Rapid visual screening of soft-story buildings from street view images using deep learning classification

被引:0
作者
Qian Yu
Chaofeng Wang
Frank McKenna
Stella X. Yu
Ertugrul Taciroglu
Barbaros Cetiner
Kincho H. Law
机构
[1] University of California,International Computer Science Institute
[2] University of California,Department of Civil and Environmental Engineering
[3] University of California,Civil and Environmental Engineering
[4] Stanford University,Civil and Environmental Engineering
来源
Earthquake Engineering and Engineering Vibration | 2020年 / 19卷
关键词
soft-story building; deep learning; CNN; rapid visual screening; street view image;
D O I
暂无
中图分类号
学科分类号
摘要
Rapid and accurate identification of potential structural deficiencies is a crucial task in evaluating seismic vulnerability of large building inventories in a region. In the case of multi-story structures, abrupt vertical variations of story stiffness are known to significantly increase the likelihood of collapse during moderate or severe earthquakes. Identifying and retrofitting buildings with such irregularities—generally termed as soft-story buildings—is, therefore, vital in earthquake preparedness and loss mitigation efforts. Soft-story building identification through conventional means is a labor-intensive and time-consuming process. In this study, an automated procedure was devised based on deep learning techniques for identifying soft-story buildings from street-view images at a regional scale. A database containing a large number of building images and a semi-automated image labeling approach that effectively annotates new database entries was developed for developing the deep learning model. Extensive computational experiments were carried out to examine the effectiveness of the proposed procedure, and to gain insights into automated soft-story building identification.
引用
收藏
页码:827 / 838
页数:11
相关论文
共 46 条
[1]  
Gebru T(2017)Using Deep Learning and Google Street View to Estimate the Demographic Makeup of Neighborhoods Across the United States Proceedings of the National Academy of Sciences 114 13108-13113
[2]  
Krause J(2018)Building Instance Classification Using Street View Images ISPRS Journal of Photogrammetry and Remote Sensing 145 44-59
[3]  
Wang Y(2018)Rapid Visual Screening Procedure of Existing Building Based on Statistical Analysis International Journal of Disaster Risk Reduction 28 720-730
[4]  
Chen D(2016)Urban Rat: New Tool for Virtual and Site-Specific Mobile Rapid Data Collection for Seismic Risk Assessment Journal of Computing in Civil Engineering 30 04015006-498
[5]  
Deng J(2017)Designsafe: New Cyberinfrastructure for Natural Hazards Engineering Natural Hazards Review 18 06017001-353
[6]  
Aiden EL(2013)Seismic Screening of Buildings Based on the 2010 National Building Code of Canada Canadian Journal of Civil Engineering 40 483-197
[7]  
FeiFei L(2010)Earthquake Vulnerability Assessment of Existing Buildings in Gandhidham and Adipur Cities Kachchh, Gujarat (India) European Journal of Scientific Research 41 336-625
[8]  
Kang J(2008)Seismic Screening of Public Facilities in Oregon’s Western Counties Practice Periodical on Structural Design and Construction 13 189-166
[9]  
Körner M(2018)A Hybrid Geotechnical and Geological Data-Based Framework for Multiscale Regional Liquefaction Hazard Mapping Géotechnique 68 614-undefined
[10]  
Wang Y(2017)On the Spatial Variability of Cpt-Based Geotechnical Parameters for Regional Liquefaction Evaluation Soil Dynamics and Earthquake Engineering 95 153-undefined