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 h...
At present, a number of computer vision-based crack detection techniques have been developed to effi...
Structure health inspection is the way to ensure that structures stay in optimum condition. Traditio...
Large-scale structural health monitoring and damage detection of concealed underwater structures are...
This paper proposes a CNN-based crack detection method that can recognize and extract cracks from ph...
Crack detection is important for the inspection and evaluation during the maintenance of concrete st...
Maintenance of infrastructures is a crucial activity to ensure safety using crack detection methods ...
This study proposes a machine learning-based concrete crack identification strategy using digital im...
Crack is the early expression form of the concrete pavement disease. Early discovery and treatment o...
Existing deep learning (DL) models can detect wider or thicker segments of cracks that occupy multip...
In concrete structures, surface cracks are important indicators of structural durability and service...
Automated crack detection technologies based on deep learning have been extensively used as one of t...
Dam crack detection can effectively avoid safety accidents of dams. To solve the problem that the da...
This paper is devoted to the development of a deep learning- (DL-) based model to detect crack fract...
With the wide application of computer vision technology and deep-learning theory in engineering, the...
Manual inspection of cracks on concrete surfaces requires wholesome knowledge and depends entirely o...
At present, a number of computer vision-based crack detection techniques have been developed to effi...
Structure health inspection is the way to ensure that structures stay in optimum condition. Traditio...
Large-scale structural health monitoring and damage detection of concealed underwater structures are...
This paper proposes a CNN-based crack detection method that can recognize and extract cracks from ph...
Crack detection is important for the inspection and evaluation during the maintenance of concrete st...
Maintenance of infrastructures is a crucial activity to ensure safety using crack detection methods ...
This study proposes a machine learning-based concrete crack identification strategy using digital im...
Crack is the early expression form of the concrete pavement disease. Early discovery and treatment o...
Existing deep learning (DL) models can detect wider or thicker segments of cracks that occupy multip...
In concrete structures, surface cracks are important indicators of structural durability and service...
Automated crack detection technologies based on deep learning have been extensively used as one of t...
Dam crack detection can effectively avoid safety accidents of dams. To solve the problem that the da...
This paper is devoted to the development of a deep learning- (DL-) based model to detect crack fract...
With the wide application of computer vision technology and deep-learning theory in engineering, the...
Manual inspection of cracks on concrete surfaces requires wholesome knowledge and depends entirely o...
At present, a number of computer vision-based crack detection techniques have been developed to effi...
Structure health inspection is the way to ensure that structures stay in optimum condition. Traditio...
Large-scale structural health monitoring and damage detection of concealed underwater structures are...