Early-Season Crop Mapping on an Agricultural Area in Italy Using X-Band Dual-Polarization SAR Satellite Data and Convolutional Neural Networks
Early-Season Crop Mapping on an Agricultural Area in Italy Using X-Band Dual-Polarization SAR Satellite Data and Convolutional Neural Networks
Blog Article
Early-season crop mapping provides decision-makers with timely information on crop types and conditions that are crucial for agricultural management.Current satellite-based mapping solutions mainly rely on optical imagery, albeit limited by weather conditions.Very few exploit long-time series of polarized synthetic aperture radar (SAR) imagery.
To address this gap, we assessed the performance of COSMO-SkyMed
The 3-D classifier structure and the combination of HH+VV backscatter provide the best classification accuracy, especially during the first months of each year, i.e., 80% already in April 2020 and in May 2021.
Overall accuracy above 90% is always marked from June using the 3-D classifier with HH, VV, and HH+VV backscatter.These experiments showcase the value of the developed SAR-based early-season crop mapping approach.The influence of vegetation phenology, structure, density, biomass, and turgor on the CNN classifier using