The survey of building pathologies is focused on reading the state of conservation of the building, composed by the survey of constructive and decorative details, the masonry layering, the crack pattern, the degradation and the color recognition. The drawing of these representations is a time-consuming task, accomplished by manual work by skilled operators who often rely on in-situ analysis and on pictures. In this project three-dimensional an automated method for the condition survey of reinforced concrete spalling has been developed. To realize the automated image-based survey it has been exploited the Mask R-CNN neural network. The training phase has been executed over the original model, providing new examples of images with concrete co...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
Machine learning is one of the key pillars of industry 4.0 that has enabled rapid technological adva...
Applications of Machine Learning (ML) algorithms in Structural Health Monitoring (SHM) have recently...
This paper reports on the development of an artificial intelligence system, based on convolutional n...
This study presents an exploration of several machine learning and image processing theories, as wel...
Road and railway bridges play a crucial role for the infrastructure network in Sweden to work smooth...
As a primary component of a Bridge Management System (BMS), prediction models are crucial for planni...
Detecting the early degradation of concrete structures can assist agencies in forecasting and planni...
Bridges in Ukraine are one of the most important components of the infrastructure, requiring attenti...
Buildings and infrastructure in congested metropolitan areas are continuously deteriorating. Various...
Nowadays inspections of civil engineering structures are performed manually at close range to be abl...
Bridge inspections are relied heavily on visual inspection, and usually conducted within limited tim...
Conventional practices of bridge visual inspection present several limitations, including a tedious ...
016400212017Final ReportPDFTech ReportPart of DTRT13-G-UTC37GirdersReinforced concrete bridgesStruct...
The aim of the work reported herein was to explore the possibilities of integrating new ways of sur...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
Machine learning is one of the key pillars of industry 4.0 that has enabled rapid technological adva...
Applications of Machine Learning (ML) algorithms in Structural Health Monitoring (SHM) have recently...
This paper reports on the development of an artificial intelligence system, based on convolutional n...
This study presents an exploration of several machine learning and image processing theories, as wel...
Road and railway bridges play a crucial role for the infrastructure network in Sweden to work smooth...
As a primary component of a Bridge Management System (BMS), prediction models are crucial for planni...
Detecting the early degradation of concrete structures can assist agencies in forecasting and planni...
Bridges in Ukraine are one of the most important components of the infrastructure, requiring attenti...
Buildings and infrastructure in congested metropolitan areas are continuously deteriorating. Various...
Nowadays inspections of civil engineering structures are performed manually at close range to be abl...
Bridge inspections are relied heavily on visual inspection, and usually conducted within limited tim...
Conventional practices of bridge visual inspection present several limitations, including a tedious ...
016400212017Final ReportPDFTech ReportPart of DTRT13-G-UTC37GirdersReinforced concrete bridgesStruct...
The aim of the work reported herein was to explore the possibilities of integrating new ways of sur...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
Machine learning is one of the key pillars of industry 4.0 that has enabled rapid technological adva...
Applications of Machine Learning (ML) algorithms in Structural Health Monitoring (SHM) have recently...