sat2Map:从二维卫星图像重建三维建筑屋顶

Yoones Rezaei, Stephen Lee
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摘要

三维(3D)城市模型因其在灾害管理、能源管理和太阳能潜力分析等许多应用案例中的应用而备受关注。然而,生成这些建筑物的三维模型需要激光雷达数据,而收集激光雷达数据的成本通常很高。因此,激光雷达数据并不经常更新,而且在美国许多地区并不广泛使用。因此,基于这些激光雷达数据的三维模型要么已经过时,要么仅限于那些有数据可用的地区。相比之下,卫星图像可以免费获取,而且更新频繁。我们提出的 sat2Map 是一种基于深度学习的新方法,可直接从单张二维卫星图像预测建筑物屋顶的几何形状和高度。我们的方法首先使用 sat2pc,通过整合两个不同的损失函数(倒角距离和地球移动距离)来预测点云,从而获得兼顾整体结构和更精细细节的三维点云输出。此外,我们还引入了高度估算模型 sat2height,该模型可估算预测点云的高度,从而生成给定位置的最终三维建筑结构。我们在建筑屋顶数据集上广泛评估了我们的模型,并进行了消融研究以分析其性能。结果表明,sat2Map 的性能始终优于现有的基线方法至少 18.6%。此外,我们还表明,我们的细化模块显著提高了整体性能,产生了更精确、更精细的三维输出。我们的 sat2height 模型在预测高度参数方面具有很高的准确性,而且误差率很低。此外,我们的评估结果表明,我们可以在保留建筑物整体结构的前提下,以平均绝对误差小于 30 厘米的中位数估算建筑物高度。
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sat2Map: Reconstructing 3D Building Roof from 2D Satellite Images
Three-dimensional (3D) urban models have gained interest because of their applications in many use cases, such as disaster management, energy management, and solar potential analysis. However, generating these 3D representations of buildings require lidar data, which is usually expensive to collect. Consequently, the lidar data are not frequently updated and are not widely available for many regions in the US. As such, 3D models based on these lidar data are either outdated or limited to those locations where the data is available. In contrast, satellite images are freely available and frequently updated. We propose sat2Map , a novel deep learning-based approach that predicts building roof geometries and heights directly from a single 2D satellite image. Our method first uses sat2pc to predict the point cloud by integrating two distinct loss functions, Chamfer Distance and Earth Mover’s Distance, resulting in a 3D point cloud output that balances overall structure and finer details. Additionally, we introduce sat2height , a height estimation model that estimates the height of the predicted point cloud to generate the final 3D building structure for a given location. We extensively evaluate our model on a building roof dataset and conduct ablation studies to analyze its performance. Our results demonstrate that sat2Map consistently outperforms existing baseline methods by at least 18.6%. Furthermore, we show that our refinement module significantly improves the overall performance, yielding more accurate and fine-grained 3D outputs. Our sat2height model demonstrates a high accuracy in predicting height parameters with a low error rate. Furthermore, our evaluation results show that we can estimate building heights with a median mean absolute error of less than 30 cm while still preserving the overall structure of the building.
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