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Analysing superimposed oriented patterns

机译:分析叠加的定向模式

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摘要

Estimation of local orientation in images is often posed as the task of finding the minimum variance axis in a local neighborhood. The solution is given as the eigenvector belonging to the smaller eigenvalue of a 2/spl times/2 tensor. Ideally, the tensor is rank-deficient, i.e., the smaller eigenvalue is zero. A large minimal eigenvalue signals the presence of more than one local orientation. We describe a framework for estimating such superimposed orientations. Our analysis of superimposed orientations is based on the eigensystem analysis of a suitably extended tensor. We show how to carry out the eigensystem analysis efficiently using tensor invariants. Unlike in the single orientation case, the eigensystem analysis does not directly yield the orientations, rather, it provides so-called mixed orientation parameters. We therefore show how to decompose the mixed orientation parameters into the individual orientations. These, in turn, allow the superimposed patterns to be separated.
机译:图像中局部取向的估计通常被认为是寻找局部邻域中最小方差轴的任务。该解决方案以特征向量的形式给出,该特征向量属于2 / spl乘以/ 2张量的较小特征值。理想情况下,张量是秩不足的,即较小的特征值是零。较大的最小特征值表示存在多个局部方向。我们描述了一个用于估计这种叠加方向的框架。我们对叠加方向的分析是基于对适当扩展的张量的本征系统分析。我们展示了如何使用张量不变式有效地进行特征系统分析。与在单一方向情况下不同,本征系统分析不会直接产生方向,而是提供了所谓的混合方向参数。因此,我们展示了如何将混合方向参数分解为各个方向。这些继而允许叠加的图案被分离。

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