Prediction statistical model for soil organic carbon mapping in crop areas using the Landsat/OLI sensor.
Abstract: The quantification of soil organic carbon (SOC) is essential to agriculture and sustainable use of the land. However, there are difficulties to estimate it in large areas due to high cost of soil sample extraction, and laboratory preparations. There are approaches that may facilitate the estimation of SOC, such as the use of satellite imagery and the application of statistical models based on the spectral bands of the satellite under study. In July of 2017, this study proposed a prediction statistical model from optical-orbital data of the series Landsat, OLI sensor for estimating SOC content.
Main Authors: | , , , , , , , |
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Other Authors: | |
Format: | Anais e Proceedings de eventos biblioteca |
Language: | English eng |
Published: |
2020-01-21
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Subjects: | Linear regression, Landsat OLI, Carbono, Solo, Regressão Linear, Satélite, Soil organic carbon, Prediction, Regression analysis, Linear models, |
Online Access: | http://www.alice.cnptia.embrapa.br/alice/handle/doc/1119120 |
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Summary: | Abstract: The quantification of soil organic carbon (SOC) is essential to agriculture and sustainable use of the land. However, there are difficulties to estimate it in large areas due to high cost of soil sample extraction, and laboratory preparations. There are approaches that may facilitate the estimation of SOC, such as the use of satellite imagery and the application of statistical models based on the spectral bands of the satellite under study. In July of 2017, this study proposed a prediction statistical model from optical-orbital data of the series Landsat, OLI sensor for estimating SOC content. |
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