Single-view point cloud completion aims to recover the full geometry of an object based on only limited observation, which is extremely hard due to the data sparsity and occlusion. The core challenge is to generate plausible geometries to fill the unobserved part of the object based on a partial scan, which is under-constrained and suffers from a huge solution space. Inspired by the classic shadow volume technique in computer graphics, we propose a new method to reduce the solution space effectively. Our method considers the camera a light source that casts rays toward the object. Such light rays build a reasonably constrained but sufficiently expressive basis for completion. The completion process is then formulated as a point displacement optimization problem. Points are initialized at the partial scan and then moved to their goal locations with two types of movements for each point: directional movements along the light rays and constrained local movement for shape refinement. We design neural networks to predict the ideal point movements to get the completion results. We demonstrate that our method is accurate, robust, and generalizable through exhaustive evaluation and comparison. Moreover, it outperforms state-of-the-art methods qualitatively and quantitatively on MVP datasets.
翻译:单视点云的完成是为了在有限的观测基础上恢复一个物体的全部几何学,由于数据宽度和封闭性,这种观测极为困难。核心挑战是产生可信的几何学,以部分扫描为基础,填补未观测到的物体部分,部分扫描受限制,且有巨大的解答空间。在计算机图形中典型的影子体积技术的启发下,我们提出了一个新的方法来有效减少解决方案空间。我们的方法认为相机是射向该物体的光源。这些光线为完成该物体构建了合理限制但足够清晰的基础。完成过程随后形成一个点偏移优化问题。点在部分扫描时开始,然后移动到目标位置,每个点都有两种类型的移动:光线沿线的方向移动,并限制局部运动以完善形状。我们设计神经网络来预测理想点的移动,以获得完成结果。我们通过详尽的评估与比较来证明我们的方法是准确、稳健和可概括的。此外,它在质量和定量数据上超越了状态。