LAI estimation through remotely sensed NDVI following hail defoliation in maize (Zea mays L.) using Sentinel-2 and UAV imagery

Author:

Furlanetto JacopoORCID,Dal Ferro Nicola,Longo Matteo,Sartori Luigi,Polese Riccardo,Caceffo Daniele,Nicoli Lorenzo,Morari Francesco

Abstract

AbstractExtreme events such as hailstorms are a cause for concern in agriculture, leading to both economic and food supply losses. Traditional damage estimation techniques have recently been called into question since damages have rarely been quantified at the large-field scale. Damage-estimation methods used by field inspectors are complex and sometimes subjective and hardly account for damage spatial variability. In this work, a normalized difference vegetation index (NDVI)-based parametric method was applied using both unmanned aerial vehicles (UAV) and Sentinel-2 sensors to estimate the leaf area index (LAI) of maize (Zea mays L.) resulting from simulated hail damage. These methods were then compared to the LAI values generated from the Sentinel-2 Biophysical Processor. A two-year experiment (2020–2021) was conducted during the maize cropping season, with hail events simulated during a range of maize developmental stages (the 8th-leaf, flowering, milky and dough stages) using a 0–40% defoliation gradient of damage intensities performed with the aid of specifically designed prototype machines. The results showed that both sensors were able to accurately estimate LAI in a nonstandard damaged canopy while requiring only the calibration of the extinction coefficient $$k(\vartheta )$$ k ( ϑ ) in the case of parametric estimations. In this case, the calibration was performed using 2020 data, providing $$k(\vartheta )$$ k ( ϑ ) values of 0.59 for Sentinel-2 and 0.37 for the UAV sensor. The validation was performed on 2021 data, and showed that the UAV sensor had the best accuracy (R2 of 0.86, root-mean-square error (RMSE) of 0.71). The $$k(\vartheta )$$ k ( ϑ ) value proved to be sensor-specific, accounting for the NDVI retrieval differences likely caused by the different spatial operational scales of the two sensors. NDVI proved effective in parametrically estimating maize LAI under damaged canopy conditions at different defoliation degrees. The parametric method matched the Sentinel-2 biophysical process-generated LAI well, leading to less underestimations and more accurate LAI retrieval.

Funder

Società Cattolica di Assicurazione

Università degli Studi di Padova

Publisher

Springer Science and Business Media LLC

Subject

General Agricultural and Biological Sciences

Reference59 articles.

1. Abdelbaki, A., Schlerf, M., Retzlaff, R., Machwitz, M., Verrelst, J., & Udelhoven, T. (2021). Comparison of crop trait retrieval strategies using UAV-based VNIR hyperspectral imaging. Remote Sensing, 13(9), 1–25. https://doi.org/10.3390/rs13091748

2. Adão, T., Hruška, J., Pádua, L., Bessa, J., Peres, E., Morais, R., & Sousa, J. J. (2017). Hyperspectral imaging: A review on UAV-based sensors, data processing and applications for agriculture and forestry. Remote Sensing. https://doi.org/10.3390/rs9111110

3. Ali, M., Montzka, C., Stadler, A., Menz, G., Thonfeld, F., & Vereecken, H. (2015). Estimation and validation of RapidEye-based time-series of Leaf Area Index for winter wheat in the Rur catchment (Germany). Remote Sensing, 7(3), 2808–2831. https://doi.org/10.3390/rs70302808

4. Bell, J. R., Gebremichael, E., Molthan, A. L., Schultz, L. A., Meyer, F. J., Hain, C. R., Shrestha, S., & Cole Payne, K. (2020). Complementing optical remote sensing with synthetic aperture radar observations of hail damage swaths to agricultural crops in the central United States. Journal of Applied Meteorology and Climatology, 59(4), 665–685. https://doi.org/10.1175/JAMC-D-19-0124.1

5. Bell, J., Gebremichael, E., Molthan, A., Schultz, L., Meyer, F., & Shrestha, S. (2019). Synthetic aperture radar and optical remote sensing of crop damage attributed to severe weather in the central United States. International Geoscience and Remote Sensing Symposium (IGARSS). https://doi.org/10.1109/IGARSS.2019.8899775

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