On January 12th, 2010, a catastrophic 7.0M earthquake devastated the country of Haiti. In the aftermath of an earthquake, it is important to rapidly assess damaged areas in order to mobilize the appropriate resources. The Haiti damage assessment effort introduced a promising model that uses crowdsourcing to map damaged areas in freely available remotely-sensed data. This paper proposes the application of machine learning methods to improve this model. Specifically, we apply work on learning from multiple, imperfect experts to the assessment of volunteer reliability, and propose the use of image segmentation to automate the detection of damaged areas. We wrap both tasks in an active learning framework in order to shift volunteer effort from ...
The availability of information during a climate crisis event is critical for crisis managers to ass...
The adoption of artificial intelligence in post-earthquake inspections and reconnaissance has receiv...
After significant earthquakes, we can see images posted on social media platforms by individuals and...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
This paper describes the evolution of recent work on using crowdsourced analysis of remote sensing i...
High resolution, city-level exposure databases are important tools for risk planning and damage asse...
The recent advances of mobile sensing and artificial intelligence (AI) have brought new revolutions ...
This data set contains crowdsourced classification and damage assessment of images of an earthquake ...
This paper proposes a new framework for rapid earthquake loss assessment based on a machine learning...
Rapid earthquake damage and loss assessment is crucial both for insuring the safety of inhabitants i...
High-resolution satellite imagery available immediately after disaster events is crucial for respons...
Earthquakes cause massive damage to people and structures. The capacity to quickly assess damage ove...
Earthquakes lead to enormous harm to life and assets. The ability to quickly assess damage across a ...
Remote sensing continues to be an invaluable tool in earthquake damage assessments and emergency res...
Formal response organizations perform rapid damage assessments after natural and human-induced disas...
The availability of information during a climate crisis event is critical for crisis managers to ass...
The adoption of artificial intelligence in post-earthquake inspections and reconnaissance has receiv...
After significant earthquakes, we can see images posted on social media platforms by individuals and...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
This paper describes the evolution of recent work on using crowdsourced analysis of remote sensing i...
High resolution, city-level exposure databases are important tools for risk planning and damage asse...
The recent advances of mobile sensing and artificial intelligence (AI) have brought new revolutions ...
This data set contains crowdsourced classification and damage assessment of images of an earthquake ...
This paper proposes a new framework for rapid earthquake loss assessment based on a machine learning...
Rapid earthquake damage and loss assessment is crucial both for insuring the safety of inhabitants i...
High-resolution satellite imagery available immediately after disaster events is crucial for respons...
Earthquakes cause massive damage to people and structures. The capacity to quickly assess damage ove...
Earthquakes lead to enormous harm to life and assets. The ability to quickly assess damage across a ...
Remote sensing continues to be an invaluable tool in earthquake damage assessments and emergency res...
Formal response organizations perform rapid damage assessments after natural and human-induced disas...
The availability of information during a climate crisis event is critical for crisis managers to ass...
The adoption of artificial intelligence in post-earthquake inspections and reconnaissance has receiv...
After significant earthquakes, we can see images posted on social media platforms by individuals and...