Tauzowski Piotr, Ostrowski Mariusz, Bogucki Dominik, Jarosik Piotr, Błachowski Bartłomiej
Institute of Fundamental Technological Research, Polish Academy of Sciences, 02-106 Warsaw, Poland.
IDEAS NCBR Sp. z o. o., 00-801 Warszawa, Poland.
Sensors (Basel). 2025 Jul 30;25(15):4698. doi: 10.3390/s25154698.
Visual inspection of civil infrastructure for structural health assessment, as performed by structural engineers, is expensive and time-consuming. Therefore, automating this process is highly attractive, which has received significant attention in recent years. With the increasing capabilities of computers, deep neural networks have become a standard tool and can be used for structural health inspections. A key challenge, however, is the availability of reliable datasets. In this work, the U-net and DeepLab v3+ convolutional neural networks are trained on a synthetic Tokaido dataset. This dataset comprises images representative of data acquired by unmanned aerial vehicle (UAV) imagery and corresponding ground truth data. The data includes semantic segmentation masks for both categorizing structural elements (slabs, beams, and columns) and assessing structural damage (concrete spalling or exposed rebars). Data augmentation, including both image quality degradation (e.g., brightness modification, added noise) and image transformations (e.g., image flipping), is applied to the synthetic dataset. The selected neural network architectures achieve excellent performance, reaching values of 97% for accuracy and 87% for Mean Intersection over Union (mIoU) on the validation data. It also demonstrates promising results in the semantic segmentation of real-world structures captured in photographs, despite being trained solely on synthetic data. Additionally, based on the obtained results of semantic segmentation, it can be concluded that DeepLabV3+ outperforms U-net in structural component identification. However, this is not the case in the damage identification task.
由结构工程师对土木基础设施进行结构健康评估的目视检查既昂贵又耗时。因此,使这一过程自动化极具吸引力,近年来受到了广泛关注。随着计算机性能的不断提高,深度神经网络已成为一种标准工具,可用于结构健康检查。然而,一个关键挑战是可靠数据集的可用性。在这项工作中,U-net和DeepLab v3+卷积神经网络在合成的东海道数据集上进行训练。该数据集包含代表无人机图像采集数据的图像以及相应的地面真值数据。数据包括用于对结构元素(板、梁和柱)进行分类以及评估结构损伤(混凝土剥落或钢筋外露)的语义分割掩码。数据增强,包括图像质量下降(例如,亮度修改、添加噪声)和图像变换(例如,图像翻转),应用于合成数据集。所选的神经网络架构表现出色,在验证数据上的准确率达到97%,平均交并比(mIoU)达到87%。尽管仅在合成数据上进行训练,但它在照片中捕获的真实世界结构的语义分割中也展示了有前景的结果。此外,基于获得的语义分割结果,可以得出结论,在结构部件识别方面,DeepLabV3+优于U-net。然而,在损伤识别任务中情况并非如此。