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Curvature-driven PDE methods for matrix-valued images

机译:曲率驱动的PDE方法用于矩阵值图像

摘要

Matrix-valued data sets arise in a number of applications including diffusion tensor magnetic resonance imaging (DT-MRI) and physical measurements of anisotropic behaviour. Consequently, there arises the need to filter and segment such tensor fields. In order to detect edgelike structures in tensor fields, we first generalise Di Zenzou27s concept of a structure tensor for vector-valued images to tensor-valued data. This structure tensor allows us to extend scalar-valued mean curvature motion and self-snakes to the tensor setting. We present both two-dimensional and three-dimensional formulations, and we prove that these filters maintain positive semidefiniteness if the initial matrix data are positive semidefinite. We give an interpretation of tensorial mean curvature motion as a process for which the corresponding curve evolution of each generalised level line is the gradient descent of its total length. Moreover, we propose a geodesic active contour model for segmenting tensor fields and interpret it as a minimiser of a suitable energy functional with a metric induced by the tensor image. Since tensorial active contours incorporate information from all channels, they give a contour representation that is highly robust under noise. Experiments on three-dimensional DT-MRI data and an indefinite tensor field from fluid dynamics show that the proposed methods inherit the essential properties of their scalar-valued counterparts.
机译:矩阵值数据集出现在许多应用中,包括扩散张量磁共振成像(DT-MRI)和各向异性行为的物理测量。因此,需要过滤和分割这种张量场。为了检测张量场中的边缘结构,我们首先将Di Zenzo将矢量值图像的结构张量的概念推广到张量值数据。这种结构张量使我们能够将标量值的平均曲率运动和自弯曲扩展到张量设置。我们同时提供了二维和三维公式,并且我们证明了,如果初始矩阵数据为正半定性,则这些滤波器将保持正半定性。我们将张量平均曲率运动解释为一个过程,每个广义水平线的相应曲线演变为其总长度的梯度下降。此外,我们提出了一个用于分割张量场的测地线活动轮廓模型,并将其解释为具有适当能量函数的极小值,该能量函数具有由张量图像引起的度量。由于张量有效轮廓包含来自所有通道的信息,因此它们给出的轮廓表示在噪声下具有很高的鲁棒性。对三维DT-MRI数据和流体动力学不确定张量场进行的实验表明,所提出的方法继承了标量值对应物的基本属性。

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