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Nonsubsampled shearlet domain fusion techniques for CT-MR neurological images using improved biological inspired neural model

机译:使用改进的生物启发神经模型的CT-MR神经模型的非求利均匀的剪柏域融合技术

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摘要

The fusion of multimodality medical images performs a very crucial role in the clinical diagnosis, analysis and the treatment of especially in critical diseases. It is considered as an assisted approach for the radiologist by providing the composite images having significant diagnostic information acquired from the source images. The main purpose of this work is to develop an efficient framework for fusing the multimodal medical images. Three different fusion techniques are proposed in this paper that presents the CT and MR medical image fusion in nonsubsampled shearlet transform (NSST) domain using the adaptive spiking neural model. The NSST having different features and a competent depiction of the image coefficients provides several directional decomposition coefficients. Maximum selection approach and regional energy are utilized for low frequency coefficients fusion. Spatial frequency, novel modified spatial frequency and novel sum modified Laplacian motivated spiking model are used for every high frequency subimage component. Finally, fused images are reconstructed by applying inverse NSST. The performance of proposed fusion techniques is validated by extensive simulations performed on different CT-MR image datasets using proposed and other thirty seven existing fusion approaches in terms of both the subjective and objective manner. The results revealed that the proposed techniques provide better visualization of resultant images and higher quantitative measures compared to several existing fusion approaches. (C) 2017 Published by Elsevier B.V. on behalf of Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences.
机译:多模医学图像的融合在临床诊断,分析和尤其是关键疾病的临床诊断,分析和治疗中表现了一个非常至关重要的作用。通过提供具有从源图像获取的显着诊断信息的合成图像被认为是放射学家的辅助方法。这项工作的主要目的是开发一个有效的框架,用于融合多式化医学图像。在本文中提出了三种不同的融合技术,其使用自适应尖刺神经模型呈现出非求采样的Shearlet变换(NSST)域中的CT和MR医学图像融合。具有不同特征和图像系数的称重描述的NSST提供了若干方向分解系数。用于低频系数融合的最大选择方法和区域能量。空间频率,新颖的改进的空间频率和新颖的SUM改进的LAPLACIAN动机尖刺模型用于每个高频子图组件。最后,通过应用逆行NSST来重建融合图像。通过在主观和客观方式方面的不同CT-MR图像数据集对不同的CT-MR图像数据集进行广泛的模拟来验证所提出的融合技术的性能。结果表明,与几种现有的融合方法相比,所提出的技术可以更好地可视化结果图像和更高的定量测量。 (c)2017年由elsevier b.v出版。代表纳雷斯州纳雷斯省生物庭院研究所和波兰科学院的生物医学工程。

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