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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >The Spiking Cortical Model Based Structural Representations for Non-Rigid Multi-Modal Medical Image Registration
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The Spiking Cortical Model Based Structural Representations for Non-Rigid Multi-Modal Medical Image Registration

机译:基于尖锐的皮质模型的非刚性多模态医学图像登记的结构表示

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摘要

Non-rigid multi-modal medical image registration plays an important role in various clinical applications. The structural representation based registration methods have recently attached much attention due to the ability to address the influence of intensity differences of multi-modal images. However, these methods cannot represent the structural information of complicated medical images effectively, thereby leading to the unsatisfactory registration results. In this paper, we have proposed the spiking cortical model (SCM) based structural representations to determine the similarity metrics for the non-rigid image registration. The proposed method realizes image structural representations by means of the fractional order generalized entropy of the output pulse sequences generated by the SCM. The sum of squared differences (SSD) between structural representations of multi-modal images is used as the similarity metric. By using the free-from deformation as the transformation model, this similarity metric is optimized by the Limited memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) method to produce the registered image. Experiments on BrainWeb database and Atlas database show that the proposed method has higher registration accuracy than the methods based on the normalized mutual information and the SSD on the entropy images, the Weber local descriptor as well as the edge neighbourhood descriptor.
机译:非刚性多模态医学图像登记在各种临床应用中起着重要作用。基于结构表示的注册方法最近引起了很多关注,因为能够解决多模态图像的强度差异的影响。然而,这些方法不能有效地代表复杂的医学图像的结构信息,从而导致不令人满意的注册结果。在本文中,我们提出了基于尖刺的皮质模型(SCM)的结构表示,以确定非刚性图像配准的相似度量。该方法通过SCM产生的输出脉冲序列的分数阶通用熵实现图像结构表示。多模态图像的结构表示之间的平方差(SSD)的总和用作相似度量。通过使用自由变形作为变形模型,该相似性度量由有限的存储器泡沫泡沫 - 荧光素(L-BFGS)方法优化,以产生登记的图像。 BrainWeb数据库和Atlas数据库的实验表明,该方法的登记精度高于基于归一化相互信息的方法和熵图像上的SSD,韦伯本地描述符以及边缘邻域描述符。

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