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Multi-modality medical images fusion based on local-features fuzzy sets and novel sum-modified-Laplacian in non-subsampled shearlet transform domain

机译:基于局部特征模糊集和新型和修正Laplacian的非下采样Skletlet变换域多模态医学图像融合

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摘要

To obtain maximum information and key features from the source images, enhance visual quality and contrast of the fused image, and decrease computational task; an improved algorithm based on local featured fuzzy sets and NSML in NSST domain is presented here. First, by taking full advantages of NSST, two registered images of the same scene are decomposed into one Low Frequency Subbands (LFS) and several High Frequency Subbands (HFS). Then, Fuzzy Pixel-based fusion rules are applied on the LFS for computing weights of every pixel in the required fused coefficient. Weights are totally based on the local energies and entropies of the LFS. Where, fused HFS coefficients are selected by computing and comparing NSML of every HFS, to extract maximum and more useful information. Finally, inversed NSST is applied to get the required fused image. Additionally, the scheme is extended to color medical image fusion that effectively restrain color distortion and enhance visual quality. To assess the performance, several experiments were conducted on different data-sets of gray-scale and color medical images. Results obtained shows that the proposed algorithm is not only superior in edge and contour detection, visual feature and in computational performance but also presents an improvement in quantitative parameters compared to other state-of-art proposed schemes. (C) 2019 Elsevier Ltd. All rights reserved.
机译:为了从源图像中获取最大的信息和关键特征,增强融合图像的视觉质量和对比度,并减少计算任务;提出了一种基于局部特征模糊集和NSST域NSML的改进算法。首先,通过充分利用NSST的优势,将同一场景的两个配准图像分解为一个低频子带(LFS)和几个高频子带(HFS)。然后,将基于模糊像素的融合规则应用于LFS,以计算所需融合系数中每个像素的权重。权重完全基于LFS的局部能量和熵。其中,通过计算和比较每个HFS的NSML来选择融合的HFS系数,以提取最大且更有用的信息。最后,应用反NSST得到所需的融合图像。此外,该方案已扩展到可有效抑制颜色失真并增强视觉质量的彩色医学图像融合。为了评估性能,对灰度和彩色医学图像的不同数据集进行了一些实验。获得的结果表明,与其他现有技术相比,该算法不仅在边缘和轮廓检测,视觉特征和计算性能方面都优越,而且在定量参数方面也有改进。 (C)2019 Elsevier Ltd.保留所有权利。

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