Sanchez Carlos, Wang Feng, Bai Yongsheng, Gong Haitao
Ingram School of Engineering, Texas State University, San Marcos, TX 78666, USA.
Sensors (Basel). 2025 Feb 13;25(4):1145. doi: 10.3390/s25041145.
Pavement surface distresses are analyzed by transportation agencies to determine section performance across their pavement networks. To efficiently collect and evaluate thousands of lane-miles, automated processes utilizing image-capturing techniques and detection algorithms are applied to perform these tasks. However, the precision of this novel technology often leads to inaccuracies that must be verified by pavement engineers. Developments in artificial intelligence and machine learning (AI/ML) can aid in the progress of more robust and precise detection algorithms. Deep learning models are efficient for visual distress identification of pavement. With the use of 2D/3D pavement images, surface distress analysis can help train models to efficiently detect and classify surface distresses that may be caused by traffic loading, weather, aging, and other environmental factors. The formation of these distresses is developing at a higher rate in coastal regions, where extreme weather phenomena are more frequent and intensive. This study aims to develop a YOLOv5 model with 2D/3D images collected in the states of Louisiana, Mississippi, and Texas in the U.S. to establish a library of data on pavement sections near the Gulf of Mexico. Images with a resolution of 4096 × 2048 are annotated by utilizing bounding boxes based on a class list of nine distress and non-distress objects. Along with emphasis on efforts to detect cracks in the presence of background noise on asphalt pavements, six scenarios for augmentation were made to evaluate the model's performance based on flip probability in the horizontal and vertical directions. The YOLOv5 models are able to detect defined distresses consistently, with the highest mAP50 scores ranging from 0.437 to 0.462 throughout the training scenarios.
交通部门会分析路面表面病害,以确定其整个路面网络各路段的性能。为了高效收集和评估数千车道英里的数据,利用图像捕捉技术和检测算法的自动化流程被应用于执行这些任务。然而,这项新技术的精度常常导致不准确之处,必须由路面工程师进行验证。人工智能和机器学习(AI/ML)的发展有助于开发更强大、精确的检测算法。深度学习模型在路面视觉病害识别方面效率很高。通过使用二维/三维路面图像,表面病害分析有助于训练模型,以有效检测和分类可能由交通荷载、天气、老化和其他环境因素引起的表面病害。在极端天气现象更为频繁和强烈的沿海地区,这些病害的形成速度正在加快。本研究旨在利用在美国路易斯安那州、密西西比州和得克萨斯州收集的二维/三维图像开发一个YOLOv5模型,以建立墨西哥湾附近路面路段的数据库。分辨率为4096×2048的图像根据包含九个病害和非病害对象的类别列表,利用边界框进行标注。除了重点努力在沥青路面存在背景噪声的情况下检测裂缝外,还进行了六种增强场景,以根据水平和垂直方向的翻转概率评估模型的性能。在整个训练场景中,YOLOv5模型能够持续检测出定义的病害,最高mAP50分数在0.437至0.462之间。