Multi-Modal Medical Image Fusion Using 3-Stage Multiscale Decomposition and PCNN with Adaptive Arguments

Mummadi Gowthami Reddy, P. V. Reddy, P. Reddy
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引用次数: 2

Abstract

In the current era of technological development, medical imaging plays an important role in many applications of medical diagnosis and therapy. In this regard, medical image fusion could be a powerful tool to combine multi-modal images by using image processing techniques. But, conventional approaches failed to provide the effective image quality assessments and robustness of fused image. To overcome these drawbacks, in this work three-stage multiscale decomposition (TSMSD) using pulse-coupled neural networks with adaptive arguments (PCNN-AA) approach is proposed for multi-modal medical image fusion. Initially, nonsubsampled shearlet transform (NSST) is applied onto the source images to decompose them into low frequency and high frequency bands. Then, low frequency bands of both the source images are fused using nonlinear anisotropic filtering with discrete Karhunen–Loeve transform (NLAF-DKLT) methodology. Next, high frequency bands obtained from NSST are fused using PCNN-AA approach. Now, fused low frequency and high frequency bands are reconstructed using NSST reconstruction. Finally, band fusion rule algorithm with pyramid reconstruction is applied to get final fused medical image. Extensive simulation outcome discloses the superiority of proposed TSMSD using PCNN-AA approach as compared to state-of-the-art medical image fusion methods in terms of fusion quality metrics such as entropy (E), mutual information (MI), mean (M), standard deviation (STD), correlation coefficient (CC) and computational complexity.
基于3阶段多尺度分解和PCNN自适应参数的医学图像融合
在当今科技发展的时代,医学影像在医学诊断和治疗的许多应用中发挥着重要的作用。在这方面,医学图像融合可以成为一个强大的工具,结合多模态图像的图像处理技术。但是,传统的方法无法提供有效的图像质量评估和融合图像的鲁棒性。为了克服这些缺点,本文提出了基于脉冲耦合神经网络自适应参数的三阶段多尺度分解(TSMSD)方法用于多模态医学图像融合。首先对源图像进行非下采样shearlet变换(NSST),将其分解为低频和高频两个波段。然后,采用离散Karhunen-Loeve变换(naff - dklt)方法对两幅源图像的低频段进行非线性各向异性滤波融合。其次,采用PCNN-AA方法对nst获得的高频进行融合。目前,采用NSST重构法对融合的低频和高频进行重构。最后,采用金字塔重建的波段融合规则算法得到最终融合的医学图像。大量的仿真结果表明,与最先进的医学图像融合方法相比,采用PCNN-AA方法的TSMSD在融合质量指标(如熵(E)、互信息(MI)、均值(M)、标准差(STD)、相关系数(CC)和计算复杂度)方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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