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A Riemannian Framework for Orientation Distribution Function Computing

机译:定向分布函数计算的黎曼框架

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Compared with Diffusion Tensor Imaging (DTI), High Angular Resolution Imaging (HARDI) can better explore the complex microstructure of white matter. Orientation Distribution Function (ODF) is used to describe the probability of the fiber direction. Fisher information metric has been constructed for probability density family in Information Geometry theory and it has been successfully applied for tensor computing in DTI. In this paper, we present a state of the art Riemannian framework for ODF computing based on Information Geometry and sparse representation of orthonormal bases. In this Riemannian framework, the exponential map, logarithmic map and geodesic have closed forms. And the weighted Frechet mean exists uniquely on this manifold. We also propose a novel scalar measurement, named Geometric Anisotropy (GA), which is the Riemannian geodesic distance between the ODF and the isotropic ODF. The Renyi entropy H_(1/2) of the ODF can be computed from the GA. Moreover, we present an Affine-Euclidean framework and a Log-Euclidean framework so that we can work in an Euclidean space. As an application, Lagrange interpolation on ODF field is proposed based on weighted Frechet mean. We validate our methods on synthetic and real data experiments. Compared with existing Riemannian frameworks on ODF, our framework is model-free. The estimation of the parameters, i.e. Riemannian coordinates, is robust and linear. Moreover it should be noted that our theoretical results can be used for any probability density function (PDF) under an orthonormal basis representation.
机译:与扩散张量成像(DTI)相比,高角度分辨率成像(HARDI)可以更好地探索白质的复杂微观结构。方向分布函数(ODF)用于描述纤维方向的概率。在信息几何理论中已经为概率密度族构造了Fisher信息度量,并已成功地将其应用于DTI中的张量计算。在本文中,我们提出了基于信息几何和正交基稀疏表示的ODF计算的最新Riemannian框架。在此黎曼框架下,指数图,对数图和测地线具有闭合形式。加权Frechet均值在此流形上唯一存在。我们还提出了一种新颖的标量测量,称为几何各向异性(GA),它是ODF与各向同性ODF之间的黎曼测地距离。可以从GA中计算出ODF的Renyi熵H_(1/2)。此外,我们提出了一个仿射-欧几里得框架和一个对数-欧几里得框架,以便我们可以在欧几里德空间中工作。作为一种应用,提出了基于加权Frechet均值的ODF场上的拉格朗日插值方法。我们在合成和真实数据实验中验证了我们的方法。与现有的ODF黎曼框架相比,我们的框架是无模型的。参数(即,黎曼坐标)的估计是鲁棒且线性的。此外,应注意的是,我们的理论结果可用于正交基础表示下的任何概率密度函数(PDF)。

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