4.7 Article

Quantifying Hail Damage in Crops Using Sentinel-2 Imagery

Journal

REMOTE SENSING
Volume 14, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/rs14040951

Keywords

hail-to-crop damage; Sentinel-2; remote sensing; precision agriculture; time-series analysis; vegetation index

Funding

  1. Organic Science Cluster (OSCI)

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This study estimates hail damage to crops in the Canadian Prairies using vegetation indices calculated from Sentinel-2 images. The temporal changes in vegetation indices were found to correlate well with ground estimates of hail damage.
Hailstorms are a frequent natural weather disaster in the Canadian Prairies that can cause catastrophic damage to field crops. Assessment of damage for insurance claims requires insurance inspectors to visit individual fields and estimate damage on individual plants. This study computes temporal profiles and estimates the severity of hail damage to crops in 54 fields through the temporal analysis of vegetation indices calculated from Sentinel-2 images. The damage estimation accuracy of eight vegetative indices in different temporal analyses of delta index (pre-and post-hail differences) or area under curve (AUC) index (time profiles of index affected by hail) was compared. Hail damage was accurately quantified by using the AUC of 32 days of Normalized Difference Vegetation Indices (NDVI), Normalized Difference Water Index (NDWI), and Plant Senescence Radiation Index (PSRI). These metrics were well correlated with ground estimates of hail damage in canola (r = -0.90, RMSE = 8.24), wheat (r = -0.86, RMSE = 12.27), and lentil (r = 0.80, RMSE = 17.41). Thus, the timeseries changes in vegetation indices had a good correlation with ground estimates of hail damage which may allow for more accurate assessment of the extent and severity of hail damage to crop land.

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