Medical Image Fusion Based on Weighted Least Square Optimization and Deep Learning Algorithm

C. Ghandour, W. El-shafai, S. El-Rabaie
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引用次数: 3

Abstract

Recently, medical image processing has become a hot area of research, especially with the rapid development in technology and instrumentation, and that’s because of its effective role in the health sector. So that it becomes a very active research tool. This research introduces an image fusion algorithm that utilizes a deep learning model to produce only one medical fused image that includes all the traits from the medical source images. Firstly, the source images are separated into detailed content and base parts using the Gaussian and rolling guidance filters (RGF). Secondly, by the weighted averaging strategy, the base parts are fused. For the detail content, to quote traits of multi-layer which employ weighted average strategy to produce the fused detail content several candidates, the deep learning network is utilized. The max selection technique is employed to gain the last detailed content as soon as these candidates are gotten. Eventually, by uniting the fused detail and base layers, the fused image will be recreated. The experimental outcomes show that this algorithm can accomplish better results by comparing the other fusion methods in both thematic assessment and visual quality.
基于加权最小二乘优化和深度学习算法的医学图像融合
近年来,医学图像处理已成为一个研究热点,特别是随着技术和仪器的快速发展,这是因为它在卫生领域的有效作用。因此它成为了一个非常活跃的研究工具。本研究介绍了一种图像融合算法,该算法利用深度学习模型仅生成一幅包含医学源图像所有特征的医学融合图像。首先,利用高斯滤波和滚动制导滤波(RGF)将源图像分离为详细内容和基本部分;其次,采用加权平均策略,对基本部分进行融合;对于细节内容,利用深度学习网络引用多层特征,采用加权平均策略产生融合的多个候选细节内容。采用最大选择技术,在获得候选对象后立即获得最后的详细内容。最后,通过统一融合的细节和基础层,融合的图像将被重建。实验结果表明,与其他融合方法相比,该算法在主题评价和视觉质量两方面都取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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