Reconstruction of a continuous surface of two-dimensional manifold from its raw, discrete point cloud observation is a long-standing problem. The problem is technically ill-posed, and becomes more difficult considering that various sensing imperfections would appear in the point clouds obtained by practical depth scanning. In literature, a rich set of methods has been proposed, and reviews of existing methods are also provided. However, existing reviews are short of thorough investigations on a common benchmark. The present paper aims to review and benchmark existing methods in the new era of deep learning surface reconstruction. To this end, we contribute a large-scale benchmarking dataset consisting of both synthetic and real-scanned data; the benchmark includes object- and scene-level surfaces and takes into account various sensing imperfections that are commonly encountered in practical depth scanning. We conduct thorough empirical studies by comparing existing methods on the constructed benchmark, and pay special attention on robustness of existing methods against various scanning imperfections; we also study how different methods generalize in terms of reconstructing complex surface shapes. Our studies help identify the best conditions under which different methods work, and suggest some empirical findings. For example, while deep learning methods are increasingly popular, our systematic studies suggest that, surprisingly, a few classical methods perform even better in terms of both robustness and generalization; our studies also suggest that the practical challenges of misalignment of point sets from multi-view scanning, missing of surface points, and point outliers remain unsolved by all the existing surface reconstruction methods. We expect that the benchmark and our studies would be valuable both for practitioners and as a guidance for new innovations in future research.
翻译:从原始的、离散的云层观测中不断重建二维多元体的表面是一个长期存在的问题。 这个问题在技术上是不正确的,而且由于通过实际深度扫描获得的点云中会出现各种感知不完善之处,这个问题变得更加困难。 在文献中,提出了一套丰富的方法,并提供了现有方法的审查。 但是,现有的审查没有彻底调查共同基准,而没有彻底调查共同基准。本文件旨在审查并衡量在深层学习地表重建新时代的现有方法。为此,我们提供了一个由合成和真实扫描数据组成的大规模基准基准数据集;基准包括目标层和场景层表面,并考虑到在实际深度扫描中常见的各种感知不完善之处。我们通过比较现有基准的现有方法,进行彻底的经验性研究,特别注意现有方法的稳健性。我们的研究旨在从复杂的地表面结构的重建中归纳出各种不同的方法。我们的研究有助于确定不同方法工作的最佳条件,并提出一些经验性结论。例如,即使深层次的地表层研究,从实际深度研究的角度,也表明我们现有方法的准确性研究的准确性,也表明我们现有方法的准确性方法的准确性。