Litcius/Paper detail

Sentinel-2 and Landsat-8 potentials for high-resolution mapping of the shifting agricultural landscape mosaic systems of southern Cameroon

Christin Steve Keyamfe Nwagoum, Martin Yemefack, Francis B.T. Silatsa, Fritz Tabi Oben

2023International Journal of Applied Earth Observation and Geoinformation10 citationsDOIOpen Access PDF

Abstract

Remotely sensed data is well-used for monitoring dynamics in land-use and land-cover (LULC). However, in previous studies, delineating small-size LULC within shifting agricultural landscape mosaic systems (SALMS) in the Congo basin has shown limitations when Landsat-7 is used, due to its spatial and spectral resolutions. Although Landsat-8 and Sentinel-2 data could provide a better contribution, their use in disaggregating these small-size LULC over degraded humid forest remains underexploited. This research evaluated the potential of Landsat-8 and Sentinel-2 data to support the disaggregation of small-size LULC within the SALMS. Statistical analyses of spectra data points were applied to (i) assess the spectral separability of LULC classes by bands, (ii) identify the suitable band-combinations, and (iii) compare the accuracy of both sensors for LULC mapping within the landscape. The results revealed that four Landsat-8 bands (2, 3, 5, and 6) and seven Sentinel-2 bands (2–4, and 7–11) showed good spectral separability. Two Landsat-8 band-combinations ([2–5-6] and [3–5-6]), with the highest Optimum Index Factor scores of 1416 and 1756 respectively, were suitable for colour-composition, while Sentinel-2 band-combination [8–11-4] did the same with a score of 473. At the reference level, there was no significant difference (p > 0.05) between Landsat-8 and Sentinel-2 generated maps. However, Sentinel-2, with 91 % accuracy, had a better capability to delineate small-size LULC within the landscape compared to Landsat-8 (85 % accuracy). This result provides an advantage towards accurate LULC monitoring with respect to carbon stock change estimates within the SALMS in the Congo, Amazonian and Southeast Asia basins.

Topics & Concepts

Land coverRemote sensingMosaicGeographySpectral bandsCartographyLand useHigh resolutionNormalized Difference Vegetation IndexPhysical geographyEnvironmental scienceGeologyClimate changeEcologyBiologyArchaeologyOceanographyRemote Sensing in AgricultureLand Use and Ecosystem ServicesRemote Sensing and Land Use