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C-band synthetic aperture radar (SAR) imagery for the classification of diverse cropping systems

Authors :
Robertson, Laura Dingle
Davidson, Andrew M.
McNairn, Heather
Hosseini, Mehdi
Mitchell, Scott
Abelleyra, Diego De
Verón, Santiago
Maire, Guerric Le
Plannells, Milena
Valero, Silvia
Ahmadian, Nima
Coffin, Alisa
Bosch, David
Cosh, Michael H.
Basso, Bruno
Saliendra, Nicanor
Publisher :
Taylor & Francis

Abstract

Cloudy conditions reduce the utility of optical imagery for crop monitoring. New constellations of satellites – including the RADARSAT Constellation Mission (RCM) and Sentinel-1A/B, both available under free and open data policies – can be used to create stacks of dense seasonal C-band Synthetic Aperture Radar (SAR) data. Yet to date, the contribution of SAR imagery to operational crop mapping is often limited to that of a gap-filler, compensating for optical data obscured by clouds. The Joint Experiment for Crop Assessment and Monitoring (JECAM) SAR Inter-Comparison Experiment is a multi-year, multi-partner project focused on evaluating methods for SAR-based crop classification. Stacks of dense time-series SAR imagery, from RADARSAT-2 and Sentinel-1 satellites, were acquired for 10 sites located in six countries. Decision Tree (DT) and Random Forest (RF) classification methodologies were applied to these SAR data-stacks, as well as to data-stacks of optical only, and optimized SAR/optical data combinations. For the dense time-series SAR stacks, overall classification accuracies above 85% and 80% were obtained for 6 of 10 and 8 of 10 sites, respectively. For maize, the SAR-only data delivered user’s and producer’s accuracies greater than 90% for half the sites. For soya bean, accuracies greater than 80% were reported for 5 of 9 sites and classification accuracies were greater than 80% for wheat on half the sites. Classification results were influenced by the mix and number of agriculture classes present at each site, the available SAR imagery, as well as the training and validation data sets for individual crop types. These results have important operational implications for regions of the world dominated by cloudy conditions and the lack of adequate amounts of optical imagery to support satellite-based crop monitoring.

Subjects

Subjects :
2. Zero hunger
15. Life on land

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........ff818cd7ed5ce15450dd48982f45912d