Terrain features
Terrain features
part of the Knowledge extraction theme from CEGIS
Terrain refers to the land surface and its many components.
Terrain data, such as information about elevation, slope, aspect (the orientation of the land), can play an integral part in many land change and management studies.
These data are particularly useful in the form of digital elevation models (DEMs).
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!
-
Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications
Remote sensing (RS) techniques are essential for studying hazardous landslide events because they capture information and monitor sites at scale. They enable analyzing causes and impacts of ongoing events for disaster management. There has been a plethora of work in the literature mostly discussing (1) applications to detect, monitor, and predict landslides using various instruments and...AuthorsHessah Albanwan, Rongjun Qin, Jung-Kuan LiuHistorical maps inform landform cognition in machine learning Historical maps inform landform cognition in machine learning
No abstract available.AuthorsSamantha Arundel, Sinha Gaurav, Wenwen Li, David P. Martin, Kevin McKeehan, Philip ThiemGeomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System Geomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System
This research aims to conduct a geosemantic comparison of landforms classified in the Summit and Ridge feature classes in the Geographic Names Information System (GNIS). The comparison is based on a 2D shape analysis of manually delineated polygons produced by USGS staff to correspond to 33,304 Summit and 8,006 Ridge features. Five shape measures were chosen for this specific...AuthorsSinha Gaurav, Samantha Arundel, Romim Somadder, David P. Martin, Kevin McKeehanGeoImageNet: 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 HsuDeep learning detection and recognition of spot elevations on historic topographic maps Deep learning detection and recognition of spot elevations on historic topographic maps
Some information contained in historical topographic maps has yet to be captured digitally, which limits the ability to automatically query such data. For example, U.S. Geological Survey’s historical topographic map collection (HTMC) displays millions of spot elevations at locations that were carefully chosen to best represent the terrain at the time. Although research has attempted to...AuthorsSamantha Arundel, Trenton Morgan, Philip Thiem
CEGIS science themes
Theme topics home
Knowledge extraction
Deep learning (DL)
Feature extraction
Terrain features
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 Terrain features publications
All Knowledge extraction publications
All CEGIS publications
Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications
Historical maps inform landform cognition in machine learning Historical maps inform landform cognition in machine learning
Geomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System Geomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System
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
Deep learning detection and recognition of spot elevations on historic topographic maps Deep learning detection and recognition of spot elevations on historic topographic maps
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
Terrain refers to the land surface and its many components.
Terrain data, such as information about elevation, slope, aspect (the orientation of the land), can play an integral part in many land change and management studies.
These data are particularly useful in the form of digital elevation models (DEMs).
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!
-
Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications Remote sensing-based 3D assessment of landslides: A review of the data, methods, and applications
Remote sensing (RS) techniques are essential for studying hazardous landslide events because they capture information and monitor sites at scale. They enable analyzing causes and impacts of ongoing events for disaster management. There has been a plethora of work in the literature mostly discussing (1) applications to detect, monitor, and predict landslides using various instruments and...AuthorsHessah Albanwan, Rongjun Qin, Jung-Kuan LiuHistorical maps inform landform cognition in machine learning Historical maps inform landform cognition in machine learning
No abstract available.AuthorsSamantha Arundel, Sinha Gaurav, Wenwen Li, David P. Martin, Kevin McKeehan, Philip ThiemGeomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System Geomorphometric analysis of the Summit and Ridge classes of the Geographic Names Information System
This research aims to conduct a geosemantic comparison of landforms classified in the Summit and Ridge feature classes in the Geographic Names Information System (GNIS). The comparison is based on a 2D shape analysis of manually delineated polygons produced by USGS staff to correspond to 33,304 Summit and 8,006 Ridge features. Five shape measures were chosen for this specific...AuthorsSinha Gaurav, Samantha Arundel, Romim Somadder, David P. Martin, Kevin McKeehanGeoImageNet: 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 HsuDeep learning detection and recognition of spot elevations on historic topographic maps Deep learning detection and recognition of spot elevations on historic topographic maps
Some information contained in historical topographic maps has yet to be captured digitally, which limits the ability to automatically query such data. For example, U.S. Geological Survey’s historical topographic map collection (HTMC) displays millions of spot elevations at locations that were carefully chosen to best represent the terrain at the time. Although research has attempted to...AuthorsSamantha Arundel, Trenton Morgan, Philip Thiem
CEGIS science themes
Theme topics home
Knowledge extraction
Deep learning (DL)
Feature extraction
Terrain features
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!