Aiming at the backward artificial visual detection status of bridge crack in China, which has a great danger coefficient, a digital and intelligent detection method of improving the diagnostic efficiency and reducing the risk coefficient is studied. Combing with machine vision and convolutional neural network technology, Raspberry Pi is used to acquire and pre-process image, and the crack image is analyzed; the processing algorithm which has the best effect in detecting and recognizing is selected; the convolutional neural network(CNN) for crack classification is optimized; finally, a new intelligent crack detection method is put forward. The experimental result shows that the system can find all cracks beyond the maximum limit, and effecti...
The traditional method for detecting cracks in concrete bridges has the disadvantages of low accurac...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
This study presents an exploration of several machine learning and image processing theories, as wel...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
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...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
This paper aims to develop a method of crack grid detection based on convolutional neural network. F...
Crack detection is important for the inspection and evaluation during the maintenance of concrete st...
International audienceThe quickly expanded development of artificial intelligence offers alternative...
Crack detection on bridges is an important part of assessing whether a bridge is safe for service. T...
Failure due to cracks is a major structural safety issue for engineering constructions. Human examin...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
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...
The traditional method for detecting cracks in concrete bridges has the disadvantages of low accurac...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
This study presents an exploration of several machine learning and image processing theories, as wel...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
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...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
This paper aims to develop a method of crack grid detection based on convolutional neural network. F...
Crack detection is important for the inspection and evaluation during the maintenance of concrete st...
International audienceThe quickly expanded development of artificial intelligence offers alternative...
Crack detection on bridges is an important part of assessing whether a bridge is safe for service. T...
Failure due to cracks is a major structural safety issue for engineering constructions. Human examin...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
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...
The traditional method for detecting cracks in concrete bridges has the disadvantages of low accurac...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
This study presents an exploration of several machine learning and image processing theories, as wel...