 2013 .

[16]  G. Selvakumari,et al.  Directive Contrast Based Multimodal Medical Image Fusion with Non-Sub sampled Contour Let Transform , 2014 .

[17]  Yi Shen,et al.  Region level based multi-focus image fusion using quaternion wavelet and normalized cut , 2014, Signal Process..