基于深度学习的桥梁子结构缺陷检测辅助研究

Pravee Kruachottikul, N. Cooharojananone, G. Phanomchoeng, Thira Chavarnakul, Kittikul Kovitanggoon, Donnaphat Trakulwaranont, K. Atchariyachanvanich
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引用次数: 11

摘要

公路运输是泰国最受欢迎的交通方式,其中交通量最高的前两名是区域间高速公路;然后是城际高速公路。因此,需要定期维护,以保持良好的状态,因为道路安全。桥梁检查程序中最重要的过程是子结构检查,这需要目视检查作为第一步。该过程用于快速确定损坏程度,即可能导致结构强度损坏的外观和裂纹。目前的工艺要求有经验的维修工程师在现场目视检查和估计是否需要维修。然而,由于现场专家工程师的数量有限,因此引入了照片验证来辅助他们,从而不必在每个检查现场都需要他们。但是,人工验证不规范,不可控。他们需要有经验和良好的知识。同时,它也高度依赖于个人的决策能力。因此,本文将提出深度学习技术来辅助专家对桥梁子结构图像进行质量检测。即先用图像增强,再用图像分割和重叠进行图像预处理。然后应用cnn进行对象分类。结果表明,基于3926数据集的总准确率为89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bridge Sub Structure Defect Inspection Assistance by using Deep Learning
Road transportation is the most popular transportation in Thailand, which the top two highest traffic are the region-to-region highways; and then inter-city highways. Therefore, the regular maintenance is required to maintain the good condition due to road safety. The most significant process of bridge inspection procedures is sub structure inspection, which requires visual inspection as an initial step. This process is used to quick determine the damage severity i.e. appearance and crack that may cause damage to the structure strength. The current process requires that the experienced maintenance engineer to be on the field in order to visual inspect and estimate whether the maintenance is required. Yet, due to the limitation of number of expert engineers to be on the field, the photo verification is introduced to assist them so that they are no need on every inspection site. However, using human to verify has no standard and uncontrollable. They need to have experience and good knowledge. As well as it is highly depended on individual decision-making skill. Thus, in this paper, the deep learning technique will be presented to assist the expert for quality inspection process of bridge sub structure images. That is using image enhancement and then image splitting and overlapping for image pre-processing. After that applying CNNs for object classification. As a result, the total accuracy is 89% based on 3926 dataset.
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