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Evaluation of Algorithms for Point Cloud Surface Reconstruction through the Analysis of Shape Parameters

机译:通过形状参数分析评估点云表面重建算法

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In computer graphics and visualization, reconstruction of a 3D surface from a point cloud is an important research area. As the surface contains information that can be measured, i.e. expressed in features, the application of surface reconstruction can be potentially important for application in bio-imaging. Opportunities in this application area are the motivation for this study. In the past decade, a number of algorithms for surface reconstruction have been proposed. Generally speaking, these methods can be separated into two categories: i.e., explicit representation and implicit approximation. Most of the aforementioned methods are firmly based in theory; however, so far, no analytical evaluation between these methods has been presented. The straightforward way of evaluation has been by convincing through visual inspection. Through evaluation we search for a method that can precisely preserve the surface characteristics and that is robust in the presence of noise. The outcome will be used to improve reliability in surface reconstruction of biological models. We, therefore, use an analytical approach by selecting features as surface descriptors and measure these features in varying conditions. We selected surface distance, surface area and surface curvature as three major features to compare quality of the surface created by the different algorithms. Our starting point has been ground truth values obtained from analytical shapes such as the sphere and the ellipsoid. In this paper we present four classical surface reconstruction methods from the two categories mentioned above, i.e. the Power Crust, the Robust Cocone, the Fourier-based method and the Poisson reconstruction method. The results obtained from our experiments indicate that Poisson reconstruction method performs the best in the presence of noise.
机译:在计算机图形学和可视化中,从点云重建3D表面是重要的研究领域。由于表面包含可以测量的信息,即以特征表示的信息,因此表面重建的应用对于生物成像中的应用可能具有潜在的重要性。该应用领域中的机会是这项研究的动机。在过去的十年中,已经提出了许多用于表面重建的算法。一般而言,这些方法可以分为两类:即显式表示和隐式近似。前面提到的大多数方法都在理论上有牢固的基础。但是,到目前为止,尚未提出这些方法之间的分析评估。评估的直接方法是通过目视检查令人信服。通过评估,我们寻求一种可以精确保留表面特性并且在存在噪声的情况下具有鲁棒性的方法。结果将用于提高生物模型表面重建的可靠性。因此,我们通过选择特征作为表面描述符来使用分析方法,并在变化的条件下测量这些特征。我们选择了表面距离,表面积和表面曲率作为三个主要特征,以比较不同算法创建的表面质量。我们的出发点是从诸如球体和椭球体之类的解析形状获得的地面真实值。在本文中,我们从上述两类中介绍了四种经典的表面重构方法,即Power Crust,鲁棒Cocone,基于Fourier的方法和Poisson重构方法。从我们的实验中获得的结果表明,在存在噪声的情况下,泊松重构方法表现最佳。

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