4.7 Article

Prototyping Sentinel-2 green LAI and brown LAI products for cropland monitoring

Journal

REMOTE SENSING OF ENVIRONMENT
Volume 255, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2020.112168

Keywords

Photosynthetic and non-photosynthetic vegetation; Gaussian processes regression (GPR); Machine learning; Green LAI; Brown LAI; Sentinel-2

Funding

  1. European Commission (EC) under the Horizon 2020 SENSAGRI project [730074]
  2. Generalitat Valenciana [ACIF/2019/187]
  3. European Research Council (ERC) under the ERC-2017-STGSENTIFLEX project [755617]
  4. H2020 SENSAGRI project [730074]
  5. Ministry of Education, Youth and Sports of CR within the CzeCOS program [LM2018123]

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Ground measurements and spectral data were used to develop GPR models for green and brown LAI estimation, generating a high-resolution multiband LAI product. The product was validated with in situ data, showing improved accuracy compared to traditional methods and providing valuable insights into vegetation dynamics.
For agricultural applications, identification of non-photosynthetic above-ground vegetation is of great interest as it contributes to assess harvest practices, detecting crop residues or drought events, as well as to better predict the carbon, water and nutrients uptake. While the mapping of green Leaf Area Index (LAI) is well established, current operational retrieval models are not calibrated for LAI estimation over senescent, brown vegetation. This not only leads to an underestimation of LAI when crops are ripening, but is also a missed monitoring opportunity. The high spatial and temporal resolution of Sentinel-2 (52) satellites constellation offers the possibility to estimate brown LAI (LAI(B)) next to green LAI (LAI(G)). By using LAI ground measurements from multiple campaigns associated with airborne or satellite spectra, Gaussian processes regression (GPR) models were developed for both LAI(G) and LAI(B), providing alongside associated uncertainty estimates, which allows to mask out unreliable LAI retrievals with higher uncertainties. A processing chain was implemented to apply both models to 52 images, generating a multiband LAI product at 20 m spatial resolution. The models were adequately validated with insitu data from various European study sites (LAI(G): R-2 = 0.7, RMSE = 0.67 m(2)/m(2); LAI(B): R-2 = 0.62, RMSE = 0.43 m(2)/m(2)). Thanks to the 52 bands in the red edge (B5: 705 nm and B6: 740 nm) and in the shortwave infrared (B12: 2190 nm) a distinction between LAI(G) and LAI(B) can be achieved. To demonstrate the capability of LAI(B) to identify when crops start senescing, 52 time series were processed over multiple European study sites and seasonal maps were produced, which show the onset of crop senescence after the green vegetation peak. Particularly, the LAI(B) product permits the detection of harvest (i.e., sudden drop in LAI(B)) and the determination of crop residues (i.e., remaining LAI(B)), although a better spectral sampling in the shortwave infrared would have been desirable to disentangle brown LAI from soil variability and its perturbing effects. Finally, a single total LAI product was created by merging LAI(G) and LAI(B) estimates, and then compared to the LAI derived from 52 L2B biophysical processor integrated in SNAP. The spatiotemporal analysis results confirmed the improvement of the proposed descriptors with respect to the standard SNAP LAI product accounting only for photosynthetically active green vegetation.

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