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Exploring And Exploiting The Structure Of Saddle Points In Gaussian Scale Space

机译:探索和利用高斯尺度空间中的鞍点结构

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When an image is filtered with a Gaussian of width a and a is considered as an extra dimension,the image is extended to a Gaussian scale-space (CSS) image.In earlier work it was shown that the CSS-image contains an intensity-based hierarchical structure that can be represented as a binary ordered rooted tree.Key elements in the construction of the tree are iso-intensity manifolds and scale-space saddles.rnA scale-space saddle is a critical point in scale space.When it connects two different parts of an iso-intensity manifold,it is called "dividing",otherwise it is called "void".Each dividing scale-space saddle is connected to an extremum in the original image via a curve in scale space containing critical points.Using the nesting of the iso-intensity manifolds in the GSS-image and the dividing scale-space saddles,each extremum is connected to another extremum.In the tree structure,the dividing scale-space saddles form the connecting elements in the hierarchy: they are the nodes of the tree.The extrema of the image form the leaves,while the critical curves are represented as the edges.To identify the dividing scale-space saddles,a global investigation of the scale-space saddles and the iso-intensity manifolds through them is needed.rnIn this paper an overview of the situations that can occur is given.In each case it is shown how to distinguish between void and dividing scale-space saddles.Furthermore,examples are given,and the difference between selecting the dividing and the void scale-space saddles is shown.Also relevant geometric properties of GSS images are discussed,as well as their implications for algorithms used for the tree extraction.rnAs main result,it is not necessary to search through the whole GSS image to find regions related to each relevant scale-space saddle.This yields a considerable reduction in complexity and computation time,as shown in two examples.
机译:当使用宽度为a的高斯过滤图像并将其视为额外维度时,该图像将扩展为高斯比例空间(CSS)图像。在较早的工作中,已证明CSS图像包含一个强度为-基于树的层次结构,可以表示为二叉有序的根树。树的构造中的关键元素是等强度流形和比例空间鞍.rn比例空间鞍是比例空间的关键点,当它连接两个等强度流形的不同部分称为“分割”,否则称为“无效”。每个分割比例空间鞍通过包含临界点的比例空间中的曲线连接到原始图像的极值。等强度流形在GSS图像中的嵌套和划分的比例空间鞍,每个极值都连接到另一个极值。在树结构中,划分的尺度空间鞍形成层次结构中的连接元素:它们是的节点图像的极值由叶子形成,而临界曲线表示为边缘。要确定划分的比例空间鞍,需要对比例空间鞍和通过它们的等强度流形进行全局研究。 rn本文对可能发生的情况进行了概述。在每种情况下,都说明了如何区分空隙和划分尺度空间鞍。此外,还给出了示例,以及选择划分和空隙尺度之间的区别。讨论了空间鞍。还讨论了GSS图像的相关几何特性,以及其对用于树提取的算法的意义。作为主要结果,不必搜索整个GSS图像即可找到与每个相关图像相关的区域如两个示例所示,这大大降低了复杂度和计算时间。

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