首页|Pixel-level crack segmentation of tunnel lining segments based on an encoder-decoder network
Pixel-level crack segmentation of tunnel lining segments based on an encoder-decoder network
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Regular detection and repair for lining cracks are necessary to guarantee the safety and stability of tunnels.The development of computer vision has greatly promoted structural health monitoring.This study proposes a novel encoder-decoder structure,CrackRecNet,for semantic segmentation of lining segment cracks by integrating improved VGG-19 into the U-Net architecture.An image acquisition equipment is designed based on a camera,3-dimensional printing(3DP)bracket and two laser rangefinders.A tunnel concrete structure crack(TCSC)image data set,containing images collected from a double-shield tunnel boring machines(TBM)tunnel in China,was established.Through data preprocessing operations,such as brightness adjustment,pixel resolution adjustment,flipping,splitting and annotation,2880 image samples with pixel resolution of 448×448 were prepared.The model was implemented by Pytorch in PyCharm processed with 4 NVIDIA TITAN V GPUs.In the experiments,the proposed CrackRecNet showed better prediction performance than U-Net,TernausNet,and ResU-Net.This paper also discusses GPU parallel acceleration effect and the crack maximum width quantification.
State Key Laboratory of Hydroscience and Engineering,Tsinghua University,Beijing 100084,China
China Renewable Energy Engineering Institute,Beijing 100120,China
State Key Laboratory of Stimulation and Regulation of Water Cycles in River Basins,China Institute of Water Resources and Hydropower Research,Beijing 100038,China
Hunan Provincial Water Resources Development&Investment Co.,Ltd.,Changsha 410007,China
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National Natural Science Foundation of ChinaNational Natural Science Foundation of ChinaScience and Technology Innovation Project of Quanmutang Engineering