Flanders Make, 3001 Heverlee, Belgium.
Flanders Innovation & Entrepreneurship (VLAIO), 1030 Brussel, Belgium.
Sensors (Basel). 2020 Dec 3;20(23):6916. doi: 10.3390/s20236916.
The extraction of permanent structures (such as walls, floors, and ceilings) is an important step in the reconstruction of building interiors from point clouds. These permanent structures are, in general, assumed to be planar. However, point clouds from building interiors often also contain clutter with planar surfaces such as furniture, cabinets, etc. Hence, not all planar surfaces that are extracted belong to permanent structures. This is undesirable as it can result in geometric errors in the reconstruction. Therefore, it is important that reconstruction methods can correctly detect and extract all permanent structures even in the presence of such clutter. We propose to perform semantic scene completion using deep learning, prior to the extraction of permanent structures to improve the reconstruction results. For this, we started from the ScanComplete network proposed by Dai et al. We adapted the network to use a different input representation to eliminate the need for scanning trajectory information as this is not always available. Furthermore, we optimized the architecture to make inference and training significantly faster. To further improve the results of the network, we created a more realistic dataset based on real-life scans from building interiors. The experimental results show that our approach significantly improves the extraction of the permanent structures from both synthetically generated as well as real-life point clouds, thereby improving the overall reconstruction results.
从点云中重建建筑物内部时,提取永久结构(如墙壁、地板和天花板)是一个重要步骤。这些永久结构通常被假定为平面。然而,来自建筑物内部的点云通常也包含有平面表面的杂物,如家具、柜子等。因此,并非所有提取的平面都属于永久结构。这是不理想的,因为它可能导致重建中的几何误差。因此,重要的是,重建方法即使在存在这种杂物的情况下,也能够正确检测和提取所有的永久结构。我们建议在提取永久结构之前使用深度学习进行语义场景补全,以改善重建结果。为此,我们从 Dai 等人提出的 ScanComplete 网络开始。我们对网络进行了调整,使用了不同的输入表示,以消除对扫描轨迹信息的需求,因为并非总是可以获得这种信息。此外,我们优化了架构,以使推理和训练速度显著提高。为了进一步提高网络的结果,我们根据建筑物内部的真实扫描创建了一个更真实的数据集。实验结果表明,我们的方法显著提高了从合成和真实点云中提取永久结构的能力,从而改善了整体重建结果。