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Random Forest Classification of Land Use, Land-Use Change and Forestry (LULUCF) Using Sentinel-2 Data—A Case Study of Czechia

Jan Svoboda, Přemysl Štych, Josef Laštovička, Daniel Paluba, Natalia Kobliuk

2022Remote Sensing89 citationsDOIOpen Access PDF

Abstract

Land use, land-use change and forestry (LULUCF) is a greenhouse gas inventory sector that evaluates greenhouse gas changes in the atmosphere from land use and land-use change. This study focuses on the development of a Sentinel-2 data classification according to the LULUCF requirements on the cloud-based platform Google Earth Engine (GEE). The methods are tested in selected larger territorial regions (two Czech NUTS 2 units) using data collected in 2018. The Random Forest method was used for classification. In terms of classification accuracy, a combination of these parameters was tested: The Number of Trees (NT), the Variables per Split (VPS) and the Bag Fraction (BF). A total of 450 combinations of different parameters were tested. The highest accuracy classification with an overall accuracy = 89.1% and Cohen’s Kappa = 0.84 had the following combination: NT = 150, VPS = 3 and BF = 0.1. For classification purposes, a mosaic was created using the median method. The resulting mosaic consisted of all Sentinel-2 bands in 10 and 20 m spatial resolution. Altitude values derived from SRTM and NDVI variance values were also included in the classification. These added bands were the most significant in terms of Gini importance.

Topics & Concepts

Land use, land-use change and forestryLand useShuttle Radar Topography MissionGreenhouse gasEnvironmental scienceForestryObject basedRemote sensingGeographyComputer scienceDigital elevation modelPixelGeologyEngineeringOceanographyCivil engineeringComputer visionRemote Sensing in AgricultureLand Use and Ecosystem ServicesRemote Sensing and LiDAR Applications
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