Flexible road pavements deteriorate primarily due to traffic and adverse environmental conditions. Cracking is the most common deterioration mechanism; the surveying thereof is typically conducted manually using internationally defined classification standards. In South Africa, the use of high-definition video images has been introduced, which allows for safer road surveying. However, surveying is still a tedious manual process. Automation of the detection of defects such as cracks would allow for faster analysis of road networks and potentially reduce human bias and error. This study performs a comparison of six state-of-the-art convolutional neural network models for the purpose of crack detection. The models are pretrained on the ImageNet dataset, and fine-tuned using a new real-world binary crack dataset consisting of 14000 samples. The effects of dataset augmentation are also investigated. Of the six models trained, five achieved accuracy above 97%. The highest recorded accuracy was 98%, achieved by the ResNet and VGG16 models. The dataset is available at the following URL: https://zenodo.org/record/7795975
翻译:摘要:柔性路面主要由于交通和恶劣的环境条件而破坏。开裂是最常见的破坏机制;目前,通常使用国际上定义的分类标准手动进行调查。在南非,引入了高清视频图像技术,可以更安全地进行道路调查。然而,调查仍然是一项繁琐的手动工作。自动化检测损伤,如裂缝,将允许更快地分析道路网络,并潜在地减少人为偏差和错误。本研究对六种最先进的卷积神经网络模型进行了裂缝检测的比较。这些模型在 ImageNet 数据集上进行了预训练,并使用由 14000 个样本组成的新真实二进制裂缝数据集进行了微调。还探讨了数据集增强的影响。在训练的六个模型中,五个的准确率达到了 97% 以上。最高记录的准确率为 98%,由 ResNet 和 VGG16 模型实现。数据集可在以下网址获得:https://zenodo.org/record/7795975