We present a fully automatic approach for reconstructing compact 3D building models from large-scale airborne point clouds. A major challenge of urban reconstruction from airborne LiDAR point clouds lies in that the vertical walls are typically missing. Based on the observation that urban buildings typically consist of planar roofs connected with vertical walls to the ground, we propose an approach to infer the vertical walls directly from the data. With the planar segments of both roofs and walls, we hypothesize the faces of the building surface, and the final model is obtained by using an extended hypothesis-and-selection-based polygonal surface reconstruction framework. Specifically, we introduce a new energy term to encourage roof preferences and two additional hard constraints into the optimization step to ensure correct topology and enhance detail recovery. Experiments on various large-scale airborne LiDAR point clouds have demonstrated that the method is superior to the state-of-the-art methods in terms of reconstruction accuracy and robustness. In addition, we have generated a new dataset with our method consisting of the point clouds and 3D models of 20k real-world buildings. We believe this dataset can stimulate research in urban reconstruction from airborne LiDAR point clouds and the use of 3D city models in urban applications.
翻译:我们提出了一个完全自动的方法来重建大型空中云层的3D小型建筑模型。来自空中的LIDAR点云的城市重建主要挑战在于垂直墙通常缺失。基于城市建筑通常由垂直墙到地面的平板屋顶组成这一观察,我们提议了一个方法来直接从数据中推断垂直墙壁。由于屋顶和墙壁的平板部分,我们变形了建筑表面的面部,最后模型是通过使用一个扩大的假设和选择基础多边地表重建框架获得的。具体地说,我们引入一个新的能源术语来鼓励屋顶偏好和两个额外的硬性限制,以优化步骤确保纠正地形并增强详细的恢复。关于大型LIDAR点云的实验表明,这种方法在重建准确性和稳健性方面优于最先进的方法。此外,我们生成了一个新的数据集,我们的方法包括基于点云和基于选择的20k个现实世界建筑的3D模型。我们认为,这一数据设置可以刺激城市重建中从空中的3D云层和城市模型中进行三D级城市重建的研究。</s>