基于径向基函数的图像变形场快速重建

Lukás Rucka, I. Peterlík
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引用次数: 5

摘要

快速准确的图像数据配准是计算机辅助医学图像分析的关键组成部分。许多算法不是直接对输入图像执行配准,而是使用从原始数据中提取的稀疏表示来计算转换。然而,为了将结果转换应用到原始图像上,必须使用合适的内/外插值技术重建密集变形场。本文采用径向基函数(RBF)从基于模型的配准计算的稀疏变换中重建密集变形场。使用不同的场景测试各种内核。密集变形场用于扭曲源图像,并使用两个不同的度量将其定量地与目标图像进行比较。此外,通过两种不同的场景,研究了RBF所需控制点的数量和分布的影响。除了精度之外,还报道了使用GPU加速的方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast reconstruction of image deformation field using radial basis function
Fast and accurate registration of image data is a key component of computer-aided medical image analysis. Instead of performing the registration directly on the input images, many algorithms compute the transformation using a sparse representation extracted from the original data. However, in order to apply the resulting transformation onto the original images, a dense deformation field has to be reconstructed using a suitable inter-/extra-polation technique. In this paper, we employ the radial basis function (RBF) to reconstruct the dense deformation field from a sparse transformation computed by a model-based registration. Various kernels are tested using different scenario. The dense deformation field is used to warp the source image and compare it quantitatively to the target image using two different metrics. Moreover, the influence of the number and distribution of the control points required by the RBF is studied via two different scenarios. Beside the accuracy, the performance of the method accelerated using a GPU is reported.
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