Hierarchical segmentation for unstructured and unfiltered range images

C. Aguiar, S. Druon, A. Crosnier
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引用次数: 3

Abstract

We present a method for the segmentation of unstructured and unfiltered 3D data. The core of this approach is based on the construction of a local neighborhood structure and its recursive subdivision. 3D points will be organized into groups according to their spatial proximity, but also to their similarity in the attribute space. Our method is robust to noise, missing data, and local anomalies thanks to the organization of the points into a minimal spanning tree in attribute space. We assume that the 3D image is composed of regions homogeneous according to some criterion (color, curvature, etc.), but no assumption about noise, nor spatial repartition/shape of the regions or points is made. Thus, this approach can be applied to a wide variety of segmentation problems, unlike most existing specialized methods. We demonstrate the performance of our algorithm with experimental results on real range images.
非结构化和未滤波范围图像的分层分割
提出了一种非结构化和非滤波三维数据的分割方法。该方法的核心是基于局部邻域结构的构建及其递归细分。三维点将根据它们在空间上的接近度以及它们在属性空间上的相似度进行分组。由于在属性空间中将点组织成最小生成树,该方法对噪声、缺失数据和局部异常具有鲁棒性。我们根据一些准则(颜色,曲率等)假设三维图像是由均匀的区域组成的,但不假设噪声,也不对区域或点进行空间重划分/形状。因此,与大多数现有的专门方法不同,这种方法可以应用于各种各样的分割问题。通过对真实距离图像的实验验证了算法的有效性。
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