AUTOMATED DETECTION OF PAVEMENT DEFECTS USING COMPUTER VISION

Michal Prochazka, Robert Pinkas, M. Janků, J. Stryk, J. Grosek
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Abstract

Road managers are obliged by law to regularly monitor the condition of road pavements as part of road inspections. Visual inspections provide basic information on the condition of the road and regular assessments are the basis for planning maintenance and repairs. These inspections are usually carried out from a dedicated car and recorded manually by an operator or done by special sophisticated and very costly devices with cameras and various sensors. Inspections are done in defined periods based on road class and type of inspection. This paper presents a pilot test of a new method of monitoring pavement defects based on visual inspection by an autonomous vehicle-mounted system with automatic real-time evaluation performed by this device. The device processes the video recordings and uses deep neural networks for the detection and classification of pavement defects. The resulting metadata and location are immediately sent from this device to the cloud infrastructure. All the data are GDPR safe by design, no images or videos leave the device. The detection is not meant to be as precise as detection made by special diagnostic cars, it is used to do instant community-based monitoring of significant damages on the road network and hence serves as a pre-selection tool to provide road administrators valuable data on where detailed inspection or diagnostics is needed. In addition to the pavement condition, other parameters related to road objects and equipment can also be evaluated.
基于计算机视觉的路面缺陷自动检测
法律规定,道路管理人员有义务定期监测道路路面状况,作为道路检查的一部分。目视检查提供了关于道路状况的基本资料,定期评估是规划维护和修理的基础。这些检查通常是在一辆专用汽车上进行的,由操作员手动记录,或者由带有摄像头和各种传感器的特殊复杂且非常昂贵的设备完成。检查是根据道路等级和检查类型在规定的时间内进行的。本文介绍了一种基于视觉检测的路面缺陷监测新方法的中试试验,该方法由自动车载系统进行自动实时评估。该设备处理视频记录,并使用深度神经网络来检测和分类路面缺陷。由此产生的元数据和位置立即从该设备发送到云基础设施。所有数据都符合GDPR安全设计,没有图像或视频离开设备。这种检测并不像特殊诊断车的检测那样精确,它被用来对道路网络的重大损害进行即时的社区监测,因此作为一种预选工具,为道路管理人员提供有价值的数据,说明需要在哪里进行详细的检查或诊断。除了路面状况外,与道路物体和设备相关的其他参数也可以进行评估。
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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