Automatic defect detection of steel infrastructures in structural health monitoring (SHM) is still challenging because of complicated background, non-uniform illumination, irregular shapes and interference in images. Conventional defects detection mainly relies on manual inspection which is time-consuming and error-prone. In this study, a deep learning-based fine crack segmentation network, termed as FCS-Net was proposed in light of ResNet-50 and fully convolutional network (FCN). Structural modifications including Batch Normalization (BN) and Atrous Spatial Pyramid Pooling (ASPP) were made. In full-scale steel girder images with complicated background and fine foreground, the proposed FCS-Net achieves a MIoU of 0.7408, outperforming benchm...
Cracks are a major sign of aging transportation infrastructure. The detection and repair of cracks i...
Cracks are common defects on surfaces of man-made structures such as pavements, bridges, walls of nu...
Automated crack detection technologies based on deep learning have been extensively used as one of t...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Abstract(#br)Automatic detection and segmentation of concrete cracks in tunnels remains a high-prior...
Crack detection on historical surfaces is of significant importance for credible and reliable inspec...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
Computer vision techniques can be applied to detect structural defects of different concrete structu...
Infrastructure, such as buildings, bridges, pavement, etc., needs to be examined periodically to mai...
Fatigue cracks are critical types of damage in steel structures due to repeated loads and distortion...
Large-scale structural health monitoring and damage detection of concealed underwater structures are...
Maintenance of infrastructures is a crucial activity to ensure safety using crack detection methods ...
Structural health monitoring and building assessment are crucial to acquire structures’ states and m...
Masonry structures represent the highest proportion of building stock worldwide. Currently, the stru...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
Cracks are a major sign of aging transportation infrastructure. The detection and repair of cracks i...
Cracks are common defects on surfaces of man-made structures such as pavements, bridges, walls of nu...
Automated crack detection technologies based on deep learning have been extensively used as one of t...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Abstract(#br)Automatic detection and segmentation of concrete cracks in tunnels remains a high-prior...
Crack detection on historical surfaces is of significant importance for credible and reliable inspec...
The advent of parallel computing capabilities, further boosted through the exploitation of graphics ...
Computer vision techniques can be applied to detect structural defects of different concrete structu...
Infrastructure, such as buildings, bridges, pavement, etc., needs to be examined periodically to mai...
Fatigue cracks are critical types of damage in steel structures due to repeated loads and distortion...
Large-scale structural health monitoring and damage detection of concealed underwater structures are...
Maintenance of infrastructures is a crucial activity to ensure safety using crack detection methods ...
Structural health monitoring and building assessment are crucial to acquire structures’ states and m...
Masonry structures represent the highest proportion of building stock worldwide. Currently, the stru...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
Cracks are a major sign of aging transportation infrastructure. The detection and repair of cracks i...
Cracks are common defects on surfaces of man-made structures such as pavements, bridges, walls of nu...
Automated crack detection technologies based on deep learning have been extensively used as one of t...