Monocular Road Damage Size Estimation using Publicly Available Datasets and Dashcam Imagery

Adithya Badidey, Ryan Dalby, Zhongyi Jiang, D. Sacharny, T. Henderson
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Abstract

Among the challenges of maintaining a safe and efficient transportation system, Departments of Transportation (DOT) must assess the quality of hundreds-of-thousands of miles of roadway every year and prioritize limited resources to address issues that affect safety and reliability. In particular, road damage in the form of 3D analysis of cracks and potholes is difficult to catalog and require significant human resources to survey. However, a new and growing remote-sensing network comprised of low-cost consumer dashcams presents an opportunity to dramatically lower the cost and effort required to perform road damage assessments. This paper provides methods to approach this problem and details a number of public datasets and models that can be used to tackle it. The central contribution here is a set of several practical software pipelines designed to accomplish this task in an automated fashion. An emphasis on deep learning methods is presented that enables organizations to improve or tailor the results according to their specific requirements and the availability of labeled data. Suggestions for possible directions for future work and improvements at each stage of the pipeline are also presented.
使用公开数据集和行车记录仪图像的单目道路损伤大小估计
在维护安全高效的交通系统的挑战中,交通部门(DOT)必须每年评估数十万英里道路的质量,并优先考虑有限的资源来解决影响安全性和可靠性的问题。特别是,以裂缝和坑洞的3D分析形式出现的道路损坏很难分类,需要大量人力资源进行调查。然而,一个由低成本消费者行车记录仪组成的新型且不断发展的遥感网络提供了一个机会,可以大大降低进行道路损害评估所需的成本和工作量。本文提供了解决这个问题的方法,并详细介绍了一些可用于解决这个问题的公共数据集和模型。这里的核心贡献是一组实用的软件管道,旨在以自动化的方式完成此任务。重点介绍了深度学习方法,使组织能够根据其特定要求和标记数据的可用性改进或定制结果。对未来工作的可能方向和管道各阶段的改进也提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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