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首页> 外文期刊>SIAM Journal on Scientific Computing >SHAPE-DRIVEN INTERPOLATION WITH DISCONTINUOUS KERNELS: ERROR ANALYSIS, EDGE EXTRACTION, AND APPLICATIONS IN MAGNETIC PARTICLE IMAGING
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SHAPE-DRIVEN INTERPOLATION WITH DISCONTINUOUS KERNELS: ERROR ANALYSIS, EDGE EXTRACTION, AND APPLICATIONS IN MAGNETIC PARTICLE IMAGING

机译:具有不连续内核的形状驱动的插值:误差分析,边缘提取和磁粒子成像中的应用

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摘要

Accurate interpolation and approximation techniques for functions with discontinuities are key tools in many applications, such as medical imaging. In this paper, we study a radial basis function type of method for scattered data interpolation that incorporates discontinuities via a variable scaling function. For the construction of the discontinuous basis of kernel functions, information on the edges of the interpolated function is necessary. We characterize the native space spanned by these kernel functions and study error bounds in terms of the fill distance of the node set. To extract the location of the discontinuities, we use a segmentation method based on a classification algorithm from machine learning. The results of the conducted numerical experiments are in line with the theoretically derived convergence rates in case that the discontinuities are a priori known. Further, an application to interpolation in magnetic particle imaging shows that the presented method is very promising in order to obtain edge-preserving image reconstructions in which ringing artifacts are reduced.
机译:具有不连续功能的精确插值和近似技术是许多应用中的关键工具,例如医学成像。在本文中,我们研究了散射数据插值的径向基函数类型,其通过可变缩放函数结合不连续性。为了构建内核函数的不连续基础,需要关于内插功能的边缘的信息。我们的特征在于这些内核函数跨越的本地空间,并在节点集的填充距离方面研究误差界限。要提取不连续性的位置,我们使用基于机器学习的分类算法的分段方法。在不连续性是已知的情况下,所进行数值实验的结果符合理论上衍生的会聚率。此外,在磁颗粒成像中插值的应用表明,所提出的方法非常有前途,以便获得振铃伪像减少的边缘保留图像重建。

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