This work shows the potential use of neural networks in the characterization of eruptive events monitored by satellite, through fast and automatic classification of multispectral images. The algorithm has been developed for the MODIS instrument and can easily be extended to other similar sensors. Six classes have been defined paying particular attention to image regions that represent the different surfaces that could possibly be found under volcanic ash clouds. Complex cloudy scenarios composed by images collected during the Icelandic eruptions of the Eyjafjallajökull (2010) and Grimsvötn (2011) volcanoes have been considered as test cases. A sensitivity analysis on the MODIS TIR and VIS channels has been performed to optimize the algorith...
After the eruption of volcanoes around the world, monitoring of the dispersion of ash in the atmosph...
This paper describes an application of artificial neural networks for the recognition of volcanic ...
Artificial neural networks (ANNs) are a valuable and well-established inversion technique for the es...
This work shows the potential use of neural networks in the characterization of eruptive events moni...
The lesson learned from the recent Icelandic Eyjafjallajokull volcanic eruption is the need to obtai...
abstract In the present work, analysis techniques of satellite data in the TIR (Thermal Infrared) a...
Accurate automatic volcanic cloud detection by means of satellite data is a challenging task and is ...
Volcanic ash clouds detection and retrieval represent a key issue for aviation safety due to the har...
Volcanic ash clouds detection and retrieval represent a key issue for aviation safety due to the ha...
Due to the climate effects and aviation threats of volcanic eruptions, it is important to accurate...
In this work neural networks (NNs) have been used for the retrieval of volcanic ash and sulfur dioxi...
The great eruption of the Icelandic Eyjafjallajokull volcano that occurred from the 14th of April to...
In this work neural networks (NNs) have been used for the retrieval of volcanic ash and sulfur dioxi...
After the eruption of volcanoes around the world, monitoring of the dispersion of ash in the atmosph...
This paper describes an application of artificial neural networks for the recognition of volcanic ...
Artificial neural networks (ANNs) are a valuable and well-established inversion technique for the es...
This work shows the potential use of neural networks in the characterization of eruptive events moni...
The lesson learned from the recent Icelandic Eyjafjallajokull volcanic eruption is the need to obtai...
abstract In the present work, analysis techniques of satellite data in the TIR (Thermal Infrared) a...
Accurate automatic volcanic cloud detection by means of satellite data is a challenging task and is ...
Volcanic ash clouds detection and retrieval represent a key issue for aviation safety due to the har...
Volcanic ash clouds detection and retrieval represent a key issue for aviation safety due to the ha...
Due to the climate effects and aviation threats of volcanic eruptions, it is important to accurate...
In this work neural networks (NNs) have been used for the retrieval of volcanic ash and sulfur dioxi...
The great eruption of the Icelandic Eyjafjallajokull volcano that occurred from the 14th of April to...
In this work neural networks (NNs) have been used for the retrieval of volcanic ash and sulfur dioxi...
After the eruption of volcanoes around the world, monitoring of the dispersion of ash in the atmosph...
This paper describes an application of artificial neural networks for the recognition of volcanic ...
Artificial neural networks (ANNs) are a valuable and well-established inversion technique for the es...