首页> 外文期刊>Wireless communications & mobile computing >Pavement Crack Detection Method Based on Deep Learning Models
【24h】

Pavement Crack Detection Method Based on Deep Learning Models

机译:基于深度学习模型的路面裂纹检测方法

获取原文
       

摘要

Severe weather and long-term driving of vehicles lead to various cracks on asphalt pavement. If these cracks cannot be found and repaired in time, it will have a negative impact on the safe driving of vehicles. Traditional artificial detection has some problems, such as low efficiency and missing detection. The detection model based on machine learning needs artificial design of pavement crack characteristics. According to the pavement distress identification manual proposed by the Federal Highway Administration (FHWA), these categories have three different types of cracks, such as fatigue, longitudinal crack, and transverse cracks. In the face of many types of pavement cracks, it is difficult to design a general feature extraction model to extract pavement crack features, which leads to the poor effect of the automatic detection model based on machine learning. Object detection based on the deep learning model has achieved good results in many fields. As a result, those models have become possible for pavement crack detection. This paper discusses the latest YOLOv5 series detection model for pavement crack detection and is to find out an effective training and detection method. Firstly, the 3001 asphalt crack pavement images with the original size of pixels are collected using a digital camera and are randomly divided into three types according to the severity levels of low, medium, and high. Then, for the dataset of crack pavement, YOLOv5 series models are used for training and testing. The experimental results show that the detection accuracy of the YOLOv5l model is the highest, reaching 88.1%, and the detection time of the YOLOv5s model is the shortest, only 11.1?ms for each image.
机译:恶劣天气和长期驾驶车辆导致沥青路面裂缝不同。如果无法找到,并及时修复这些裂缝,就会对车辆的安全行驶带来负面影响。传统的人工检测存在一些问题,如效率低,漏检。基于机器学习的检测模型需要的路面裂缝特性的人工设计。根据由美国联邦公路管理局(FHWA)提出的路面损坏鉴别手册,这些类别有三种不同类型的裂缝,如疲劳,纵向裂纹,和横向裂纹。在许多类型的路面裂缝的面,所以很难设计一个一般特征提取模型以提取路面裂缝的特征,这导致基于机器学习的自动检测模型的效果差。基于深学习模型对象检测已经在许多领域取得了良好效果。其结果是,这些模型已经用于路面裂缝检测成为可能。本文讨论了路面裂缝检测最新YOLOv5系列检测模型,并找出有效的培训和检测方法。首先,与像素的原始尺寸的3001个沥青路面裂纹图像是使用数字照相机收集并根据低,中,和高的严重性级别,随机分为三种类型。然后,对于裂缝路面的数据集,YOLOv5系列车型被用于训练和测试。实验结果表明,该YOLOv5l模型的检测精度是最高的,达到了88.1%,而YOLOv5s模型的检测时间最短,只有11.1?每个图像毫秒。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号