4.7 Article

Synergy of Sentinel-1 and Sentinel-2 Imagery for Early Seasonal Agricultural Crop Mapping

Journal

REMOTE SENSING
Volume 13, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/rs13234891

Keywords

sentinel image time series; early crop mapping; classification; high-dimensional data fusion

Funding

  1. European Commission (EC) under SENSAGRI project [730074]

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The study utilized Sentinel-1 and Sentinel-2 data to produce accurate early seasonal crop map products by building a crop classification processing chain. Evaluation experiments were conducted at three European test sites with different agricultural systems, demonstrating the benefits of decision-level fusion strategies.
The exploitation of the unprecedented capacity of Sentinel-1 (S1) and Sentinel-2 (S2) data offers new opportunities for crop mapping. In the framework of the SenSAgri project, this work studies the synergy of very high-resolution Sentinel time series to produce accurate early seasonal binary cropland mask and crop type map products. A crop classification processing chain is proposed to address the following: (1) high dimensionality challenges arising from the explosive growth in available satellite observations and (2) the scarcity of training data. The two-fold methodology is based on an S1-S2 classification system combining the so-called soft output predictions of two individually trained classifiers. The performances of the SenSAgri processing chain were assessed over three European test sites characterized by different agricultural systems. A large number of highly diverse and independent data sets were used for validation experiments. The agreement between independent classification algorithms of the Sentinel data was confirmed through different experiments. The presented results assess the interest of decision-level fusion strategies, such as the product of experts. Accurate crop map products were obtained over different countries in the early season with limited training data. The results highlight the benefit of fusion for early crop mapping and the interest of detecting cropland areas before the identification of crop types.

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