Compared with contact detection techniques, pavement crack identification with visual images via deep learning algorithms has the advantages of not being limited by the material of object to be detected, fast speed and low cost. The fundamental frameworks and typical model architectures of transfer learning (TL), encoder-decoder (ED), generative adversarial networks (GAN), and their common modules were first reviewed, and then the evolution of convolutional neural network (CNN) backbone models and GAN models were summarized. The crack classification, segmentation performance, and effect were tested on the SDNET2018 and CFD public data sets. In the aspect of patch sample classification, the fine-tuned TL models can be equivalent to or even s...
© 2018 Association for Computing Machinery. Pavement crack detection is an important problem in road...
Several deep learning techniques have been used to detect pavement cracks for the partial replacemen...
Deep learning, more specifically deep convolutional neural networks, is fast becoming a popular choi...
With the advance of deep learning networks, their applications in the assessment of pavement conditi...
Information on the severity of pavement cracks is critical for pavement repair services. This study ...
Cracks are a major sign of aging transportation infrastructure. The detection and repair of cracks i...
Compared to NDT and health monitoring method for cracks in engineering structures, surface crack det...
Purpose: This paper aims to Test the capabilities/accuracies of four deep learning pre trained convo...
Currently, modern achievements in the field of deep learning are increasingly being applied in pract...
Pavement crack detection using computer vision techniques has been studied widely over the past seve...
In recent years, deep learning-based detection methods have been applied to pavement crack detection...
Computer vision techniques can be applied to detect structural defects of different concrete structu...
Automatic crack detection remains challenging due to factors such as irregular crack shapes and size...
Automated pavement crack image segmentation is challenging because of inherent irregular patterns, l...
The current study aims to improve the efficiency of automatic identification of pavement distress an...
© 2018 Association for Computing Machinery. Pavement crack detection is an important problem in road...
Several deep learning techniques have been used to detect pavement cracks for the partial replacemen...
Deep learning, more specifically deep convolutional neural networks, is fast becoming a popular choi...
With the advance of deep learning networks, their applications in the assessment of pavement conditi...
Information on the severity of pavement cracks is critical for pavement repair services. This study ...
Cracks are a major sign of aging transportation infrastructure. The detection and repair of cracks i...
Compared to NDT and health monitoring method for cracks in engineering structures, surface crack det...
Purpose: This paper aims to Test the capabilities/accuracies of four deep learning pre trained convo...
Currently, modern achievements in the field of deep learning are increasingly being applied in pract...
Pavement crack detection using computer vision techniques has been studied widely over the past seve...
In recent years, deep learning-based detection methods have been applied to pavement crack detection...
Computer vision techniques can be applied to detect structural defects of different concrete structu...
Automatic crack detection remains challenging due to factors such as irregular crack shapes and size...
Automated pavement crack image segmentation is challenging because of inherent irregular patterns, l...
The current study aims to improve the efficiency of automatic identification of pavement distress an...
© 2018 Association for Computing Machinery. Pavement crack detection is an important problem in road...
Several deep learning techniques have been used to detect pavement cracks for the partial replacemen...
Deep learning, more specifically deep convolutional neural networks, is fast becoming a popular choi...