Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning

The blockage or failure of the drainage holes will endanger the stability of the slopes and traffic safety of a highway tunnel. This paper studies an algorithm for the automatic classification of drainage hole blockage degree based on convolutional neural network transfer learning to explore the int...

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Main Authors: Jianbing Lv, Weijun Wu, Xiaoyu Kang, Juan Huang, Gongfa Chen, Shuai Teng, Hejie Gao
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2022/4928018
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author Jianbing Lv
Weijun Wu
Xiaoyu Kang
Juan Huang
Gongfa Chen
Shuai Teng
Hejie Gao
author_facet Jianbing Lv
Weijun Wu
Xiaoyu Kang
Juan Huang
Gongfa Chen
Shuai Teng
Hejie Gao
author_sort Jianbing Lv
collection DOAJ
description The blockage or failure of the drainage holes will endanger the stability of the slopes and traffic safety of a highway tunnel. This paper studies an algorithm for the automatic classification of drainage hole blockage degree based on convolutional neural network transfer learning to explore the intelligent detection method of drainage hole blockage. The model transfer method is adopted to input drainage hole image samples to retrain the pretrained network to classify new images. Experiments are performed on the collected samples of drainage hole images, and the accuracy of different network models is compared, ResNet-18 being the best. The ResNet-18 performance is compared using different transfer strategies and parameters. The results show that when the SGDM gradient optimisation algorithm is used and the learning rate is 0.0001, the identification effect of these samples is the best. The validation accuracy can reach 91.7%, test accuracy is 90.0%, and the effective classification of drainage hole blockage to different degrees is realised under the transfer learning strategy of ResNet-18 model 1–34 frozen layers. Furthermore, with an expansion of the samples in the future, the identification accuracy will be further improved. The automatic classification system of the blockage degree of drainage hole greatly reduces the cost of manual detection, plays a guiding role in the maintenance of drainage pipes, and effectively improves the safety of highway tunnels and slopes.
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institution Kabale University
issn 1687-8094
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Advances in Civil Engineering
spelling doaj-art-9942a40bc1af456ca08cdca96cd7ddf22025-02-03T01:32:28ZengWileyAdvances in Civil Engineering1687-80942022-01-01202210.1155/2022/4928018Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer LearningJianbing Lv0Weijun Wu1Xiaoyu Kang2Juan Huang3Gongfa Chen4Shuai Teng5Hejie Gao6School of Civil and Transportation EngineeringSchool of Civil and Transportation EngineeringSchool of Civil and Transportation EngineeringSchool of Civil and Transportation EngineeringSchool of Civil and Transportation EngineeringSchool of Civil and Transportation EngineeringCCCC Fourth Navigation Engineering Bureau Co., LTD.The blockage or failure of the drainage holes will endanger the stability of the slopes and traffic safety of a highway tunnel. This paper studies an algorithm for the automatic classification of drainage hole blockage degree based on convolutional neural network transfer learning to explore the intelligent detection method of drainage hole blockage. The model transfer method is adopted to input drainage hole image samples to retrain the pretrained network to classify new images. Experiments are performed on the collected samples of drainage hole images, and the accuracy of different network models is compared, ResNet-18 being the best. The ResNet-18 performance is compared using different transfer strategies and parameters. The results show that when the SGDM gradient optimisation algorithm is used and the learning rate is 0.0001, the identification effect of these samples is the best. The validation accuracy can reach 91.7%, test accuracy is 90.0%, and the effective classification of drainage hole blockage to different degrees is realised under the transfer learning strategy of ResNet-18 model 1–34 frozen layers. Furthermore, with an expansion of the samples in the future, the identification accuracy will be further improved. The automatic classification system of the blockage degree of drainage hole greatly reduces the cost of manual detection, plays a guiding role in the maintenance of drainage pipes, and effectively improves the safety of highway tunnels and slopes.http://dx.doi.org/10.1155/2022/4928018
spellingShingle Jianbing Lv
Weijun Wu
Xiaoyu Kang
Juan Huang
Gongfa Chen
Shuai Teng
Hejie Gao
Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
Advances in Civil Engineering
title Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
title_full Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
title_fullStr Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
title_full_unstemmed Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
title_short Automatic Classification System of Drainage Hole Blockage Based on Convolution Neural Network Transfer Learning
title_sort automatic classification system of drainage hole blockage based on convolution neural network transfer learning
url http://dx.doi.org/10.1155/2022/4928018
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AT xiaoyukang automaticclassificationsystemofdrainageholeblockagebasedonconvolutionneuralnetworktransferlearning
AT juanhuang automaticclassificationsystemofdrainageholeblockagebasedonconvolutionneuralnetworktransferlearning
AT gongfachen automaticclassificationsystemofdrainageholeblockagebasedonconvolutionneuralnetworktransferlearning
AT shuaiteng automaticclassificationsystemofdrainageholeblockagebasedonconvolutionneuralnetworktransferlearning
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