This paper presents an explore-and-classify framework for structured architectural reconstruction from an aerial image. Starting from a potentially imperfect building reconstruction by an existing algorithm, our approach 1) explores the space of building models by modifying the reconstruction via heuristic actions; 2) learns to classify the correctness of building models while generating classification labels based on the ground-truth, and 3) repeat. At test time, we iterate exploration and classification, seeking for a result with the best classification score. We evaluate the approach using initial reconstructions by two baselines and two state-of-the-art reconstruction algorithms. Qualitative and quantitative evaluations demonstrate that our approach consistently improves the reconstruction quality from every initial reconstruction.
翻译:本文从空中图像为结构性建筑重建提供了一个探索和分类框架。从现有算法可能不完善的建筑重建开始,我们的方针 1 探讨建筑模型的空间,通过湿度行动修改重建;2 学习建筑模型的正确性,同时根据地面真相制作分类标签;3 重复。试验时,我们反复勘探和分类,寻求最佳分类分数的结果。我们用两个基线和两个最先进的重建算法来评估初步重建方法。 定性和定量评估表明,我们的方法在每次初步重建中都不断提高重建质量。