2015 Urban Extents from VIIRS and MODIS for the Continental U.S. Using Machine Learning Methods

The 2015 Urban Extents from VIIRS and MODIS for the Continental U.S. Using Machine Learning Methods data set models urban settlements in the Continental United States (CONUS) as of 2015. When applied to the combination of daytime spectral and nighttime lights satellite data, the machine learning methods achieved high accuracy at an intermediate-resolution of 500 meters at large spatial scales. The input data for these models were two types of satellite imagery: Visible Infrared Imaging Radiometer Suite (VIIRS) Nighttime Light (NTL) data from the Day/Night Band (DNB), and Moderate Resolution Imaging Spectroradiometer (MODIS) corrected daytime Normalized Difference Vegetation Index (NDVI). Although several machine learning methods were evaluated, including Random Forest (RF), Gradient Boosting Machine (GBM), Neural Network (NN), and the Ensemble of RF, GBM, and NN (ESB), the highest accuracy results were achieved with NN, and those results were used to delineate the urban extents in this data set.

Data and Resources

Additional Info

Field Value
Maintainer Earthdata Forum
Last Updated June 9, 2026, 00:10 (UTC)
Created May 18, 2026, 22:06 (UTC)
accessLevel public
bureauCode {026:00}
catalog_conformsTo https://project-open-data.cio.gov/v1.1/schema
harvest_object_id c507a014-e810-469b-9b20-91ab7e20e500
harvest_source_id b99e41c6-fe79-4c19-bbc3-9b6c8111bfac
harvest_source_title Science Discovery Engine
identifier 10.7927/a49b-sm16
license https://www.usa.gov/government-works
modified 2026-06-03T16:52:52Z
programCode {026:000}
publisher ESDIS
resource-type Dataset
source_datajson_identifier true
source_hash 27ca133fad001045351ffdcf45affb318e607341ea68bb3365dd697e6352fdd9
source_schema_version 1.1
spatial ["CARTESIAN", [{"NorthBoundingCoordinate": 84, "WestBoundingCoordinate": -180, "EastBoundingCoordinate": 180, "SouthBoundingCoordinate": -56}]]
temporal 2015-01-01/2015-12-31
theme {"Earth Science"}