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Survey on performance of deep learning models for detecting road damages using multiple dashcam image resources

机译:使用多个Dashcam图像资源检测道路损伤的深度学习模型的性能调查

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摘要

Detecting road damage quickly and accurately facilitates the ability of road-maintenance agencies to make timely repairs to road surfaces, maintain optimal road conditions, optimize transportation safety, and minimize transportation costs. An extensive evaluation of eight deep-learning-based road-damage detection models was conducted in this study. Each model was trained on 9493 images sourced from multiple databases. The 16165 instances of road damage in these images were categorized into five types of damage, including longitudinal crack, horizontal crack, alligator damage, pothole-related crack, and line blurring. Two experiments were conducted that identified two models, single shot multi-box detector (SSD) Inception V2 and faster region-based convolutional neural networks (R-CNN) Inception V2, as providing the best balance of road-damage-detection accuracy and image processing time. These experiments demonstrated that increasing the diversity of image sources improved road-damage-detection model performance. In addition to combining data images from different sources with consistently relabeled damage instances, this study released road-damage image data from the road maintenance agency in Zhubei, Hsinchu County, Taiwan for research and other uses, increasing the limited amount of published image data sources and positively impacting future scholarly research into road damage detection.
机译:迅速检测道路损坏,促进道路维护机构对道路表面及时维修的能力,保持最佳的道路状况,优化运输安全,并尽量减少运输成本。本研究进行了广泛评估了八种基于深度学习的道路损伤检测模型。每个模型都在来自来自多个数据库的9493个图像上培训。这些图像中的16165个道路损伤实例分为五种类型的损坏,包括纵向裂缝,水平裂缝,鳄鱼损伤,坑洞相关的裂缝和线模糊。进行了两种实验,确定了两种模型,单次射击多箱检测器(SSD)成立V2和更快的基于地区的卷积神经网络(R-CNN)Inception V2,提供了道路损伤检测精度和图像的最佳平衡处理时间。这些实验表明,增加图像源的多样性改善了道路损伤检测模型性能。除了将来自不同来源的数据图像与始终如一的重新标记损伤实例相结合,本研究还发布了来自台湾浙湾省珠岛路维修局的道路伤害图像数据,用于研究和其他用途,增加了已发布的图像数据源的有限量并积极影响未来的学术研究进入道路损伤检测。

著录项

  • 来源
    《Advanced engineering informatics》 |2020年第10期|101182.1-101182.21|共21页
  • 作者单位

    Dept. and Ins. of Civil Engineering and Environmental Informatics Minghsin University of Science and Technology No. 1 Xinxing Rd. Xinfeng Hsinchu 30401 Taiwan ROC;

    Dept. of Electrical Engineering National Taiwan University of Science and Technology No. 43 Keelung Rd. Sec.4 Da'an Dist. Taipei 10607 Taiwan ROC;

    Dept of Civil and Construction Engineering National Taiwan University of Science and Technology No. 43 Keelung Rd. Sec.4 Da'an Dist Taipei 10607 Taiwan ROC;

    Dept. and Ins. of Civil Engineering and Environmental Informatics Minghsin University of Science and Technology No. 1 Xinxing Rd. Xinfeng Hsinchu 30401 Taiwan ROC;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Road damage detection; Road maintenance; Road crack; Deep learning; Convolutional neural network; Single shot detection;

    机译:道路损伤检测;道路维修;道路裂缝;深度学习;卷积神经网络;单次射击检测;

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