扩散张量图像的正则化

J. Cisternas, T. Asahi, M. Gálvez, G. Rojas
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引用次数: 1

摘要

提出了一种尊重扩散椭球几何结构的扩散张量图像正则化方案,该方案不引入诸如各向异性滴等伪影。该方法可以表述为一个变分问题,并通过梯度流来求解。主要成分是两个椭球体之间的距离概念,它考虑了形状和方向的差异。该方法是专门针对圆柱对称椭球体的情况,并实现了普通的矢量操作,如叉乘和点积。利用合成张量场和扩散模体数据集对正则化算法进行了测试。在这两种情况下,该算法都能够降低张量场的噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regularization of diffusion tensor images
We present a regularization scheme for diffusion tensor images, that respects the geometrical structure of diffusion ellipsoids and does not introduce artifacts such as anisotropy drops. The method can be stated as a variational problem and solved by means of a gradient flow. The main ingredient is the notion of a distance between two ellipsoids that considers differences in shape as well as differences in orientation. The method is specialized to the case of cylindrically-symmetric ellipsoids and implemented in terms of ordinary vector manipulations such as cross and dot products. The regularization algorithm is tested using a synthetic tensor field and a dataset acquired from a diffusion phantom. In both cases the algorithm was able to reduce the noise from the tensor field.
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