01805naa a2200241 a 450000100080000000500110000800800410001910000240006024501050008426000090018950001270019852009100032565000240123565000230125965300280128265300360131065300420134665300230138870000230141170000220143470000180145677300890147420918162019-02-25 2018 bl uuuu u00u1 u #d1 aMORAES, A. G. de L. aRelationship between remote sensing data and field-observed interril erosion.h[electronic resource] c2018 aTítulo em português: Relação entre dados de sensoriamento remoto e perdas de solo em entressulcos observadas em campo. aThe objective of this work was to evaluate the relationship between different remote sensing data, derived from satellite images, and interrill soil losses obtained in the field by using a portable rainfall simulator. The study was carried out in an area of a hydrographic basin, located in Médio Paraíba do Sul, in the state of Rio de Janeiro ? one of the regions most affected by water erosion in Brazil. Evaluations were performed for different vegetation indices (NDVI, Savi, EVI, and EVI2) and fraction images (FI), derived from linear spectral mixture analysis (LSMA), obtained from RapidEye, Sentinel2A, and Landsat 8 OLI images. Vegetation indices are more adequate to predict soil loss than FI, highlighting EVI2, whose exponential model showed R2 of 0.74. The best prediction models are generated from the RapidEye image, which shows the highest spatial resolution among the sensors evaluated. aRainfall simulators aSimulador de Chuva aÍndices de vegetação aLinear spectral mixing analysis aModelos lineares de mistura espectral aVegetation indices1 aCARVALHO, D. F. de1 aANTUNES, M. A. H.1 aCEDDIA, M. B. tPesquisa Agropecuária Brasileira, Brasília, DFgv. 53, n. 3, p.332-342, mar. 2018.