基于非下采样Shearlet变换和参数自适应脉冲耦合神经网络的医学图像融合

Rui Zhang, Li Gao
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引用次数: 1

摘要

为了提高CT与MRI图像的融合精度,提出了一种基于非下采样剪切波变换域的参数自适应脉冲耦合神经网络医学图像融合方法。该方法首先对源图像进行NSST分解,得到一个低频子带和一系列高频子带。其次,采用PAPCNN模型对高频子带进行融合,使所有PCNN参数都可以通过输入子带进行自适应估计;低频子带采用基于能量属性的融合策略,更有利于保持基本信息的完整。最后,对融合后的高频子带和低频子带进行逆NSST重构。实验结果表明,本文得到的融合图像轮廓清晰、对比度高、细节纹理保存较好,在平均梯度、熵、峰值信噪比等客观指标上均取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical Image Fusion Based on NonSubsampled Shearlet Transform and Parameter-Adaptive Pulse-Coupled Neural Network
In order to improve the fusion accuracy of CT and MRI images, a new medical image fusion method with parameter-adaptive pulse-coupled neural network in nonsubsampled shearlet transform domain is proposed. In the proposed method, the NSST decomposition is first performed on the source images to obtain one low-frequency sub-band and a series of high-frequency sub-bands. Secondly, the high-frequency sub-bands are fused by a PAPCNN model, in which all the PCNN parameters can be adaptively estimated by the input sub-bands. The low-frequency sub-bands adopt an energy attribute-based fusion strategy, which is more conducive to preserving the complete basic information. Finally, the fused image is reconstructed by performing inverse NSST on the fused high-frequency and low-frequency sub-bands. The experimental results demonstrate that the fused images obtained in this paper have clear contours, high contrast, better preservation of detailed texture, and better results have been achieved in objective indicators such as average gradient, entropy, and peak signal-to-noise ratio.
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