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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Applying stochastic second-order entropy images to multi-modal image registration
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Applying stochastic second-order entropy images to multi-modal image registration

机译:将随机二阶熵图像应用于多模态图像配准

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摘要

Which metric to use for multi-modal image registration is still a nontrivial research problem. Recently, some methods have used structural representations of images to address this problem. Efficiency and optimization simplicity are the advantages of these algorithms; however, they have some limitations. First, structural representation based registrations often fail when there are intensity variations in the patch (local block) of the image. Second, structural representation based methods are not as accurate as mutual information based methods. In this article, the shortcomings of structural image representation are overcome by devising a new similarity metric called Stochastic Second-Order Entropy Image (SSOEI). We interpolate the neighbourhood intensity information of random pixels in each patch to estimate the histogram of the intensity distribution. Then, entropy of a patch can be computed by this joint histogram. An entropy image is a collection of the entropy value of every image patch. Then, the sum of squared difference from the entropy image can be utilized as the metric of the registration framework. The robustness and accuracy of SSOEI were tested on both synthetic and clinical data, and the results showed the advantages of SSOEI over the state-of-art methods.
机译:用于多模态图像注册的指标仍然是一个非活动的研究问题。最近,一些方法使用了图像的结构表示来解决这个问题。效率和优化简单是这些算法的优点;但是,他们有一些局限性。首先,当图像的修补程序(本地块)的强度变化时,基于结构表示的注册通常失败。其次,基于结构表示的方法与基于相互信息的方法不那么准确。在本文中,通过设计称为随机二阶熵图像(SSOI)的新相似度量来克服结构图像表示的缺点。我们在每个补丁中插入随机像素的邻域强度信息,以估计强度分布的直方图。然后,可以通过该联合直方图计算补丁的熵。熵图像是每个图像修补程序的熵值的集合。然后,与熵图像的平方差之和可以用作登记框架的度量。在合成和临床数据上测试了SSOSOI的鲁棒性和准确性,结果显示了SSOEI在最先进的方法上的优势。

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