Hierarchical co-segmentation of 3D point clouds for indoor scene

Yan-Ting Lin
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引用次数: 2

Abstract

Segmentation of point clouds has been studied under a variety of scenarios. However, the segmentation of scanned point clouds for a clustered indoor scene remains significantly challenging due to noisy and incomplete data, as well as scene complexity. Based on the observation that objects in an indoor scene vary largely in scale but are typically supported by planes, we propose a co-segmentation approach. This technique utilizes the mutual agency between the point clouds captured at different times after the objects' poses change due to human actions. Hence, we hierarchically segment scenes from different times into patches and generate tree structures to store their relations. By iteratively clustering patches and co-analyzing them based on the relations between patches, we modify the tree structures and generate our results. To test the robustness of our method, we evaluate it on imperfectly scanned point clouds from a childroom, a bedroom, and two offices scenes.
室内场景三维点云分层共分割
在各种场景下,对点云的分割进行了研究。然而,由于数据的噪声和不完整以及场景的复杂性,对聚类室内场景的扫描点云分割仍然具有很大的挑战性。基于室内场景中物体在尺度上变化很大,但通常由平面支持的观察,我们提出了一种共同分割方法。这种技术利用了在物体姿势因人类行为而改变后,在不同时间捕获的点云之间的相互代理。因此,我们将不同时间的场景分层分割成小块,并生成树状结构来存储它们之间的关系。通过迭代聚类斑块,并根据斑块之间的关系进行共同分析,修改树结构,生成结果。为了测试我们的方法的稳健性,我们对来自儿童、卧室和两个办公室场景的不完美扫描点云进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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