Early-season crop mapping provides decision makers with timely information on crop type 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 X-band dual polarized (HH, VV) data in a test area in Ponte a Elsa (central Italy) in January-September 2020 and 2021. A deep learning convolutional neural network (CNN) classifier arranged with two different architectures (one- and three-dimensional) was trained and used to recognize ten classes. Validation was undertaken with in-situ measurements from regular field campaigns carried out during satellite overpasses over more than 100 plots each year. The three-dimensional 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 three-dimensional 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 X-band data requires further investigations, along with the relatively low producer accuracy marked by vineyard and uncultivated fields.

Early-Season Crop Mapping on an Agricultural Area in Italy Using X-band Dual-Polarization SAR Satellite Data and Convolutional Neural Networks

Fontanelli, Giacomo;Lapini, Alessandro;Santurri, Leonardo;Pettinato, Simone;Santi, Emanuele;Ramat, Giuliano;Pilia, Simone;Baroni, Fabrizio;Tapete, Deodato;Cigna, Francesca;Paloscia, Simonetta
2022

Abstract

Early-season crop mapping provides decision makers with timely information on crop type 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 X-band dual polarized (HH, VV) data in a test area in Ponte a Elsa (central Italy) in January-September 2020 and 2021. A deep learning convolutional neural network (CNN) classifier arranged with two different architectures (one- and three-dimensional) was trained and used to recognize ten classes. Validation was undertaken with in-situ measurements from regular field campaigns carried out during satellite overpasses over more than 100 plots each year. The three-dimensional 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 three-dimensional 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 X-band data requires further investigations, along with the relatively low producer accuracy marked by vineyard and uncultivated fields.
2022
Istituto di Fisica Applicata - IFAC
Istituto di Scienze dell'Atmosfera e del Clima - ISAC
convolutional neural network
COSMO- SkyMed
crop early mapping
deep learning
dual polarization
SAR
X-band
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/419860
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