Remote sensing (RS) images play a significant role in disaster emergency response. Web2.0 changes the way data are created, making it possible for the public to participate in scientific issues. In this paper, an experiment is designed to evaluate the reliability of crowdsourcing buildings collapse assessment in the early time after an earthquake based on aerial remote sensing image. The procedure of RS data pre-processing and crowdsourcing data collection is presented. A probabilistic model including maximum likelihood estimation (MLE), Bayes’ theorem and expectation-maximization (EM) algorithm are applied to quantitatively estimate the individual error-rate and “ground truth” according to multiple participants’ assessment results. An expe...
This data set contains crowdsourced classification and damage assessment of images of an earthquake ...
Remote sensing imagery plays a crucial role in emergency management when hazard and disaster events ...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
This paper describes the evolution of recent work on using crowdsourced analysis of remote sensing i...
AbstractThe effects of earthquake can be devastating, it may cause significant life losses and prope...
Crowdsourcing is the act of taking a job traditionally performed by a designated agent (usually an e...
Abstract The serious natural disasters such as flood and earthquake result in great loss to human ev...
International audienceQuick building damage assessment following disasters such as large earthquakes...
This study explores the performance of GEOCAN, a remote-sensing and crowdsourcing platform for asses...
The management of seismic risk is an important aspect of social development. However, urbanization h...
Although supervised machine learning classification techniques have been successfully applied to det...
Earthquakes are one of the most catastrophic natural phenomena. After an earthquake, earthquake reco...
During a disaster, the activity of the crowd represents a very valuable source of the on-the-ground ...
The impact of natural disasters such as earthquakes on mankind has increased dramatically over the l...
This dataset is used to support findings in the paper "Explore the potential of using social media c...
This data set contains crowdsourced classification and damage assessment of images of an earthquake ...
Remote sensing imagery plays a crucial role in emergency management when hazard and disaster events ...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
This paper describes the evolution of recent work on using crowdsourced analysis of remote sensing i...
AbstractThe effects of earthquake can be devastating, it may cause significant life losses and prope...
Crowdsourcing is the act of taking a job traditionally performed by a designated agent (usually an e...
Abstract The serious natural disasters such as flood and earthquake result in great loss to human ev...
International audienceQuick building damage assessment following disasters such as large earthquakes...
This study explores the performance of GEOCAN, a remote-sensing and crowdsourcing platform for asses...
The management of seismic risk is an important aspect of social development. However, urbanization h...
Although supervised machine learning classification techniques have been successfully applied to det...
Earthquakes are one of the most catastrophic natural phenomena. After an earthquake, earthquake reco...
During a disaster, the activity of the crowd represents a very valuable source of the on-the-ground ...
The impact of natural disasters such as earthquakes on mankind has increased dramatically over the l...
This dataset is used to support findings in the paper "Explore the potential of using social media c...
This data set contains crowdsourced classification and damage assessment of images of an earthquake ...
Remote sensing imagery plays a crucial role in emergency management when hazard and disaster events ...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...