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Practical shape analysis and segmentation methods for point cloud models

机译:点云模型的实用形状分析和分割方法

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Current point cloud processing algorithms do not have the capability to automatically extract semantic information from the observed scenes, except in very specialized cases. Furthermore, existing mesh analysis paradigms cannot be directly employed to automatically perform typical shape analysis tasks directly on point cloud models.We present a potent framework for shape analysis, similarity and segmentation of noisy point cloud models for real objects of engineering interest, models that may be incomplete. The proposed framework relies on spectral methods and the heat diffusion kernel to construct compact shape signatures, and we show that the framework supports a variety of clustering techniques that have traditionally been applied only on mesh models. We developed and implemented one practical and convergent estimate of the Laplace-Beltrami operator for point clouds as well as a number of clustering techniques adapted to work directly on point clouds to produce geometric features of engineering interest. The key advantage of this framework is that it supports practical shape analysis capabilities that operate directly on point cloud models of objects without requiring surface reconstruction or global meshing. We show that the proposed technique is robust against typical noise present in possibly incomplete point clouds, and segment point clouds scanned by depth cameras (e.g. Kinect) into semantically-meaningful sub-shapes. (C) 2018 Elsevier B.V. All rights reserved.
机译:除了非常特殊的情况外,当前点云处理算法不具有从观察到的场景中自动提取语义信息的能力。此外,现有的网格分析范例无法直接用于直接在点云模型上自动执行典型的形状分析任务。不完整。所提出的框架依靠光谱方法和热扩散核来构建紧凑的形状特征,并且我们证明了该框架支持传统上仅应用于网格模型的多种聚类技术。我们针对点云开发并实施了Laplace-Beltrami算子的一种实用且收敛的估计,并采用了多种聚类技术,这些技术可直接在点云上工作以产生具有工程兴趣的几何特征。该框架的主要优势在于,它支持实用的形状分析功能,这些功能可直接在对象的点云模型上运行,而无需表面重建或全局网格划分。我们表明,提出的技术对于可能存在不完整点云的典型噪声具有鲁棒性,并且可以将深度相机(例如Kinect)扫描的点云分割成语义上有意义的子形状。 (C)2018 Elsevier B.V.保留所有权利。

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