基于离散周期样条小波和自由变形的临床颈部MRI体间图像配准

A. Suman, Md. Asikuzzaman, A. Webb, D. Perriman, M. Pickering
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引用次数: 3

摘要

本文提出了一个基于紧支持样条和离散周期样条小波(DPSWs)的多阈值、多相似度和多变换的患者间图像配准框架,该框架采用高斯-牛顿梯度下降(GNGD)和梯度下降(GD)优化方法。我们的主要智力贡献是将dpsw纳入到转换中,而另一个智力贡献包括将超距概念融合到表面匹配技术中,该技术通过多转换和多相似度量来实现。特别是,由于单纯结合变换、相似度量(SM)和配准过程的优化无法实现真正的形变,因此需要将运动图像置于配准范围内。另一方面,表面匹配技术涉及边缘位置差(EPD) SM,其中使用基于样条的无变形(FFD)方法使用多个阈值匹配粗到细表面。在临床颈部磁共振三维图像上进行了配准实验,结果表明该方法具有较好的准确性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-Subject Image Registration of Clinical Neck MRI Volumes using Discrete Periodic Spline Wavelet and Free form Deformation
This paper presents a framework for inter-patient image registration which uses a multi-thresholds, multi-similarity measures and multi-transformations based on compactly supported spline and discrete periodic spline wavelets (DPSWs) using the Gauss-Newton gradient descent (GNGD) and gradient descent (GD) optimization methods. Our primary intellectual contribution is incorporating DPSWs in the transformation while another includes fusing out-of-range concept in a surface matching technique which is implemented by a multi-transformations and multi-similarity measures. In particular, as a true deformation cannot be achieved by single combination of transformation, similarity measure (SM) and optimization of a registration process, a moving image is required to be brought within the range of a registration. On the other hand, the surface matching technique involves an edge position difference (EPD) SM in which coarse to fine surfaces are matched using multiple thresholds with a spline-based free from deformation (FFD) method. The registration experiments were performed on 3D clinical neck magnetic resonance (MR) images, with the results showing that our proposed method provides good accuracy and robustness.
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