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A Robust and Accurate Non-rigid Medical Image Registration Algorithm Based on Multi-level Deformable Model

机译:基于多级可变形模型的鲁棒且精确的非刚性医学图像配准算法

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Background:?Compared to the rigid image registration task, the non-rigid image registration task faces much more challenges due to its high degree of freedom and inherent requirement of smoothness in the deformation field. The purpose was to propose an efficient coarse-to-fine non-rigid medical image registration algorithm based on a multi-level deformable model.Methods:?In this paper, a robust and efficient coarse-to-fine non-rigid medical image registration algorithm is proposed. It contains three level deformation models, i.e., the global homography model, the local mesh-level homography model, and the local B-spline FFD (Free-Form Deformation) model. The?coarse?registration is achieved by the first two level models. In the global homography model, a robust algorithm for simultaneous outliers (error matched feature points) removal and model estimation is applied. In the local mesh-level homography model, a new similarity measure is proposed to improve the robustness and accuracy of local mesh based registration. In the fine registration, a local B-spline FFD model with normalized mutual information gradient is employed.Results:?We verified the effectiveness of each stage of the proposed registration algorithm with many non-rigid transformation image pairs, and quantitatively compared our proposed registration algorithm with the HBFFD method which is based on the control points of multi-resolution. The experimental results show that our algorithm is more accurate than the hierarchical local B-spline FFD method.Conclusion:?Our algorithm can achieve high precision registration by?coarse-to-fine?process based on?multi-level?deformable model, which?ourperforms?the state-of-the-art methods.
机译:背景:与刚性图像配准任务相比,非刚性图像配准任务由于其高度的自由度和在变形领域中对光滑度的内在要求而面临着更多的挑战。目的是提出一种基于多级可变形模型的高效从粗糙到精细的非刚性医学图像配准算法。方法:本文提出了一种鲁棒,高效的从粗糙到精细的非刚性医学图像配准方法。提出了算法。它包含三个级别的变形模型,即全局单应性模型,局部网格级单应性模型和局部B样条FFD(自由形式变形)模型。 “粗略”注册是通过前两个级别的模型实现的。在全局单应性模型中,应用了一种健壮的算法,用于同时离群值(错误匹配的特征点)的去除和模型估计。在局部网格级单应性模型中,提出了一种新的相似性度量以提高基于局部网格的配准的鲁棒性和准确性。在精细配准中,使用具有标准化互信息梯度的局部B样条FFD模型。结果:我们用许多非刚性变换图像对验证了所提出配准算法每个阶段的有效性,并定量比较了所建议配准基于HBFFD方法的多分辨率控制点算法。实验结果表明,该算法比分层局部B样条FFD方法具有更高的精度。结论:基于多级可变形模型,该算法可以通过粗细化过程实现高精度配准。表现出最先进的方法。

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