Vision foundation models are a new frontier in GeoAI research because of their potential to enable powerful image analysis by learning and extracting important image features from vast amounts of geospatial data. This paper evaluates the performance of the first-of-its-kind geospatial foundation model, IBM-NASA's Prithvi, to support a crucial geospatial analysis task: flood inundation mapping. This model is compared with popular convolutional neural network and vision transformer-based architectures in terms of mapping accuracy for flooded areas. A benchmark dataset, Sen1Floods11, is used in the experiments, and the models' predictability, generalizability, and transferability are evaluated based on both a test dataset and a dataset that is...
Geospatial Information Systems are used by researchers and Humanitarian Assistance and Disaster Resp...
Adaptive neuro-fuzzy inference system (ANFIS) includes two novel GIS-based ensemble artificial intel...
The Earth Observation (EO) domain can provide valuable information products that can significantly r...
Floods are large-scale natural disasters that often induce a massive number of deaths, extensive mat...
Identifying newly inundated areas following flood events is essential for planning rescue missions. ...
Floods can have devastating consequences on people, infrastructure, and the ecosystem. Satellite ima...
Successful flood recovery and evacuation require access to reliable flood depth information. Most ex...
This presentation was given as part of the GIS Day@KU symposium on November 15, 2017. For more infor...
Recent flood disasters, such as Hurricane Harvey in 2017, have emphasized the need for computational...
Floods are potentially devastating natural hazards that can threaten human life and ecosystems. The ...
Global flood hazard models have recently become a reality thanks to the release of open access globa...
Rapid response to natural hazards, such as floods, is essential to mitigate loss of life and the red...
New methods are needed for mapping floods in near real-time that leverage the increasing availabilit...
Deep learning techniques have been increasingly used in flood management to overcome the limitations...
Satellite remote sensing presents a cost-effective solution for synoptic flood monitoring, and satel...
Geospatial Information Systems are used by researchers and Humanitarian Assistance and Disaster Resp...
Adaptive neuro-fuzzy inference system (ANFIS) includes two novel GIS-based ensemble artificial intel...
The Earth Observation (EO) domain can provide valuable information products that can significantly r...
Floods are large-scale natural disasters that often induce a massive number of deaths, extensive mat...
Identifying newly inundated areas following flood events is essential for planning rescue missions. ...
Floods can have devastating consequences on people, infrastructure, and the ecosystem. Satellite ima...
Successful flood recovery and evacuation require access to reliable flood depth information. Most ex...
This presentation was given as part of the GIS Day@KU symposium on November 15, 2017. For more infor...
Recent flood disasters, such as Hurricane Harvey in 2017, have emphasized the need for computational...
Floods are potentially devastating natural hazards that can threaten human life and ecosystems. The ...
Global flood hazard models have recently become a reality thanks to the release of open access globa...
Rapid response to natural hazards, such as floods, is essential to mitigate loss of life and the red...
New methods are needed for mapping floods in near real-time that leverage the increasing availabilit...
Deep learning techniques have been increasingly used in flood management to overcome the limitations...
Satellite remote sensing presents a cost-effective solution for synoptic flood monitoring, and satel...
Geospatial Information Systems are used by researchers and Humanitarian Assistance and Disaster Resp...
Adaptive neuro-fuzzy inference system (ANFIS) includes two novel GIS-based ensemble artificial intel...
The Earth Observation (EO) domain can provide valuable information products that can significantly r...