Building pose detection for the characterization of reinforced concrete buildings

Lissette Iturburu, Xiaoyu Liu, Xin Zhang, Benjamin E. Wogen, Juan Nicolas Villamizar, Shirley J. Dyke, Julio Ramirez, Jongseong Brad Choi, Gianella Valencia, Sergio M. Alcocer
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Abstract

SummaryThe automated identification of building characteristics for seismic vulnerability remains a challenge for governments due to the high number of buildings in cities. The diverse architectural styles of these buildings complicate the automated identification of building information (e.g., number of stories, structural system, and material type). Deep learning techniques lose accuracy as they generalize information, while the visual contents of a building exhibit a considerable range and diversity. This study leverages the pose detection technique to tackle such issues by focusing on a common construction style: reinforced concrete buildings representing columns, beams, or floors on the façade. With an aim to enable the assessment of seismic vulnerability, the technique developed herein is conceived for buildings with up to six stories that are more likely to be moment‐frame buildings. The AI‐enabled proposed framework starts with collecting building images and categorizing those containing this specific building type. A bounding box detector is then used to isolate building facades, for the subsequent identification of the structural frame with the High‐Resolution Network (HR‐Net). For demonstration, we illustrate this technique by identifying the structural frame on concrete buildings with a sample dataset developed based on buildings found in Mexico City in a pre‐earthquake event state.
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检测建筑物姿态以确定钢筋混凝土建筑物的特征
摘要由于城市中的建筑物数量众多,自动识别建筑物的地震脆弱性特征仍然是政府面临的一项挑战。这些建筑物的建筑风格多种多样,使得建筑物信息(如层数、结构系统和材料类型)的自动识别变得更加复杂。深度学习技术在概括信息时会失去准确性,而建筑物的视觉内容却呈现出相当大的范围和多样性。本研究利用姿态检测技术来解决这些问题,重点关注一种常见的建筑风格:钢筋混凝土建筑,在外立面上表现柱、梁或楼层。为了对地震脆弱性进行评估,本文开发的技术适用于最多六层的建筑,这些建筑更有可能是矩形框架建筑。所提出的人工智能框架首先要收集建筑图像,并对包含这种特定建筑类型的图像进行分类。然后使用边界框检测器隔离建筑物外墙,以便随后使用高分辨率网络(HR-Net)识别结构框架。为了进行演示,我们使用基于墨西哥城地震前状态下的建筑物开发的样本数据集来识别混凝土建筑物的结构框架,以此来说明这项技术。
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