The advent of parallel computing capabilities, further boosted through the exploitation of graphics processing units, has resulted in the surge of new, previously infeasible, algorithmic schemes for structural health monitoring (SHM) tasks, such as the use of convolutional neural networks (CNNs) for vision-based SHM. This work proposes a novel approach for crack recognition in digital images based on coupling of CNNs and suited image processing techniques. The proposed method is applied on a dataset comprising images of the welding joints of a long-span steel bridge, collected via high-resolution consumer-grade digital cameras. The studied dataset includes photos taken in sub-optimal light and exposure conditions, with several noise contami...
Automatic defect detection of steel infrastructures in structural health monitoring (SHM) is still c...
Infrastructure, such as buildings, bridges, pavement, etc., needs to be examined periodically to mai...
This project contains crack detection models based on trained convolutional neural networks (CNNs). ...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
The delayed fracture of high-strength bolts occurs frequently in the bolt connections of long-span s...
This study presents an exploration of several machine learning and image processing theories, as wel...
Nowadays inspections of civil engineering structures are performed manually at close range to be abl...
Fatigue cracks are critical types of damage in steel structures due to repeated loads and distortion...
Aiming at the backward artificial visual detection status of bridge crack in China, which has a grea...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
This paper proposes a CNN-based crack detection method that can recognize and extract cracks from ph...
We trained a convolutional neural network (CNN) on images of brick walls built in a laboratory envir...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Automatic defect detection of steel infrastructures in structural health monitoring (SHM) is still c...
Infrastructure, such as buildings, bridges, pavement, etc., needs to be examined periodically to mai...
This project contains crack detection models based on trained convolutional neural networks (CNNs). ...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
The delayed fracture of high-strength bolts occurs frequently in the bolt connections of long-span s...
This study presents an exploration of several machine learning and image processing theories, as wel...
Nowadays inspections of civil engineering structures are performed manually at close range to be abl...
Fatigue cracks are critical types of damage in steel structures due to repeated loads and distortion...
Aiming at the backward artificial visual detection status of bridge crack in China, which has a grea...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
This paper proposes a CNN-based crack detection method that can recognize and extract cracks from ph...
We trained a convolutional neural network (CNN) on images of brick walls built in a laboratory envir...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Automatic defect detection of steel infrastructures in structural health monitoring (SHM) is still c...
Infrastructure, such as buildings, bridges, pavement, etc., needs to be examined periodically to mai...
This project contains crack detection models based on trained convolutional neural networks (CNNs). ...