Detailed information about seismic building structural types (SBSTs) is crucial for accurate earthquake vulnerability and risk modeling as it reflects the main load-bearing structures of buildings and, thus, the behavior under seismic load. However, for numerous urban areas in earthquake prone regions this information is mostly outdated, unavailable, or simply not existent. To this purpose, we present an effective approach to estimate SBSTs by combining scarce in situ observations, multi-sensor remote sensing data and machine learning techniques. In particular, an approach is introduced, which deploys a sequential procedure comprising five main steps, namely calculation of features from remote sensing data, feature selection, outlier...
The management of seismic risk is an important aspect of social development. However, urbanization h...
International audienceIn this paper, seismic vulnerability assessment is addressed under the umbrell...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
Detailed information about seismic building structural types (SBSTs) is crucial for accurate earthqu...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
The ongoing global transformation of human habitats from rural villages to ever growing urban agglom...
We quantitatively evaluate the suitability of multi-sensor remote sensing to assess the seismic vul...
This paper quantitatively evaluates the suitability of multi-sensor remote sensing to assess the sei...
The impact of natural disasters such as earthquakes on mankind has increased dramatically over the l...
The seismic building structural type (SBST) reflects the main load-bearing structure of a building a...
This paper investigates automatic prediction of seismic building structural types described by the G...
Assessing the seismic vulnerability of large numbers of buildings is an expensive and time-consuming...
In this paper, seismic vulnerability assessment is addressed under the umbrella of remote sensing. A...
The management of seismic risk is an important aspect of social development. However, urbanization h...
International audienceIn this paper, seismic vulnerability assessment is addressed under the umbrell...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
Detailed information about seismic building structural types (SBSTs) is crucial for accurate earthqu...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
The ongoing global transformation of human habitats from rural villages to ever growing urban agglom...
We quantitatively evaluate the suitability of multi-sensor remote sensing to assess the seismic vul...
This paper quantitatively evaluates the suitability of multi-sensor remote sensing to assess the sei...
The impact of natural disasters such as earthquakes on mankind has increased dramatically over the l...
The seismic building structural type (SBST) reflects the main load-bearing structure of a building a...
This paper investigates automatic prediction of seismic building structural types described by the G...
Assessing the seismic vulnerability of large numbers of buildings is an expensive and time-consuming...
In this paper, seismic vulnerability assessment is addressed under the umbrella of remote sensing. A...
The management of seismic risk is an important aspect of social development. However, urbanization h...
International audienceIn this paper, seismic vulnerability assessment is addressed under the umbrell...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...