A building imagery database for the calibration of machine learning algorithms

Vitor Silva, Romain Sousa, Feliz Ribeiro Gouveia, Jorge Lopes, Maria Guerreiro
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Abstract

In the last decades, most efforts to catalog and characterize the built environment for multi-hazard risk assessment have focused on the exploration of census data, cadastral data sets, and local surveys. Typically, these sources of information are not updated regularly and lack sufficient information to characterize the seismic vulnerability of the building stock. Some recent efforts have demonstrated how machine learning algorithms can be used to automatically recognize specific architectural and structural features of buildings. However, such methods require large sets of labeled images to train, verify, and test the algorithms. This article presents a database of 5276 building images from a parish in Lisbon (Alvalade), whose buildings have been classified according to a uniform taxonomy. This database can be used for the testing and calibration of machine learning algorithms, as well as for the direct assessment of earthquake risk in Alvalade. The data are accessible through an open Github repository (DOI: 10.5281/zenodo.7625940).
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用于校准机器学习算法的建筑图像数据库
在过去几十年中,为进行多灾害风险评估而对建筑环境进行编目和特征描述的大多数工作都集中在对人口普查数据、地籍数据集和地方调查的探索上。通常情况下,这些信息来源不会定期更新,缺乏足够的信息来描述建筑群的抗震脆弱性。最近的一些研究表明,机器学习算法可用于自动识别建筑物的特定建筑和结构特征。然而,这些方法需要大量的标注图像集来训练、验证和测试算法。本文介绍了一个包含 5276 张建筑图像的数据库,这些图像来自里斯本的一个教区(阿尔瓦拉德),其中的建筑已根据统一的分类标准进行了分类。该数据库可用于测试和校准机器学习算法,以及直接评估阿尔瓦拉德的地震风险。这些数据可通过开放的 Github 存储库访问(DOI: 10.5281/zenodo.7625940)。
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