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Using Eigenvalue Derivatives for Edge Detectionin DT-MRI Data

机译:使用特征值导数在DT-MRI数据中进行边缘检测

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This paper introduces eigenvalue derivatives as a fundamental tool to discern the different types of edges present in matrix-valued images. It reviews basic results from perturbation theory, which allow one to compute such derivatives, and shows how they can be used to obtain novel edge detectors for matrix-valued images. It is demonstrated that previous methods for edge detection in matrix-valued images are simplified by considering them in terms of eigenvalue derivatives. Moreover, eigenvalue derivatives are used to analyze and refine the recently proposed Log-Euclidean edge detector. Application examples focus on data from diffusion tensor magnetic resonance imaging (DT-MRI).
机译:本文介绍了特征值导数作为识别矩阵值图像中存在的不同类型边缘的基本工具。它回顾了扰动理论的基本结果,该理论允许人们计算这样的导数,并说明如何将其用于获得矩阵值图像的新型边缘检测器。证明了通过根据特征值导数考虑矩阵值图像中的边缘检测的先前方法得到了简化。此外,特征值导数用于分析和完善最近提出的对数-欧几里德边缘检测器。应用示例集中于来自扩散张量磁共振成像(DT-MRI)的数据。

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