We introduce a novel learning-based, visibility-aware, surface reconstruction method for large-scale, defect-laden point clouds. Our approach can cope with the scale and variety of point cloud defects encountered in real-life Multi-View Stereo (MVS) acquisitions. Our method relies on a 3D Delaunay tetrahedralization whose cells are classified as inside or outside the surface by a graph neural network and an energy model solvable with a graph cut. Our model, making use of both local geometric attributes and line-of-sight visibility information, is able to learn a visibility model from a small amount of synthetic training data and generalizes to real-life acquisitions. Combining the efficiency of deep learning methods and the scalability of energy based models, our approach outperforms both learning and non learning-based reconstruction algorithms on two publicly available reconstruction benchmarks.
翻译:我们采用一种新的基于学习的、能见度的、地面重建方法,用于大型的、有缺陷的点云云云。我们的方法可以应对在现实生活中多视立体(MVS)采购中遇到的点云缺陷的规模和种类。我们的方法依赖于3D的四重体化,其细胞被一个图形神经网络归类为表面内外,而一种能源模型则通过一个图表切割而可溶解。我们的模式,既利用当地的几何特征,又利用直观的可见度信息,能够从少量的合成培训数据中学习一个能见度模型,并概括到现实生活中的获取。将深层学习方法的效率和以能源为基础的模型的可扩展性结合起来,我们的方法在两个公开的重建基准上,超越了学习和非学习的重建算法。