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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >Fuzzy and possibilistic shell clustering algorithms and their application to boundary detection and surface approximation. II
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Fuzzy and possibilistic shell clustering algorithms and their application to boundary detection and surface approximation. II

机译:模糊和可能的壳聚类算法及其在边界检测和表面近似中的应用。 II

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Shell clustering algorithms are ideally suited for computer vision tasks such as boundary detection and surface approximation, particularly when the boundaries have jagged or scattered edges and when the range data is sparse. This is because shell clustering is insensitive to local aberrations, it can be performed directly in image space, and unlike traditional approaches it does assume dense data and does not use additional features such as curvatures and surface normals. The shell clustering algorithms introduced in Part I of this paper assume that the number of clusters is known, however, which is not the case in many boundary detection and surface approximation applications. This problem can be overcome by considering cluster validity. We introduce a validity measure called surface density which is explicitly meant for the type of applications considered in this paper, we show through theoretical derivations that surface density is relatively invariant to size and partiality (incompleteness) of the clusters. We describe unsupervised clustering algorithms that use the surface density measure and other measures to determine the optimum number of shell clusters automatically, and illustrate the application of the proposed algorithms to boundary detection in the case of intensity images and to surface approximation in the case of range images.
机译:Shell聚类算法非常适合计算机视觉任务,例如边界检测和表面逼近,尤其是当边界具有锯齿状或分散的边缘并且距离数据稀疏时。这是因为壳聚类对局部像差不敏感,可以直接在图像空间中执行,并且与传统方法不同,它确实假设了密集数据并且不使用诸如曲率和表面法线之类的附加功能。本文第一部分介绍的壳聚类算法假定聚类的数目是已知的,但是在许多边界检测和表面近似应用中却并非如此。通过考虑群集有效性可以解决此问题。我们引入了一种称为表面密度的有效性度量,该有效性度量明确针对本文所考虑的应用程序类型,通过理论推导表明,表面密度相对于簇的大小和局部性(不完全性)相对不变。我们描述了使用表面密度度量和其他度量来自动确定最佳壳簇数量的无监督聚类算法,并说明了所提出的算法在强度图像情况下的边界检测以及在范围情况下的表面近似的应用图片。

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