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Morphological Operations on Matrix-Valued Images

机译:矩阵值图像的形态学运算

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摘要

The output of modern imaging techniques such as diffusion tensor MRI or the physical measurement of anisotropic behaviour in materials such as the stress-tensor consists of tensor-valued data. Hence adequate image processing methods for shape analysis, skeletonisation, denoising and segmentation are in demand. The goal of this paper is to extend the morphological operations of dilation, erosion, opening and closing to the matrix-valued setting. We show that naive approaches such as componentwise application of scalar morphological operations are unsatisfactory, since they violate elementary requirements such as invariance under rotation. This lead us to study an analytic and a geometric alternative which are rotation invariant. Both methods introduce novel non-component-wise definitions of a supremum and an infimum of a finite set of matrices. The resulting morphological operations incorporate information from all matrix channels simultaneously and preserve positive definiteness of the matrix field. Their properties and their performance are illustrated by experiments on diffusion tensor MRI data.
机译:现代成像技术(例如扩散张量MRI)或材料中各向异性行为的物理测量(例如应力张量)的输出由张量值数据组成。因此,需要用于形状分析,骨架化,去噪和分割的足够的图像处理方法。本文的目的是将膨胀,腐蚀,打开和闭合的形态学操作扩展到矩阵值设置。我们表明,单纯的方法(例如标量形态学操作的按组件应用)是不令人满意的,因为它们违反了基本要求,例如旋转下的不变性。这导致我们研究旋转不变的解析和几何选择。两种方法都引入了矩阵的极值和极值的新颖的非成分明智定义。所产生的形态学运算同时包含所有矩阵通道的信息,并保持矩阵场的正定性。通过对扩散张量MRI数据进行的实验说明了它们的特性和性能。

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