基于深度卷积神经网络集成的高程无人机路面裂缝检测

IF 2.6 3区 工程技术 Q2 ENGINEERING, CIVIL
Goodnews E. Amieghemen, Muhammad M. Sherif
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引用次数: 1

摘要

摘要裂缝形态是路面破损程度的主要指标,可以反映路面修复的程度。研究人员利用近距离拍摄的图像研究了裂缝的检测。这通常是耗时、劳动密集且效率低下的。本研究利用无人机在高海拔获取的图像,在像素级上实现了路面裂缝的加权集成检测技术。使用5种深度卷积神经网络架构:UNet、Vgg-UNet、Resnet-UNet、Inception-UNet和PaveNet对图像进行训练。使用集成技术将像素级裂纹检测结果组合在一起以最大限度地提高性能。对集成方法的性能进行了评估,并与一些最先进的网络进行了比较。所得的预测结果用于估计路面图像中裂缝的面积、长度和平均宽度。值得注意的是,建议的系统可以应用于特定的路段。然后提出了一个量化指标,用于量化存在于路面部分的恶化程度。关键词:卷积神经网络裂缝检测像素级机器学习语义分割无人驾驶车辆致谢本出版物中报告的研究由美国运输部研究与技术助理部长办公室(OST-R)通过东南交通研究、创新、发展和教育中心(M6项目)赞助。作者要感谢邓恩建筑公司提供和飞行无人机。同时,感谢UAB可持续智慧城市中心为选定示范区的伯明翰,AL社区评估提供了计划。披露声明作者未报告潜在的利益冲突。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep convolutional neural network ensemble for pavement crack detection using high elevation UAV images
AbstractCrack morphology is a major indicator of pavement distress and can indicate the extent of pavement rehabilitation required. Researchers have investigated the detection of cracks using images captured at close proximity. This is often time-consuming, labor-intensive, and inefficient. This research implemented the weighted ensemble technique for detecting pavement cracks on a pixel level using UAV images obtained at high elevations. The images were trained using five deep convolutional neural network architectures: UNet, Vgg-UNet, Resnet-UNet, Inception-UNet, and PaveNet. The pixel-level crack detection results are combined using the ensemble technique to maximize performance. The performance of the ensemble methodology was evaluated and compared with some of the state-of-the-art networks. The predictions obtained were used to estimate the area, length, and mean width of the cracks in the pavement images. It is worth noting that the proposed system can be applied to a specific road segment. A quantitative index is then proposed for quantifying the level of deterioration present in a pavement section.Keywords: Convolution neural networkscrack detectionpixel-levelmachine learningsemantic segmentationunmanned arial vehicles AcknowledgementsResearch reported in this publication was sponsored by the United States Department of Transportation Office of the Assistant Secretary for Research and Technology (OST-R) through the Southeastern Transportation Research, Innovation, Development, and Education Center (Project M6). The authors would like to acknowledge Dunn Construction for providing and flying the drone. Also, thanks are due to the UAB Sustainable Smart Cities Center for providing the plans for the Birmingham, AL neighborhood evaluation in selected demonstration zones.Disclosure statementNo potential conflict of interest was reported by the author(s).
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来源期刊
Structure and Infrastructure Engineering
Structure and Infrastructure Engineering 工程技术-工程:机械
CiteScore
9.50
自引率
8.10%
发文量
131
审稿时长
5.3 months
期刊介绍: Structure and Infrastructure Engineering - Maintenance, Management, Life-Cycle Design and Performance is an international Journal dedicated to recent advances in maintenance, management and life-cycle performance of a wide range of infrastructures, such as: buildings, bridges, dams, railways, underground constructions, offshore platforms, pipelines, naval vessels, ocean structures, nuclear power plants, airplanes and other types of structures including aerospace and automotive structures. The Journal presents research and developments on the most advanced technologies for analyzing, predicting and optimizing infrastructure performance. The main gaps to be filled are those between researchers and practitioners in maintenance, management and life-cycle performance of infrastructure systems, and those between professionals working on different types of infrastructures. To this end, the journal will provide a forum for a broad blend of scientific, technical and practical papers. The journal is endorsed by the International Association for Life-Cycle Civil Engineering ( IALCCE) and the International Association for Bridge Maintenance and Safety ( IABMAS).
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