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    Detecting and Geolocating City-Scale Soft-Story Buildings by Deep Machine Learning for Urban Seismic Resilience

    Source: Natural Hazards Review:;2021:;Volume ( 023 ):;issue: 001::page 04021062
    Author:
    Rony Kalfarisi
    ,
    Maadh Hmosze
    ,
    Zheng Yi Wu
    DOI: 10.1061/(ASCE)NH.1527-6996.0000541
    Publisher: ASCE
    Abstract: Seismic resilience is of great concern and vital importance for cities in earthquake zones. It is not only desirable but also mandatory for the cities to prepare an emergency response plan for possible seismic events. One important task is to identify the seismic vulnerable buildings, e.g., soft-story (SS) buildings. The identified SS buildings can be retrofitted to minimize the risk of possible damage and the mitigation plan can be made accordingly to allocate the needed resources to the vulnerable buildings when earthquake strikes. However, it is time-consuming and costly for structural engineers to identify SS buildings manually by walking through each street. This paper presents an integrated approach for automatically detecting and geolocating SS buildings at a city scale. The approach proceeds in multiple steps, including (1) obtaining a list of addresses of engineer-identified SS buildings in city of Santa Monica, CA; (2) extracting the Google Street View images of the SS buildings; (3) labeling the SS building in the images; (4) training a deep convolutional neural network with the annotated images; and (5) testing the trained model on an independent image data set. The detected SS buildings are geocoded in Google map for users to verify the results quickly and virtually.
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      Detecting and Geolocating City-Scale Soft-Story Buildings by Deep Machine Learning for Urban Seismic Resilience

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4282173
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    contributor authorRony Kalfarisi
    contributor authorMaadh Hmosze
    contributor authorZheng Yi Wu
    date accessioned2022-05-07T20:14:56Z
    date available2022-05-07T20:14:56Z
    date issued2021-12-11
    identifier other(ASCE)NH.1527-6996.0000541.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4282173
    description abstractSeismic resilience is of great concern and vital importance for cities in earthquake zones. It is not only desirable but also mandatory for the cities to prepare an emergency response plan for possible seismic events. One important task is to identify the seismic vulnerable buildings, e.g., soft-story (SS) buildings. The identified SS buildings can be retrofitted to minimize the risk of possible damage and the mitigation plan can be made accordingly to allocate the needed resources to the vulnerable buildings when earthquake strikes. However, it is time-consuming and costly for structural engineers to identify SS buildings manually by walking through each street. This paper presents an integrated approach for automatically detecting and geolocating SS buildings at a city scale. The approach proceeds in multiple steps, including (1) obtaining a list of addresses of engineer-identified SS buildings in city of Santa Monica, CA; (2) extracting the Google Street View images of the SS buildings; (3) labeling the SS building in the images; (4) training a deep convolutional neural network with the annotated images; and (5) testing the trained model on an independent image data set. The detected SS buildings are geocoded in Google map for users to verify the results quickly and virtually.
    publisherASCE
    titleDetecting and Geolocating City-Scale Soft-Story Buildings by Deep Machine Learning for Urban Seismic Resilience
    typeJournal Paper
    journal volume23
    journal issue1
    journal titleNatural Hazards Review
    identifier doi10.1061/(ASCE)NH.1527-6996.0000541
    journal fristpage04021062
    journal lastpage04021062-12
    page12
    treeNatural Hazards Review:;2021:;Volume ( 023 ):;issue: 001
    contenttypeFulltext
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