Holistic Parameteric Reconstruction of Building Models from Point Clouds
Zhixin Li, Wenyuan Zhang, Jie Shan

TL;DR
This paper introduces a holistic parametric reconstruction method for building models from point clouds, leveraging deep learning and optimization to improve topological and geometric accuracy over traditional sequential methods.
Contribution
It presents a novel holistic approach combining deep neural network segmentation with simultaneous parameter optimization for building reconstruction from point clouds.
Findings
Achieved 83% accuracy in primitive classification with PointNet++.
Reconstructed buildings with an average point-surface distance of 0.08 meters.
Demonstrated efficiency and scalability on large urban LiDAR datasets.
Abstract
Building models are conventionally reconstructed by building roof points planar segmentation and then using a topology graph to group the planes together. Roof edges and vertices are then mathematically represented by intersecting segmented planes. Technically, such solution is based on sequential local fitting, i.e., the entire data of one building are not simultaneously participating in determining the building model. As a consequence, the solution is lack of topological integrity and geometric rigor. Fundamentally different from this traditional approach, we propose a holistic parametric reconstruction method which means taking into consideration the entire point clouds of one building simultaneously. In our work, building models are reconstructed from predefined parametric (roof) primitives. We first use a well-designed deep neural network to segment and identify primitives in the…
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