经济高效的市政道路网路面状况调查

Christian Hecht, Surya Teja Swarna, Parth Bhavsar, Yusuf Mehta, Taha Bouhsine
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引用次数: 0

摘要

对于美国的市政当局来说,最具挑战性的问题之一就是如何获得联邦资金、州资金,或者两者兼而有之,以改善当地的道路状况。事实证明,人工数据收集、光探测和测距等现有框架既昂贵又繁琐。本文提出了一种使用人工智能(AI)的低成本路面管理框架。人工智能作为一种革命性的进步,已经在各行各业得到了巩固,它可以将许多由人类完成的任务自动化。人工智能有可能使路面评估变得比以往任何时候都更简单、更具成本效益,但数据集的质量和数量阻碍了这一应用。道路数据集通常是不平衡的,包含的某些变形图像比其他图像多得多。这就降低了人工智能模型的性能。本文测试了不同的路面数据集标注方法,以了解哪种方法最适合使用分类神经网络进行路面状况检测。本文设计了一种人工智能友好型路面状况指数,以提供当前路面状况的明确指标,并根据维修需求对道路进行排序。表现最佳的人工智能模型被纳入低成本路面管理框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cost-Effective Pavement Condition Survey for Municipal Road Networks
One of the most challenging issues for municipalities in the U.S. is to secure federal funding, state funding, or both, for local roadway improvement. Existing frameworks such as manual data collection, light detection and ranging have proven to be expensive and cumbersome. In this paper, a low-cost pavement management framework is proposed using artificial intelligence (AI). AI has solidified itself across industries as a revolutionary advancement that can automate many tasks that were performed by humans. AI has the potential to make roadway assessment easier and more cost-effective than ever, but this application has been hindered by dataset quality and quantity. Roadway datasets are often imbalanced, containing many more images of certain deformations than others. This decreases the performance of AI models. In this paper, different methods of pavement dataset labeling are tested to gain an understanding of which is best for pavement distress detection using a classification neural network. An AI-friendly pavement condition index is designed to give a clear indicator of the current pavement condition and provide a metric by which to rank the roads based on the need to repair them. The best-performing AI model is incorporated into the low-cost pavement management framework.
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