Identification of Dangerous Rural Houses Using Oblique Photogrammetry and Photo Recognition Technology

Yin Liu, Fangqiang Yu, Jinglin Xu, Peikang Xin
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Abstract

Indentify dangerous houses in rural areas isn’t very efficient, considering the large workload to visit the rural area, patchy and untimely manual document’s registration management. This study first uses UAV oblique photography technology to quickly obtain high-resolution aerial photographic images of villages and reconstruct three-dimensional reality models. Then, based on the YOLOv5 algorithm, the features of dangerous houses in aerial photography images are automatically detected, and the features of dangerous houses are mapped to the real 3D model to accurately locate the dangerous buildings. Finally, a digital management platform for rural dangerous houses is developed to support rural managers in identifying, measuring and tracking dangerous houses. The application results in a village along the coast of southern Fujian province showed that the accuracy rate of the final dangerous house screening rate of this method was 92%, and the coverage rate was 95%, which could greatly improve the efficiency, accuracy and coverage of dangerous house screening and reduce the workload of manual screening; and improve management efficiency through platform-based and visual methods.
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利用倾斜摄影测量和照片识别技术识别农村危房
农村危房识别工作效率不高,主要原因是查房工作量大,手工文件登记管理不完整、不及时。本研究首先利用无人机倾斜摄影技术,快速获取高分辨率航拍村庄图像,重建三维现实模型。然后,基于YOLOv5算法,自动检测航拍图像中的危险房屋特征,并将危险房屋特征映射到真实的三维模型中,对危险建筑进行精确定位。最后,开发了农村危房数字化管理平台,支持农村管理者对危房进行识别、测量和跟踪。在闽南沿海某村的应用结果表明,该方法最终的危房筛查准确率为92%,覆盖率为95%,可大大提高危房筛查的效率、准确性和覆盖率,减少人工筛查的工作量;通过平台化和可视化的方式提高管理效率。
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