通过深度学习技术和低成本设备进行沥青路面损坏检测:有轨电车线路穿越的城市道路案例研究

Marco Guerrieri, G. Parla, Masoud Khanmohamadi, L. Neduzha
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引用次数: 0

摘要

随着时间的推移,沥青路面需要进行定期检查和维护。人们已经提出了许多评估路面表面状况的技术,但这些技术大多是劳动密集型任务,或者需要昂贵的仪器。本文介绍了一种强大的智能路面状况检测系统,该系统使用经济高效的设备和 "只看一次 "检测算法(YOLOv3)。在神经网络训练、校准和验证阶段,使用了包含约 13,135 幅图像和 30,989 个损坏边界框的柔性路面损坏检测数据集。在测试阶段,该模型的平均精确度高达 80%,具体取决于路面损坏的类型。用于估算目标检测精度的性能指标(损失、精度、召回率和均方根误差)表明,该技术可以区分不同类型的沥青路面损坏,而且精度和准确度都非常高。此外,在验证过程中获得的混淆矩阵显示,该技术的损坏分类灵敏度高达 98.7%。建议的技术已成功应用于检测车。在巴勒莫市有轨电车线路穿越的城市道路上进行的测量证明了该检测系统的实时性和巨大功效,由于沥青路面损坏检测的正确率高,该系统可能会显著提高沥青路面检测的功效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asphalt Pavement Damage Detection through Deep Learning Technique and Cost-Effective Equipment: A Case Study in Urban Roads Crossed by Tramway Lines
Asphalt pavements are subject to regular inspection and maintenance activities over time. Many techniques have been suggested to evaluate pavement surface conditions, but most of these are either labour-intensive tasks or require costly instruments. This article describes a robust intelligent pavement distress inspection system that uses cost-effective equipment and the ‘you only look once’ detection algorithm (YOLOv3). A dataset for flexible pavement distress detection with around 13,135 images and 30,989 bounding boxes of damage was used during the neural network training, calibration, and validation phases. During the testing phase, the model achieved a mean average precision of up to 80%, depending on the type of pavement distress. The performance metrics (loss, precision, recall, and RMSE) that were applied to estimate the object detection accuracy demonstrate that the technique can distinguish between different types of asphalt pavement damage with remarkable accuracy and precision. Moreover, the confusion matrix obtained in the validation process shows a distress classification sensitivity of up to 98.7%. The suggested technique was successfully implemented in an inspection car. Measurements conducted on urban roads crossed by tramway lines in the city of Palermo proved the real-time ability and great efficacy of the detection system, with potentially remarkable advances in asphalt pavement examination efficacy due to the high rates of correct distress detection.
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