Pavement condition evaluation is essential to time the preventative or rehabilitative actions and control distress propagation. Failing to conduct timely evaluations can lead to severe structural and financial loss of the infrastructure and complete reconstructions. Automated computer-aided surveying measures can provide a database of road damage patterns and their locations. This database can be utilized for timely road repairs to gain the minimum cost of maintenance and the asphalt's maximum durability. This paper introduces a deep learning-based surveying scheme to analyze the image-based distress data in real-time. A database consisting of a diverse population of crack distress types such as longitudinal, transverse, and alligator cracks, photographed using mobile-device is used. Then, a family of efficient and scalable models that are tuned for pavement crack detection is trained, and various augmentation policies are explored. Proposed models, resulted in F1-scores, ranging from 52% to 56%, and average inference time from 178-10 images per second. Finally, the performance of the object detectors are examined, and error analysis is reported against various images. The source code is available at https://github.com/mahdi65/roadDamageDetection2020.
翻译:预防性或康复性行动的时间、康复性行动的时间以及控制危难传播,必须进行条件评估。不及时进行评估可能导致基础设施严重的结构和财政损失以及彻底重建。自动计算机辅助调查措施可以提供道路损坏模式及其位置的数据库。这个数据库可用于及时修路,以获得最低维护成本和沥青的最大耐久性。本文介绍了一个深层次的基于学习的勘测计划,以实时分析基于图像的遇难数据。一个数据库,由不同群体组成,包括各种快克遇难类型,如长视、横向和鳄鱼裂口,使用移动设备拍照。然后,对一组高效和可扩缩的模型进行训练,用于路面破碎探测,并探讨各种增强政策。拟议模型产生了F1芯,从52%到56%不等,平均推算时间为每秒178-10。最后,对物体探测器的性能进行了检查,并报告对各种图像的误差分析。源代码见https://github.com/mahdi65/romasome20D。