Integrated edge and junction detection with the boundary tensor

U. Kothe
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引用次数: 37

Abstract

The boundaries of image regions necessarily consist of edges (in particular, step and roof edges), corners, and junctions. Currently, different algorithms are used to detect each boundary type separately, but the integration of the results into a single boundary representation is difficult. Therefore, a method for the simultaneous detection of all boundary types is needed. We propose to combine responses of suitable polar separable filters into what we will call the boundary tensor. The trace of this tensor is a measure of boundary strength, while the small eigenvalue and its difference to the large one represent corner/junction and edge strengths respectively. We prove that the edge strength measure behaves like a rotationally invariant quadrature filter. A number of examples demonstrate the properties of the new method and illustrate its application to image segmentation.
结合边界张量的边缘和结检测
图像区域的边界必然由边缘(特别是台阶边缘和屋顶边缘)、拐角和连接点组成。目前,不同的算法分别用于检测每种边界类型,但很难将结果集成到单一的边界表示中。因此,需要一种同时检测所有边界类型的方法。我们建议将合适的极性可分离滤波器的响应组合成我们称之为边界张量的东西。该张量的迹是边界强度的度量,而小特征值及其与大特征值的差值分别代表角/结和边缘强度。我们证明了边缘强度测量的行为就像一个旋转不变的正交滤波器。通过实例验证了该方法的性能,并说明了该方法在图像分割中的应用。
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