Median-Tree: An Efficient Counterpart of Tree-of-Shapes

Behzad Mirmahboub, D. S. Maia, François Merciol, S. Lefèvre
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Abstract

Abstract Representing an image through a tree structure as provided with a morphological hierarchy enables efficient image analysis and processing methods operating directly on the tree structure. Max-tree and min-tree can be built with efficient algorithms but they only focus on brighter and darker components of the image respectively. Conversely, the Tree-of-Shapes is a self-complementary image representation that provides access to all regional extrema of the image (both brighter and darker components), but its computation is more time-consuming. In this paper, we introduce a new, simple and efficient tree structure called median-tree. It relies on a median image that is straightforwardly constructed by subtracting the median pixel value from an image to decompose it into positive and negative parts. The median tree can then be obtained by applying the efficient max-tree algorithms available in the literature on this median image. We show through theoretical and experimental studies that the median-tree offers similar characteristics to the Tree-of-Shapes, but comes with a considerably lower construction complexity.
中间树:形状树的有效对应物
通过具有形态层次结构的树状结构表示图像,可以实现直接在树状结构上操作的高效图像分析和处理方法。Max-tree和min-tree可以用高效的算法构建,但它们分别只关注图像中较亮和较暗的部分。相反,形状树是一种自互补的图像表示,它提供了对图像的所有区域极值的访问(包括明亮和黑暗的组件),但它的计算更耗时。本文引入了一种新的简单高效的树形结构——中间树。它依赖于一个中位数图像,直接从图像中减去中位数像素值,将其分解为正、负部分。然后可以通过在这个中位数图像上应用文献中可用的高效最大树算法来获得中位数树。我们通过理论和实验研究表明,中值树提供了与形状树相似的特征,但具有相当低的构造复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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