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Random walkers on morphological trees: A segmentation paradigm

机译:在形态学树上随机步行者:分割范式

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摘要

The problem of image segmentation is often considered in the framework of graphs. In this context, two main paradigms exist: in the first, the vertices of a non-directed graph represent the pixels (leading e.g. to the watershed, the random walker or the graph cut approaches); in the second, the vertices of a directed graph represent the connected regions, leading to the so-called morphological trees (e.g. the componenttrees or the trees of shapes). Various approaches have been proposed for carrying out segmentation from images modeled by such morphological trees, by computing cuts of these trees or by selecting relevant nodes from descriptive attributes. In this article, we propose a new way of carrying out segmentation from morphological trees. Our approach is dedicated to take advantage of the morphological tree of an image, enriched by multiple attributes in each node, by using maximally stable extremal regions and random walker paradigms for defining an optimal cut leading to a final segmentation. Experiments, carried out on multimodal medical images emphasize the potential relevance of this approach. (C) 2020 Elsevier B.V. All rights reserved.
机译:图像分割的问题通常被认为是图形的框架中。在这种情况下,存在两个主要范例:首先,非定向图的顶点代表像素(前导例如,到流域,随机步行者或图形切割方法);在第二中,定向图的顶点表示连接区域,导致所谓的形态树(例如,组件树或形状的树木)。已经提出了通过计算这些树木的切割或通过从描述性属性中选择相关节点来执行由这种形态树建模的图像进行分割的各种方法。在本文中,我们提出了一种从形态学树分割的新方式。我们的方法专用于利用每个节点中的多个属性富集的图像的形态树,通过使用最大稳定的极值区域和随机步行者范例来定义导致最终分割的最佳切割。在多式化医学图像上进行的实验强调了这种方法的潜在相关性。 (c)2020 Elsevier B.v.保留所有权利。

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