Samantha T Arundel, PhD
Dr. Samantha T. Arundel is a research geographer in the Center of Excellence for Geospatial Information Science at the U.S. Geological Survey. Her research focuses on automating physical feature mapping and modeling using various techniques like traditional raster modeling, GEOBIA and machine learning.
Dr. Samantha T. Arundel (Sam) received her Ph.D. in geography from Arizona State University in 2000 and was an assistant and then associate professor at Northern Arizona University where her research focused on spatial modeling and automation of plant/climate relationships. In 2009, when she joined the USGS, she first served as raster specialist in the Ortho & Elevation section and as elevation and hydrography specialist for the Applied Research and Technology Branch. During this time, she led the contour generation development team in developing algorithms for automating contour production from 10-meter elevation data for the USTopo product; and served as the program manager for the automation of the National Elevation Dataset production, in its transition from Earth Resource Observation System (EROS) to the National Geospatial Technical Operations Center (NGTOC). In 2015, Sam moved to the Center of Excellence for Geospatial Information Science, the research section of the NGTOC, where she is a Research Geographer conducting research on automated terrain mapping and modeling using various techniques like traditional raster modeling, geographic object-based image analysis and machine learning.
Science and Products
Deep learning detection and recognition of spot elevations on historic topographic maps
The evolution of geospatial reasoning, analytics, and modeling
GeoAI in the US Geological Survey for topographic mapping
Spatial data reduction through element -of-interest (EOI) extraction
Improving the positional and vertical accuracy of named summits above 13,000 ft in the United States
Automated extraction of areal extents for GNIS Summit features using the eminence core method
GeoNat v1.0: A dataset for natural feature mapping with artificial intelligence and supervised learning
Automated location correction and spot height generation for named summits in the coterminous United States
A spatio-contextual probabilistic model for extracting linear features in hilly terrain from high-resolution DEM data
The effect of resolution on terrain feature extraction
Deep convolutional neural networks for map-type classification
The National Elevation Dataset
Non-USGS Publications**
**Disclaimer: The views expressed in Non-USGS publications are those of the author and do not represent the views of the USGS, Department of the Interior, or the U.S. Government.
Science and Products
Deep learning detection and recognition of spot elevations on historic topographic maps
The evolution of geospatial reasoning, analytics, and modeling
GeoAI in the US Geological Survey for topographic mapping
Spatial data reduction through element -of-interest (EOI) extraction
Improving the positional and vertical accuracy of named summits above 13,000 ft in the United States
Automated extraction of areal extents for GNIS Summit features using the eminence core method
GeoNat v1.0: A dataset for natural feature mapping with artificial intelligence and supervised learning
Automated location correction and spot height generation for named summits in the coterminous United States
A spatio-contextual probabilistic model for extracting linear features in hilly terrain from high-resolution DEM data
The effect of resolution on terrain feature extraction
Deep convolutional neural networks for map-type classification
The National Elevation Dataset
Non-USGS Publications**
**Disclaimer: The views expressed in Non-USGS publications are those of the author and do not represent the views of the USGS, Department of the Interior, or the U.S. Government.