Map semantics
Map semantics
part of the Semantics theme from CEGIS
Map applications assisted by artificial intelligence use visual and logic semantics for integrating attribute, property, and portrayal data.
Users can search along directed links, analyze results and their visual representation, specify further criteria for the interface to apply to query selections along the graph edges and filter to return relevant results.
Publications
You will find here a sampling of publications. More are available and are being published throughout the year.
Check back often or view our custom search for more!
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GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning
The field of GeoAI or Geospatial Artificial Intelligence has undergone rapid development since 2017. It has been widely applied to address environmental and social science problems, from understanding climate change to tracking the spread of infectious disease. A foundational task in advancing GeoAI research is the creation of open, benchmark datasets to train and evaluate the...AuthorsWenwen Li, Sizhe Wang, Samantha Arundel, Chia-Yu HsuA geospatial knowledge graph prototype for national topographic mapping A geospatial knowledge graph prototype for national topographic mapping
Knowledge graphs are a form of database representation and handling that show the potential to better meet the challenges of data interoperability, semi-automated information reasoning, and information retrieval. Geospatial knowledge graphs (GKG) have at their core specialized forms of applied ontology that provide coherent spatial context to a domain of information including non-spatial...AuthorsDalia E. VarankaGeoAI and the future of spatial analytics GeoAI and the future of spatial analytics
This chapter discusses the challenges of traditional spatial analytical methods in their limited capacity to handle big and messy data, as well as mining unknown or latent patterns. It then introduces a new form of spatial analytics—geospatial artificial intelligence (GeoAI)—and describes the advantages of this new strategy in big data analytics and data-driven discovery. Finally, a...AuthorsWenwen Li, Samantha ArundelGeoAI in the US Geological Survey for topographic mapping GeoAI in the US Geological Survey for topographic mapping
Geospatial artificial intelligence (GeoAI) can be defined broadly as the application of artificial intelligence methods and techniques to geospatial data, processes, models, and applications. The application of these methods to topographic data and phenomena is a focus of research in the US Geological Survey (USGS). Specifically, the USGS has researched and developed applications in...AuthorsE. Lynn Usery, Samantha Arundel, Ethan J. Shavers, Larry Stanislawski, Philip T. Thiem, Dalia E. VarankaThe 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure
The need of citizens in any nation to access geospatial data in readily usable form is critical to societal well-being, and in the United States (US), demands for information by scientists, students, professionals and citizens continue to grow. Areas such as public health, urbanization, resource management, economic development and environmental management require a variety of data...AuthorsBarbara P. Buttenfield, Larry Stanislawski, Barry J. Kronenfeld, Ethan J. Shavers
CEGIS science themes
Theme topics home
Semantics
Federated vocabulary
Language texts
Map semantics
You will find here a sampling of publications. More are available and are being published throughout the year.
Check back often or view our custom search for more!
All Map semantics publications
All Semantics publications
All CEGIS publications
GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning
A geospatial knowledge graph prototype for national topographic mapping A geospatial knowledge graph prototype for national topographic mapping
GeoAI and the future of spatial analytics GeoAI and the future of spatial analytics
GeoAI in the US Geological Survey for topographic mapping GeoAI in the US Geological Survey for topographic mapping
The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure
CEGIS - Denver, Colorado

CEGIS - Rolla, Missouri

Samantha T Arundel, PhD
Research Director
Senior Science Advisor
Ethan Shavers, PhD
CEGIS Section Chief/ Supervisory Geographer
Jung kuan (Ernie) Liu
Physical Research Scientist
Map applications assisted by artificial intelligence use visual and logic semantics for integrating attribute, property, and portrayal data.
Users can search along directed links, analyze results and their visual representation, specify further criteria for the interface to apply to query selections along the graph edges and filter to return relevant results.
Publications
You will find here a sampling of publications. More are available and are being published throughout the year.
Check back often or view our custom search for more!
-
GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning
The field of GeoAI or Geospatial Artificial Intelligence has undergone rapid development since 2017. It has been widely applied to address environmental and social science problems, from understanding climate change to tracking the spread of infectious disease. A foundational task in advancing GeoAI research is the creation of open, benchmark datasets to train and evaluate the...AuthorsWenwen Li, Sizhe Wang, Samantha Arundel, Chia-Yu HsuA geospatial knowledge graph prototype for national topographic mapping A geospatial knowledge graph prototype for national topographic mapping
Knowledge graphs are a form of database representation and handling that show the potential to better meet the challenges of data interoperability, semi-automated information reasoning, and information retrieval. Geospatial knowledge graphs (GKG) have at their core specialized forms of applied ontology that provide coherent spatial context to a domain of information including non-spatial...AuthorsDalia E. VarankaGeoAI and the future of spatial analytics GeoAI and the future of spatial analytics
This chapter discusses the challenges of traditional spatial analytical methods in their limited capacity to handle big and messy data, as well as mining unknown or latent patterns. It then introduces a new form of spatial analytics—geospatial artificial intelligence (GeoAI)—and describes the advantages of this new strategy in big data analytics and data-driven discovery. Finally, a...AuthorsWenwen Li, Samantha ArundelGeoAI in the US Geological Survey for topographic mapping GeoAI in the US Geological Survey for topographic mapping
Geospatial artificial intelligence (GeoAI) can be defined broadly as the application of artificial intelligence methods and techniques to geospatial data, processes, models, and applications. The application of these methods to topographic data and phenomena is a focus of research in the US Geological Survey (USGS). Specifically, the USGS has researched and developed applications in...AuthorsE. Lynn Usery, Samantha Arundel, Ethan J. Shavers, Larry Stanislawski, Philip T. Thiem, Dalia E. VarankaThe 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure
The need of citizens in any nation to access geospatial data in readily usable form is critical to societal well-being, and in the United States (US), demands for information by scientists, students, professionals and citizens continue to grow. Areas such as public health, urbanization, resource management, economic development and environmental management require a variety of data...AuthorsBarbara P. Buttenfield, Larry Stanislawski, Barry J. Kronenfeld, Ethan J. Shavers
CEGIS science themes
Theme topics home
Semantics
Federated vocabulary
Language texts
Map semantics
You will find here a sampling of publications. More are available and are being published throughout the year.
Check back often or view our custom search for more!
All Map semantics publications
All Semantics publications
All CEGIS publications
GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning GeoImageNet: A multi-source natural feature benchmark dataset for GeoAI and supervised machine learning
A geospatial knowledge graph prototype for national topographic mapping A geospatial knowledge graph prototype for national topographic mapping
GeoAI and the future of spatial analytics GeoAI and the future of spatial analytics
GeoAI in the US Geological Survey for topographic mapping GeoAI in the US Geological Survey for topographic mapping
The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure The 4th paradigm in multiscale data representation: Modernizing the National Geospatial Data Infrastructure
CEGIS - Denver, Colorado

CEGIS - Rolla, Missouri
