TN
T. Nikaein
5 records found
1
Physics-Guided Machine Learning Based Forward-Modeling of Radar Observables
A Case Study on Sentinel-1 Observations of Corn-Fields
Artificial neural networks have the potential to model the interaction of radar signals with vegetation but often do not follow the physical rules. This paper aims to develop a new physics-guided machine learning approach that combines neural networks and physics-based models to
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In this article, our aim is to estimate synthetic aperture radar (SAR) observables, such as backscatter in VV and VH polarizations, as well as the VH/VV ratio, cross ratio, and interferometric coherence in VV, from agricultural fields. In this study, we use the decision support s
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This paper presents an approach to implement a forward model for Sentinel-1 copol and crosspol backscatter and coherence using crop bio-geophysical parameters namely leaf area index, biomass, canopy height, soil moisture and root zone moisture as inputs for the maize. These requi
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Synthetic aperture radar (SAR) acquisitions are mainly deemed suitable for mapping dynamic land-cover and land-use scenarios due to their timeliness and reliability. This particularly applies to Sentinel-1 imagery. Nevertheless, the accurate mapping of regions characterized by a
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The study is aimed at understanding the value of interferometric coherence in mapping regions characterized by a mixture of crops and grasses. The results highlight that a 5% improvement in the classification accuracy can be achieved by using the coherence in addition to the back
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