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Title: Global 10 m Land Use Land Cover Datasets: A Comparison of Dynamic World, World Cover and Esri Land Cover

Journal Article · · Remote Sensing
DOI:https://doi.org/10.3390/rs14164101· OSTI ID:1888312
ORCiD logo [1];  [1]; ORCiD logo [2]; ORCiD logo [3];  [4]
  1. Norwegian Inst. for Nature Research (NINA), Oslo (Norway)
  2. Pacific Northwest National Lab. (PNNL), Richland, WA (United States)
  3. Norwegian Inst. for Nature Research (NINA), Oslo (Norway); Univ. of Oslo (Norway)
  4. Univ. of the Witwatersrand, Johannesburg (South Africa); Univ. of Cape Town (South Africa)

The European Space Agency’s Sentinel satellites have laid the foundation for global land use land cover (LULC) mapping with unprecedented detail at 10 m resolution. We present a cross-comparison and accuracy assessment of Google’s Dynamic World (DW), ESA’s World Cover (WC) and Esri’s Land Cover (Esri) products for the first time in order to inform the adoption and application of these maps going forward. For the year 2020, the three global LULC maps show strong spatial correspondence (i.e., near-equal area estimates) for water, built area, trees and crop LULC classes. However, relative to one another, WC is biased towards over-estimating grass cover, Esri towards shrub and scrub cover and DW towards snow and ice. Using global ground truth data with a minimum mapping unit of 250 m2, we found that Esri had the highest overall accuracy (75%) compared to DW (72%) and WC (65%). Across all global maps, water was the most accurately mapped class (92%), followed by built area (83%), tree cover (81%) and crops (78%), particularly in biomes characterized by temperate and boreal forests. The classes with the lowest accuracies, particularly in the tundra biome, included shrub and scrub (47%), grass (34%), bare ground (57%) and flooded vegetation (53%). When using European ground truth data from LUCAS (Land Use/Cover Area Frame Survey) with a minimum mapping unit of <100 m2, we found that WC had the highest accuracy (71%) compared to DW (66%) and Esri (63%), highlighting the ability of WC to resolve landscape elements with more detail compared to DW and Esri. Although not analyzed in our study, we discuss the relative advantages of DW due to its frequent and near real-time data delivery of both categorical predictions and class probability scores. We recommend that the use of global LULC products should involve critical evaluation of their suitability with respect to the application purpose, such as aggregate changes in ecosystem accounting versus site-specific change detection in monitoring, considering trade-offs between thematic resolution, global versus. local accuracy, class-specific biases and whether change analysis is necessary. We also emphasize the importance of not estimating areas from pixel-counting alone but adopting best practices in design-based inference and area estimation that quantify uncertainty for a given study area.

Research Organization:
Pacific Northwest National Lab. (PNNL), Richland, WA (United States)
Sponsoring Organization:
USDOE; Norwegian Research Council
Grant/Contract Number:
AC05-76RL01830; 320042
OSTI ID:
1888312
Report Number(s):
PNNL-SA-176888
Journal Information:
Remote Sensing, Vol. 14, Issue 16; ISSN 2072-4292
Publisher:
MDPICopyright Statement
Country of Publication:
United States
Language:
English

References (41)

Land Use and Land Cover Area Estimates From Class Membership Probability of a Random Forest Classification journal January 2022
Methods for mapping ecosystem service supply: a review journal February 2012
Key issues in rigorous accuracy assessment of land cover products journal September 2019
Ecosystem condition underpins the generation of ecosystem services: an accounting perspective journal June 2022
An Ecoregion-Based Approach to Protecting Half the Terrestrial Realm journal April 2017
Towards a unification of unified theories of biodiversity: Towards a unified unified theory journal April 2010
ESA WorldCover 10 m 2020 v100 dataset January 2021
Copernicus Global Land Cover Layers—Collection 2 journal March 2020
Urban warming advances spring phenology but reduces the response of phenology to temperature in the conterminous United States journal February 2020
Harmonised LUCAS in-situ land cover and use database for field surveys from 2006 to 2018 in the European Union journal October 2020
Per-pixel land cover accuracy prediction: A random forest-based method with limited reference sample data journal February 2021
Reduction in human activity can enhance the urban heat island: insights from the COVID-19 lockdown journal May 2021
Finer-Resolution Mapping of Global Land Cover: Recent Developments, Consistency Analysis, and Prospects journal March 2021
Representing a new MODIS consistent land surface in the Community Land Model (CLM 3.0) journal January 2007
Hierarchical mapping of annual global land cover 2001 to present: The MODIS Collection 6 Land Cover product journal March 2019
Monitoring biodiversity in the Anthropocene using remote sensing in species distribution models journal March 2020
Assessment of Implementing Satellite-Derived Land Cover Data in the Eta Model journal June 2003
Towards a systematics of ecodiversity: The EcoSyst framework journal August 2020
Dynamic World, Near real-time global 10 m land use land cover mapping journal June 2022
Demystifying LandTrendr and CCDC temporal segmentation journal June 2022
How to assess the temporal dynamics of landscape connectivity in ever-changing landscapes: a literature review journal June 2021
Benefits of the free and open Landsat data policy journal April 2019
Medium Spatial Resolution Mapping of Global Land Cover and Land Cover Change Across Multiple Decades From Landsat journal June 2022
A critical look at representations of urban areas in global maps journal September 2007
Establishing the SEEA Ecosystem Accounting as a global standard journal April 2022
Potential contributions of remote sensing to ecosystem service assessments journal April 2014
Good practices for estimating area and assessing accuracy of land change journal May 2014
Landscape ecological concepts in planning: review of recent developments journal January 2021
The openEO API–Harmonising the Use of Earth Observation Cloud Services Using Virtual Data Cube Functionalities journal March 2021
High resolution prediction maps of solitary bee diversity can guide conservation measures journal January 2022
Google Earth Engine: Planetary-scale geospatial analysis for everyone journal December 2017
Continental-Scale Land Cover Mapping at 10 m Resolution Over Europe (ELC10) journal June 2021
Setting reference levels and limits for good ecological condition in terrestrial ecosystems – Insights from a case study based on the IBECA approach journal September 2020
Sentinel-2 Data for Land Cover/Use Mapping: A Review journal July 2020
Remote sensing of forest degradation: a review journal September 2020
Towards delivering on the Sustainable Development Goals using Earth observations journal September 2020
Recent Applications of Landsat 8/OLI and Sentinel-2/MSI for Land Use and Land Cover Mapping: A Systematic Review journal September 2020
Predicting individual pixel error in remote sensing soft classification journal September 2017
Global land cover mapping at 30m resolution: A POK-based operational approach journal May 2015
A critical analysis of the potential for EU Common Agricultural Policy measures to support wild pollinators on farmland journal April 2020
Mapping pan-European land cover using Landsat spectral-temporal metrics and the European LUCAS survey journal February 2019