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首页> 外文期刊>IEEE Transactions on Medical Imaging >Kernel Bundle Diffeomorphic Image Registration Using Stationary Velocity Fields and Wendland Basis Functions
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Kernel Bundle Diffeomorphic Image Registration Using Stationary Velocity Fields and Wendland Basis Functions

机译:平稳速度场和温德兰基函数的核束微分图像配准

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摘要

In this paper, we propose a multi-scale, multi-kernel shape, compactly supported kernel bundle framework for stationary velocity field-based image registration (Wendland kernel bundle stationary velocity field, wKB-SVF). We exploit the possibility of directly choosing kernels to construct a reproducing kernel Hilbert space (RKHS) instead of imposing it from a differential operator. The proposed framework allows us to minimize computational cost without sacrificing the theoretical foundations of SVF-based diffeomorphic registration. In order to recover deformations occurring at different scales, we use compactly supported Wendland kernels at multiple scales and orders to parameterize the velocity fields, and the framework allows simultaneous optimization over all scales. The performance of wKB-SVF is extensively compared to the 14 non-rigid registration algorithms presented in a recent comparison paper. On both MGH10 and CUMC12 datasets, the accuracy of wKB-SVF is improved when compared to other registration algorithms. In a disease-specific application for intra-subject registration, atrophy scores estimated using the proposed registration scheme separates the diagnostic groups of Alzheimer's and normal controls better than the state-of-the-art segmentation technique. Experimental results show that wKB-SVF is a robust, flexible registration framework that allows theoretically well-founded and computationally efficient multi-scale representation of deformations and is equally well-suited for both inter- and intra-subject image registration.
机译:在本文中,我们提出了一种多尺度,多核形状的,紧密支持的核束框架,用于基于平稳速度场的图像配准(Wendland核束固定速度场,wKB-SVF)。我们利用直接选择内核来构造再现内核希尔伯特空间(RKHS)的可能性,而不是通过差分运算符强加它。所提出的框架使我们能够在不牺牲基于SVF的微晶配准的理论基础的情况下将计算成本降至最低。为了恢复在不同尺度下发生的变形,我们使用了在多个尺度和阶次上受紧凑支持的Wendland内核来对速度场进行参数化,并且该框架允许在所有尺度上同时进行优化。 wKB-SVF的性能与最近的比较论文中提出的14种非刚性注册算法进行了广泛的比较。与其他注册算法相比,在MGH10和CUMC12数据集上,wKB-SVF的准确性均得到了提高。在针对特定疾病的受试者内部配准应用中,使用拟议的配准方案估算的萎缩得分比最新的分割技术更好地将阿尔茨海默氏病和正常对照组的诊断组分开。实验结果表明,wKB-SVF是一个健壮,灵活的配准框架,可以在理论上建立良好且计算效率高的变形多尺度表示形式,并且同样非常适合对象间和对象内图像配准。

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