National Land Cover Database 2019: A new strategy for creating clean leaf-on and leaf-off Landsat composite images

ISPRS Journal of Photogrammetry and Remote Sensing
By: , and 

Links

Abstract

National Land Cover Database (NLCD) 2019 is a new epoch of national land cover products for the conterminous United States. Image quality is fundamental to the quality of any land cover product. Image preprocessing has often taken a considerable proportion of overall time and effort for this kind of national project. An approach to prepare image inputs for NLCD 2019 production was developed to ensure efficiency and quality of operational production. Here, we introduce a new and comprehensive strategy to produce clear Landsat composite images for NLCD 2019 production. First, we developed a new median-value compositing method. Second, we designed parameter settings for selecting images and pixels to generate 4 composite images (leaf-on, leaf-off, primary reference, and complementary reference) for a target year based on the US Landsat Analysis Ready Data surface reflectance dataset. Third, we developed a method, referred to as Detection and Filling with Simulated Image, to detect and replace clouds and cloud shadow pixels to produce the final clean leaf-on and leaf-off image composites. This image compositing and processing strategy was implemented for the entire conterminous United States to produce images for NLCD 2019. Our image results and NLCD 2019 change detection and land cover products, which were released in July 2021, showed this new strategy to be effective and efficient.
Publication type Article
Publication Subtype Journal Article
Title National Land Cover Database 2019: A new strategy for creating clean leaf-on and leaf-off Landsat composite images
Series title ISPRS Journal of Photogrammetry and Remote Sensing
DOI 10.34133/remotesensing.0022
Volume 3
Year Published 2023
Language English
Publisher AAAS
Contributing office(s) Earth Resources Observation and Science (EROS) Center, Advanced Research Computing (ARC)
Description 0022, 13 p.
Google Analytic Metrics Metrics page
Additional publication details