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An efficient fusion algorithm combining feature extraction and variational optimization for CT and MR images

机译:一种高效的融合算法,组合CT和MR图像的特征提取和变分优化

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In medical image processing, image fusion is the process of combining complementary information from different or multimodality images to obtain an informative fused image in order to improve clinical diagnostic accuracy. In this paper, we propose a two‐stage fusion framework for computed tomography (CT) and magnetic resonance (MR) images. First, the intensity and geometric structure features in both CT and MR images are extracted by the saliency detection method and structure tensor, respectively, and an initial fused image is obtained. Then, the initial fused image is optimized by a variational model which contains a fidelity term and a regularization term. The fidelity term is to retain the intensity of the initial fused image, and the regularization term is to constrain the gradient information of the fused image to approximate the MR image. The primal‐dual algorithm is proposed to solve the variational problem.
机译:在医学图像处理中,图像融合是组合来自不同或多模图像的互补信息以获得信息融合图像以提高临床诊断准确性的过程。在本文中,我们提出了一种用于计算断层扫描(CT)和磁共振(MR)图像的两级融合框架。首先,CT和MR图像中的强度和几何结构特征分别通过显着性检测方法和结构张量提取,并且获得初始融合图像。然后,初始熔融图像由包含保真术语和正则化术语的变分模型进行了优化。保真术语是保留初始融合图像的强度,并且正则化术语是约束融合图像的梯度信息以近似MR图像。提出了原始 - 双算法来解决变分问题。

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