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Computational complexity analysis of the graph extraction algorithm for volumetric segmentation method

机译:体积分割法图提取算法的计算复杂度分析

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The problem of partitioning images into homogenous regions or semantic entities is a basic problem for identifying relevant objects. Visual segmentation is related to some semantic concepts because certain parts of a scene are pre-attentively distinctive and have a greater significance than other parts. Unfortunately there are huge of papers for planar images and segmentation methods and most graph-based for planar images and very few papers for volumetric segmentation methods. The major concept used in graph-based volumetric segmentation method is the concept of homogeneity of regions and thus the edge weights are based on color distance. A huge number of approaches to segmentation are based on finding compact regions in some feature space. A recent technique using feature space regions first transforms the data by smoothing it in a way that preserves boundaries between regions. In this paper we extend our previous papers for planar images by adding a new step in the volumetric segmentation algorithm that allows us to determine regions closer to it. The key to the whole algorithm of volumetric segmentation is the honeycomb. Then the volumetric segmentation module creates virtual cells of prisms with tree-hexagonal structure defined on the set of the image voxels of the input spatial image and a spatial triangular grid graph having tree-hexagons as cells of vertices. The computational complexity analysis shows that our volumetric segmentation methods are linear.
机译:将图像划分为同质区域或语义实体的问题是用于识别相关对象的基本问题。视觉分割与某些语义概念有关,因为场景的某些部分在注意力上是独特的,并且比其他部分具有更大的意义。不幸的是,有大量关于平面图像和分割方法的论文,而大多数基于图的平面图像和体积分割方法的论文很少。基于图的体积分割方法中使用的主要概念是区域同质性的概念,因此边缘权重基于颜色距离。大量的分割方法是基于在某些特征空间中找到紧凑区域的。使用特征空间区域的最新技术首先通过保留区域之间边界的方式对数据进行平滑处理来转换数据。在本文中,我们通过在体积分割算法中增加一个新步骤来扩展先前针对平面图像的论文,从而使我们能够确定更接近它的区域。整个体积分割算法的关键是蜂窝。然后,体积分割模块创建在输入空间图像的图像体素集合上定义的具有树六边形结构的棱镜虚拟单元以及具有树六边形作为顶点单元的空间三角形网格图。计算复杂度分析表明,我们的体积分割方法是线性的。

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