An exposure model is a key component for assessing potential human and economic losses from natural disasters. An exposure model consists of a spatially disaggregated description of the infrastructure and population of a region under study. Depending on the size of the settlement area, developing such models can be a costly and time-consuming task. In this paper we use a manually annotated dataset consisting of approximately 10,000 photos acquired at street level in the urban area of Medellín to explore the potential for using a convolutional neural network (CNN) to automatically detect building materials and types of lateral-load resisting systems, which are attributes that define a building's structural typology (which is a key issue in e...
The speed and accuracy of seismic loss estimation are central to effective post-earthquake emergency...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
The amount of structural damage image data produced in the aftermath of an earthquake can be stagger...
An exposure model is a key component for assessing potential human and economic losses from natural ...
Knowledge on the key structural characteristics of exposed buildings is crucial for accurate risk mo...
Accurate seismic risk modeling requires knowledge of key structural characteristics of buildings. Ho...
Accurate building characterization is a key component of multi-hazard risk analysis. Collecting such...
Seismic risk assessment represents a major challenge in countries with considerable seismic hazard a...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
The urban region's seismic resilience is being actively studied in recent years as a measure for ris...
Exciting research is being conducted using Google\u27s Street View imagery. Researchers can have acc...
In order for a risk assessment to deliver sensible results, exposure in the concerned area must be k...
Seismically vulnerable, especially collapse-prone, buildings often represent the greatest life-safet...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
The speed and accuracy of seismic loss estimation are central to effective post-earthquake emergency...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
The amount of structural damage image data produced in the aftermath of an earthquake can be stagger...
An exposure model is a key component for assessing potential human and economic losses from natural ...
Knowledge on the key structural characteristics of exposed buildings is crucial for accurate risk mo...
Accurate seismic risk modeling requires knowledge of key structural characteristics of buildings. Ho...
Accurate building characterization is a key component of multi-hazard risk analysis. Collecting such...
Seismic risk assessment represents a major challenge in countries with considerable seismic hazard a...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
The urban region's seismic resilience is being actively studied in recent years as a measure for ris...
Exciting research is being conducted using Google\u27s Street View imagery. Researchers can have acc...
In order for a risk assessment to deliver sensible results, exposure in the concerned area must be k...
Seismically vulnerable, especially collapse-prone, buildings often represent the greatest life-safet...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
The speed and accuracy of seismic loss estimation are central to effective post-earthquake emergency...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
The amount of structural damage image data produced in the aftermath of an earthquake can be stagger...