基于范例的点云三维形状分割

Rongqi Qiu, U. Neumann
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引用次数: 6

摘要

研究了点云表示中三维形状的自动分割问题。特别感兴趣的是真正分割吵闹的扫描,这是一个困难的问题在以前的作品。为了指导目标形状的分割,采用了一组相同类别的预分割样例形状。主要的思想是注册目标形状与范例形状分片刚性的方式,这部分在同样的刚性变换更有可能在同一段。为了实现这一目标,一组完整的候选人在第一阶段生成转换。然后,将每个转换视为一个标签,并在所有点上优化分配。转换标签和近邻转移部分标签,构成最终的目标形状的标签。该方法不依赖于高阶特征,因此对噪声具有鲁棒性,这可以在具有挑战性的数据集上的实验中得到证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exemplar-Based 3D Shape Segmentation in Point Clouds
This paper addresses the problem of automatic 3D shape segmentation in point cloud representation. Of particular interest are segmentations of noisy real scans, which is a difficult problem in previous works. To guide segmentation of target shape, a small set of pre-segmented exemplar shapes in the same category is adopted. The main idea is to register the target shape with exemplar shapes in a piece-wise rigid manner, so that pieces under the same rigid transformation are more likely to be in the same segment. To achieve this goal, an over-complete set of candidate transformations is generated in the first stage. Then, each transformation is treated as a label and an assignment is optimized over all points. The transformation labels, together with nearest-neighbor transferred segment labels, constitute final labels of target shapes. The method is not dependent on high-order features, and thus robust to noise as can be shown in the experiments on challenging datasets.
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