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Autonomous Structural Visual Inspection Using Region-Based Deep Learning for Detecting Multiple Damage Types

机译:使用基于区域的深度学习进行自主结构视觉检查以检测多种损坏类型

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摘要

Computer vision-based techniques were developed to overcome the limitations of visual inspection by trained human resources and to detect structural damage in images remotely, but most methods detect only specific types of damage, such as concrete or steel cracks. To provide quasi real-time simultaneous detection of multiple types of damages, a Faster Region-based Convolutional Neural Network (Faster R-CNN)-based structural visual inspection method is proposed. To realize this, a database including 2,366 images (with 500 x 375 pixels) labeled for five types of damagesconcrete crack, steel corrosion with two levels (medium and high), bolt corrosion, and steel delaminationis developed. Then, the architecture of the Faster R-CNN is modified, trained, validated, and tested using this database. Results show 90.6%, 83.4%, 82.1%, 98.1%, and 84.7% average precision (AP) ratings for the five damage types, respectively, with a mean AP of 87.8%. The robustness of the trained Faster R-CNN is evaluated and demonstrated using 11 new 6,000 x 4,000-pixel images taken of different structures. Its performance is also compared to that of the traditional CNN-based method. Considering that the proposed method provides a remarkably fast test speed (0.03 seconds per image with 500 x 375 resolution), a framework for quasi real-time damage detection on video using the trained networks is developed.
机译:开发了基于计算机视觉的技术,以克服训练有素的人力资源进行视觉检查的局限性,并远程检测图像中的结构损坏,但是大多数方法仅检测特定类型的损坏,例如混凝土或钢裂缝。为了提供对多种类型损伤的准实时同时检测,提出了一种基于快速区域的卷积神经网络(Faster R-CNN)结构视觉检测方法。为了实现这一目标,开发了一个数据库,其中包含2366张图像(500 x 375像素),这些图像分别标记了五种类型的损伤:混凝土裂缝,具有两个级别(中高)的钢腐蚀,螺栓腐蚀和钢分层。然后,使用此数据库修改,训练,验证和测试Faster R-CNN的体系结构。结果显示,五种损伤类型的平均精度(AP)等级分别为90.6%,83.4%,82.1%,98.1%和84.7%,平均AP为87.8%。使用不同结构拍摄的11张新的6,000 x 4,000像素图像评估并演示了训练有素的Faster R-CNN的鲁棒性。还将其性能与传统的基于CNN的方法进行了比较。考虑到所提出的方法提供了非常快的测试速度(每个图像0.03秒,分辨率为500 x 375),因此开发了一种使用经过训练的网络对视频进行准实时损伤检测的框架。

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