An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution

To nondestructive semantic segment the crack pixels in the image with high resolution, previous methods often use sliding window and the crack patches to train the FCNs, and then use the trained FCNs for crack recognition. However, the FCNs will produce a higher proportion of false crack predictions...

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Main Authors: Jun Zhang, Jia Zhang
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2020/5054740
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spelling doaj-84eb0da2b3094e3db0d55a48989e2bb02020-11-30T09:11:29ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472020-01-01202010.1155/2020/50547405054740An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High ResolutionJun Zhang0Jia Zhang1State Grid Hunan Electric Power Company Limited Research Institute, Changsha, Hunan, ChinaChangsha Jinfengtan High-Tech Company Limited, Changsha, Hunan, ChinaTo nondestructive semantic segment the crack pixels in the image with high resolution, previous methods often use sliding window and the crack patches to train the FCNs, and then use the trained FCNs for crack recognition. However, the FCNs will produce a higher proportion of false crack predictions with messy distributions in the high-resolution image. A CNN-to-FCN method is proposed to solve this problem. The CNN is trained by all the patches for large-scale crack and background recognition, and the screened crack predictions are then segmented by the FCN. A real-world concrete dam surface crack image database is firstly established to verify the improved method. The results indicated that (1) the improved method can extremely avoid the higher proportion of false crack predictions and their messy distributions in the high-resolution image through the full utilization of background patches and large-scale background recognition; (2) the ResNetv2 backbone and DeepLabv3 architecture recommended by the improved method can be further modified by reducing the bottleneck channels and adding a DUC module to achieve better performance; (3) the improved method can also reduce the prediction time when the image has low proportion of crack patches, which becomes more practicable for the engineering applications.http://dx.doi.org/10.1155/2020/5054740
collection DOAJ
language English
format Article
sources DOAJ
author Jun Zhang
Jia Zhang
spellingShingle Jun Zhang
Jia Zhang
An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
Mathematical Problems in Engineering
author_facet Jun Zhang
Jia Zhang
author_sort Jun Zhang
title An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
title_short An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
title_full An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
title_fullStr An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
title_full_unstemmed An Improved Nondestructive Semantic Segmentation Method for Concrete Dam Surface Crack Images with High Resolution
title_sort improved nondestructive semantic segmentation method for concrete dam surface crack images with high resolution
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2020-01-01
description To nondestructive semantic segment the crack pixels in the image with high resolution, previous methods often use sliding window and the crack patches to train the FCNs, and then use the trained FCNs for crack recognition. However, the FCNs will produce a higher proportion of false crack predictions with messy distributions in the high-resolution image. A CNN-to-FCN method is proposed to solve this problem. The CNN is trained by all the patches for large-scale crack and background recognition, and the screened crack predictions are then segmented by the FCN. A real-world concrete dam surface crack image database is firstly established to verify the improved method. The results indicated that (1) the improved method can extremely avoid the higher proportion of false crack predictions and their messy distributions in the high-resolution image through the full utilization of background patches and large-scale background recognition; (2) the ResNetv2 backbone and DeepLabv3 architecture recommended by the improved method can be further modified by reducing the bottleneck channels and adding a DUC module to achieve better performance; (3) the improved method can also reduce the prediction time when the image has low proportion of crack patches, which becomes more practicable for the engineering applications.
url http://dx.doi.org/10.1155/2020/5054740
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