This paper investigates automatic prediction of seismic building structural types described by the Global Earthquake Model (GEM) taxonomy, by combining remote sensing, cadastral and inspection data in a supervised machine learning approach. Our focus lies on the extraction of detailed geometric information from a point cloud gained by aerial laser scanning. To describe the geometric shape of a building we apply Shape-DNA, a spectral shape descriptor based on the eigenvalues of the Laplace-Beltrami operator. In a first experiment on synthetically generated building stock we succeed in predicting the roof type of different buildings with accuracies above 80%, only relying on the Shape-DNA. The roof type of a building thereby serves as an exam...
In this paper, the applicability and performance of linear discriminant analysis (LDA) for building ...
Accurate seismic risk modeling requires knowledge of key structural characteristics of buildings. Ho...
Seismic risk assessment represents a major challenge in countries with considerable seismic hazard a...
This paper investigates automatic prediction of seismic building structural types described by the G...
This paper investigates automatic prediction of seismic building structural types described by the G...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
Detailed information about seismic building structural types (SBSTs) is crucial for accurate earthqu...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
In this work, we exploit supervised machine learning (ML) to investigate the relationship between a...
The rapid and accurate assessment of building damage states using only post-event remote sensing dat...
This paper illustrates an innovative methodology for post-earthquake collapsed building recognition,...
In order to evaluate the seismic vulnerability at large scale, it is necessary to gain awareness of ...
Assessing the seismic vulnerability of large numbers of buildings is an expensive and time-consuming...
An exposure model is a key component for assessing potential human and economic losses from natural ...
In this paper, the applicability and performance of linear discriminant analysis (LDA) for building ...
Accurate seismic risk modeling requires knowledge of key structural characteristics of buildings. Ho...
Seismic risk assessment represents a major challenge in countries with considerable seismic hazard a...
This paper investigates automatic prediction of seismic building structural types described by the G...
This paper investigates automatic prediction of seismic building structural types described by the G...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
Detailed information about seismic building structural types (SBSTs) is crucial for accurate earthqu...
This study proposes a methodology based on machine learning (ML) algorithms for rapid and robust cla...
In this work, we exploit supervised machine learning (ML) to investigate the relationship between a...
The rapid and accurate assessment of building damage states using only post-event remote sensing dat...
This paper illustrates an innovative methodology for post-earthquake collapsed building recognition,...
In order to evaluate the seismic vulnerability at large scale, it is necessary to gain awareness of ...
Assessing the seismic vulnerability of large numbers of buildings is an expensive and time-consuming...
An exposure model is a key component for assessing potential human and economic losses from natural ...
In this paper, the applicability and performance of linear discriminant analysis (LDA) for building ...
Accurate seismic risk modeling requires knowledge of key structural characteristics of buildings. Ho...
Seismic risk assessment represents a major challenge in countries with considerable seismic hazard a...