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    Crack Detection via Hierarchical Multiscale Feature Learning and Densely Connected Conditional Random Field

    Source: ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering:;2024:;Volume ( 010 ):;issue: 001::page 04023043-1
    Author:
    Liaogehao Chen
    ,
    Huaguang Zhu
    ,
    Jiali Li
    ,
    Chaojie Liang
    ,
    Zhenjun Zhang
    ,
    Yaonan Wang
    DOI: 10.1061/AJRUA6.RUENG-1102
    Publisher: ASCE
    Abstract: Crack analysis based on computer vision has become a common approach for crack detection and localization in civil infrastructure. In practice, many cracks show poor continuity, uneven gray levels, low contrast, complex topology, and background noise. These characteristics present significant difficulties for image-based crack detection. In this paper, we propose a novel framework that includes a deep fully convolutional network and densely connected conditional random field (dense CRF) to realize pixel-level crack detection in an end-to-end manner. The network learns and aggregates multilevel features at hierarchical convolutional stages. Specifically, the backbone of our network is novel self-attention modules with 1×1 convolution kernels for context information extraction across channels, and the network end with multiple parallel atrous convolution filters with different rate to capture objects and features at multiple scales. Finally, we combine the network output with a dense CRF to refine the final prediction results. The network in our study is trained and evaluated using three classical crack data sets. The experimental results clearly demonstrate that our method outperforms other approaches in terms of performance.
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      Crack Detection via Hierarchical Multiscale Feature Learning and Densely Connected Conditional Random Field

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4297899
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    • ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering

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    contributor authorLiaogehao Chen
    contributor authorHuaguang Zhu
    contributor authorJiali Li
    contributor authorChaojie Liang
    contributor authorZhenjun Zhang
    contributor authorYaonan Wang
    date accessioned2024-04-27T22:56:47Z
    date available2024-04-27T22:56:47Z
    date issued2024/03/01
    identifier other10.1061-AJRUA6.RUENG-1102.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4297899
    description abstractCrack analysis based on computer vision has become a common approach for crack detection and localization in civil infrastructure. In practice, many cracks show poor continuity, uneven gray levels, low contrast, complex topology, and background noise. These characteristics present significant difficulties for image-based crack detection. In this paper, we propose a novel framework that includes a deep fully convolutional network and densely connected conditional random field (dense CRF) to realize pixel-level crack detection in an end-to-end manner. The network learns and aggregates multilevel features at hierarchical convolutional stages. Specifically, the backbone of our network is novel self-attention modules with 1×1 convolution kernels for context information extraction across channels, and the network end with multiple parallel atrous convolution filters with different rate to capture objects and features at multiple scales. Finally, we combine the network output with a dense CRF to refine the final prediction results. The network in our study is trained and evaluated using three classical crack data sets. The experimental results clearly demonstrate that our method outperforms other approaches in terms of performance.
    publisherASCE
    titleCrack Detection via Hierarchical Multiscale Feature Learning and Densely Connected Conditional Random Field
    typeJournal Article
    journal volume10
    journal issue1
    journal titleASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering
    identifier doi10.1061/AJRUA6.RUENG-1102
    journal fristpage04023043-1
    journal lastpage04023043-10
    page10
    treeASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part A: Civil Engineering:;2024:;Volume ( 010 ):;issue: 001
    contenttypeFulltext
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