4.7 Article

Mapping Particle Size and Soil Organic Matter in Tropical Soil Based on Hyperspectral Imaging and Non-Imaging Sensors

期刊

REMOTE SENSING
卷 13, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/rs13091782

关键词

PLSR; proximal sensing; remote sensing; soil attributes

资金

  1. Coordination of Superior Level Staff Improvement-CAPES
  2. National Council for Scientific and Technological Development-CNPq
  3. Brazilian Innovation Agency-FINEP [C. 0673/13]
  4. Central Public-Interest Scientific Institution Basal Research Fund [Y2021GH18]
  5. Talented Young Scientist Program-China Science and Technology Exchange Center [Brazil] [19-004]

向作者/读者索取更多资源

This study evaluated the use of airborne hyperspectral imaging and non-imaging sensors to assess particle size and soil organic matter in tropical soils. By applying Partial Least Square Regression (PLSR), predictive maps for clay, sand, and soil organic matter were successfully developed, demonstrating strong correlations between the predictor variables and actual measurements.
We evaluated the use of airborne hyperspectral imaging and non-imaging sensors in the Vis-NIR-SWIR spectral region to assess particle size and soil organic matter in the surface layer of tropical soils (Oxisols, Ultisols, Entisols). The study area is near Piracicaba municipality, Sao Paulo state, Brazil, in a sugarcane cultivation area of 135 hectares. The study area, with bare soil, was imaged in April 2016 by the AisaFENIX aerotransported hyperspectral sensor, with spectral resolution of 3.5 nm between 380 and 970 nm, and 12 nm between 970 and 2500 nm. We collected 66 surface soil samples. The samples were analyzed for particle size and soil organic matter content. Laboratory spectral measurements were performed using a non-imaging spectroradiometer (ASD FieldSpec 3 Jr). Partial Least Square Regression (PLSR) was used to predict clay, silt, sand and soil organic matter (SOM). The PLSR functions developed were applied to the hyperspectral image of the study area, allowing development of a prediction map of clay, sand, and SOM. The developed PLSR models demonstrated the relationship between the predictor variables at the cross-validation step, both for the non-imaging and imaging sensors, when the highest r and R-2 values were obtained for clay, sand, and SOM, with R-2 over 0.67. We did not obtain a satisfactory model for silt content. For the non-imaging sensor at the prediction step, R-2 values for clay and SOM were over 0.7 and sand was lower than 0.54. The imaging sensor yielded models for clay, sand, and SOM with R-2 values of 0.62, 0.66, and 0.67, respectively. Pearson correlation between sensors was greater than 0.849 for the prediction of clay, sand, and SOM. Our study successfully generated, from the imaging sensor, a large-scale and detailed predicted soil maps for particle size and SOM, which are important in the management of tropical soils.

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