Zahra Ameli, Shabnam Jafarpoor Nesheli, Eric N. Landis
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Furthermore, training an efficient deep learning model requires a large number of corrosion images and the manual labeling of every single image. This process can be tedious and labor-intensive. In this project, an open-source steel bridge corrosion dataset along with corresponding annotations was generated. This database contains 514 images with various corrosion severity levels, gathered from a variety of steel bridges. A pixel-level annotation was performed according to the Bridge Inspectors Reference Manual (BIRM) and the American Association of State Highway and Transportation Officials (AASHTO) regulations for corrosion condition rating (defect #1000). Two state-of-the-art semantic segmentation algorithms, Mask RCNN and YOLOv8, were trained and validated on the dataset. These trained models were then tested on a set of test images and the results were compared. 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引用次数: 0
摘要
近年来,深度学习(DL)算法因其在结构损伤识别(包括腐蚀检测)方面的卓越性能而备受关注。人们对卷积神经网络(CNN)在腐蚀检测和分类中的应用越来越感兴趣。然而,目前的方法主要涉及在边界框内检测腐蚀,缺乏对边界形状不规则的腐蚀进行分割。因此,量化腐蚀区域和严重程度变得非常具有挑战性,而这对于工程师评定结构元素的状况和评估基础设施的性能至关重要。此外,训练一个高效的深度学习模型需要大量的腐蚀图像和对每张图像进行手动标注。这一过程既繁琐又耗费人力。在本项目中,生成了一个开源钢桥腐蚀数据集和相应的注释。该数据库包含 514 张不同腐蚀严重程度的图像,这些图像来自各种钢桥。根据《桥梁检查员参考手册》(Bridge Inspectors Reference Manual,BIRM)和美国州公路与运输官员协会(American Association of State Highway and Transportation Officials,AASHTO)关于腐蚀状况评级(1000 号缺陷)的规定,进行了像素级注释。两种最先进的语义分割算法 Mask RCNN 和 YOLOv8 在数据集上进行了训练和验证。然后在一组测试图像上测试了这些训练有素的模型,并对结果进行了比较。经过训练的 Mask RCNN 和 YOLOv8 模型在分割和评级腐蚀方面表现令人满意,适合实际应用。
Deep Learning-Based Steel Bridge Corrosion Segmentation and Condition Rating Using Mask RCNN and YOLOv8
The application of deep learning (DL) algorithms has become of great interest in recent years due to their superior performance in structural damage identification, including the detection of corrosion. There has been growing interest in the application of convolutional neural networks (CNNs) for corrosion detection and classification. However, current approaches primarily involve detecting corrosion within bounding boxes, lacking the segmentation of corrosion with irregular boundary shapes. As a result, it becomes challenging to quantify corrosion areas and severity, which is crucial for engineers to rate the condition of structural elements and assess the performance of infrastructures. Furthermore, training an efficient deep learning model requires a large number of corrosion images and the manual labeling of every single image. This process can be tedious and labor-intensive. In this project, an open-source steel bridge corrosion dataset along with corresponding annotations was generated. This database contains 514 images with various corrosion severity levels, gathered from a variety of steel bridges. A pixel-level annotation was performed according to the Bridge Inspectors Reference Manual (BIRM) and the American Association of State Highway and Transportation Officials (AASHTO) regulations for corrosion condition rating (defect #1000). Two state-of-the-art semantic segmentation algorithms, Mask RCNN and YOLOv8, were trained and validated on the dataset. These trained models were then tested on a set of test images and the results were compared. The trained Mask RCNN and YOLOv8 models demonstrated satisfactory performance in segmenting and rating corrosion, making them suitable for practical applications.