Regularization of diffusion tensor field using coupled robust anisotropic diffusion filters

Songyuan Tang, Yong Fan, Hongtu Zhu, P. Yap, Wei Gao, Weili Lin, D. Shen
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引用次数: 3

Abstract

This paper presents a method to simultaneously regularize diffusion weighted images and their estimated diffusion tensors, with the goal of suppressing noise and restoring tensor information. We enforce a data fidelity constraint, using coupled robust anisotropic diffusion filters, to ensure consistency of the restored diffusion tensors with the regularized diffusion weighted images. The filters are designed to take advantage of robust statistics and to be adopted to the anisotropic nature of diffusion tensors, which can effectively keep boundaries between piecewise constant regions in the tensor volume and also the diffusion weighted images during the regularized process. To facilitate Euclidean operations on the diffusion tensors, log-Euclidean metrics are adopted when performing the filtering. Experimental results on simulated and real image data demonstrate the effectiveness of the proposed method.
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利用耦合鲁棒各向异性扩散滤波器的扩散张量场正则化
本文提出了一种同时正则化扩散加权图像及其估计的扩散张量的方法,目的是抑制噪声和恢复张量信息。我们使用耦合鲁棒各向异性扩散滤波器强制数据保真度约束,以确保恢复的扩散张量与正则化扩散加权图像的一致性。该滤波器利用鲁棒统计特性,针对扩散张量的各向异性,在正则化过程中可以有效地保持张量体积中分段常数区域和扩散加权图像之间的边界。为了便于对扩散张量进行欧几里德运算,在进行滤波时采用对数欧几里德度量。仿真和真实图像数据的实验结果证明了该方法的有效性。
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