一种改进的最小生成树点云分割方法

M. Geetha, R. Rakendu
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引用次数: 13

摘要

随着Kinect等低成本3D传感硬件的发展,三维数字图像在医疗诊断、机器人等领域得到了广泛应用。图像分割是图像处理的难点之一。如果我们将深度通道与高度和宽度一起添加,问题就会变得简单。该算法采用最小生成树(MST)对点云进行分割。作为预处理步骤,首先进行一级聚类,得到一组杂乱的对象。使用基于距离和法线的MST对每个杂乱组进行更有限的分割。在我们的方法中,我们建立了每个聚类云的加权平面图,并构造了相应图的MST。利用法线的优势,我们可以把表面和物体分开。将该方法应用于不同的三维场景,并对结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved method for segmentation of point cloud using Minimum Spanning Tree
With the development of low-cost 3D sensing hardware such as the Kinect, three dimensional digital images have become popular in medical diagnosis, robotics etc. One of the difficult task in image processing is image segmentation. The problem become simpler if we add the depth channel along with height and width. The proposed algorithm uses Minimum Spanning Tree (MST) for the segmentation of point cloud. As a pre processing step, first level clustering is done which gives group of cluttered objects. Each of this cluttered group is subjected to more finite level of segmentation using MST based on distance and normal. In our method, we build a weighted planar graph of each of the clustered cloud and construct the MST of the corresponding graph. By taking the advantage of normal, we can separate the surface from the object. The proposed method is applied to different 3D scenes and the results are discussed.
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