Learning implicit surface directly from raw data recently has become a very attractive representation method for 3D reconstruction tasks due to its excellent performance. However, as the raw data quality deteriorates, the implicit functions often lead to unsatisfactory reconstruction results. To this end, we propose a novel edge-preserving implicit surface reconstruction method, which mainly consists of a differentiable Laplican regularizer and a dynamic edge sampling strategy. Among them, the differential Laplican regularizer can effectively alleviate the implicit surface unsmoothness caused by the point cloud quality deteriorates; Meanwhile, in order to reduce the excessive smoothing at the edge regions of implicit suface, we proposed a dynamic edge extract strategy for sampling near the sharp edge of point cloud, which can effectively avoid the Laplacian regularizer from smoothing all regions. Finally, we combine them with a simple regularization term for robust implicit surface reconstruction. Compared with the state-of-the-art methods, experimental results show that our method significantly improves the quality of 3D reconstruction results. Moreover, we demonstrate through several experiments that our method can be conveniently and effectively applied to some point cloud analysis tasks, including point cloud edge feature extraction, normal estimation,etc.
翻译:最近,从原始数据直接学习隐含表面已成为3D重建任务的一个非常有吸引力的代表性方法,因为其表现优异。然而,随着原始数据质量的恶化,隐含功能往往导致重建结果不尽人意。为此,我们提出一种新的边缘保护隐含表面重建方法,主要包括一种不同的Laplican正规化器和动态边缘取样战略。其中,差分的Laclican常规化器可以有效地减轻点云质量恶化造成的隐含表面不毛性;同时,为了减少隐含的乌面边缘区域的过度平滑,我们提出了在点云尖边缘取样的动态边缘提取战略,这可以有效地避免拉普丽西亚常规化器在所有地区的平滑。最后,我们将它们与一个简单的固定化术语结合起来,用于稳健隐含的表面重建。与最先进的方法相比,实验结果表明,我们的方法大大改进了3D重建结果的质量。此外,我们通过若干实验证明,我们的方法可以方便和有效地应用于某些点云层分析任务,包括点云端特征的提取、正常估计。