基于兴趣点的三维点云分割可重复性研究

Joseph Lam, M. Greenspan
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引用次数: 10

摘要

使用3D点云作为输入数据的物体识别系统可能会受到局部信号衰减或混乱场景中的遮挡问题的影响。为了开发更稳健的方法来处理这些问题,本文通过基于提取可重复兴趣点的三维区域分割算法引入了可重复区域的概念。提出了一种利用提取的兴趣点重构的逐块边界曲线和区域分割自由形状物体三维图像的方法。设计了一个实验评估,以确认在各种现实场景中,包括混乱和部分遮挡的场景中,片段的重复性。在7个2.5D场景中测试了3个不同的3D自由形状物体,结果表明,在每个3D模型中选择的前15个区域中,每个场景平均记录了6个可重复分割的区域,其中至少有一个正确分割的区域。这表明高度可重复的区域可以定位并用于驱动3D数据中的鲁棒目标识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Repeatability of 3D Point Cloud Segmentation Based on Interest Points
Object recognition systems that use 3D point cloud as the input data are potentially subjected to the problems of signal attenuation at a local level, or occlusions in cluttered scenes. In an attempt to develop more robust methods in handling these problems, the present paper introduces the notion of repeatable regions through a 3D region segmentation algorithm based on the extraction of repeatable interest points. A segmentation method presented is presented which is capable of segmenting 3D images of free-form objects using piece-wise boundary curves and regions reconstructed from extracted interest points. An experimental evaluation was devised to confirm the repeatability of segments in various realistic scenes, including cluttered and partially occluded scene. Three different 3D free-form objects in seven 2.5D scenes were tested in the experiment, with results showing that out of the top 15 selected regions from each 3D model, an average of six repeatable segmented regions with at least one correctly segmented region were recorded for each scene. This shows that highly repeatable regions can be localized and used to drive robust object recognition in 3D data.
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