Fast and Robust Edge Extraction in Unorganized Point Clouds

Dena Bazazian, J. Casas, Javier Ruiz-Hidalgo
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引用次数: 89

Abstract

Edges provide important visual information in scene surfaces. The need for fast and robust feature extraction from 3D data is nowadays fostered by the widespread availability of cheap commercial depth sensors and multi-camera setups. This article investigates the challenge of detecting edges in surfaces represented by unorganized point clouds. Generally, edge recognition requires the extraction of geometric features such as normal vectors and curvatures. Since the normals alone do not provide enough information about the geometry of the cloud, further analysis of extracted normals is needed for edge extraction, such as a clustering method. Edge extraction through these techniques consists of several steps with parameters which depend on the density and the scale of the point cloud. In this paper we propose a fast and precise method to detect sharp edge features by analysing the eigenvalues of the covariance matrix that are defined by each point's k-nearest neighbors. Moreover, we evaluate quantitatively, and qualitatively the proposed methods for sharp edge extraction using several dihedral angles and well known examples of unorganized point clouds. Furthermore, we demonstrate the robustness of our approach in the noisier real-world datasets.
无组织点云快速鲁棒边缘提取
边缘在场景表面提供重要的视觉信息。如今,廉价的商业深度传感器和多摄像头设置的广泛应用促进了对3D数据快速、强大特征提取的需求。本文研究了在由无组织点云表示的表面中检测边缘的挑战。一般来说,边缘识别需要提取几何特征,如法向量和曲率。由于法线本身不能提供足够的云几何信息,因此需要对提取的法线进行进一步分析,以进行边缘提取,例如聚类方法。通过这些技术的边缘提取包括几个步骤,其参数取决于点云的密度和规模。本文提出了一种快速精确的方法,通过分析由每个点的k近邻定义的协方差矩阵的特征值来检测尖锐边缘特征。此外,我们定量和定性地评估了提出的尖锐边缘提取方法,使用几个二面角和众所周知的无组织点云的例子。此外,我们证明了我们的方法在嘈杂的现实世界数据集中的鲁棒性。
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