Random forest classification of inundation following hurricane florence (2018) via l-band synthetic aperture radar and ancillary datasets

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Abstract

In response to Hurricane Florence of 2018, NASA JPL collected quad-pol L-band SAR data with the Uninhabited Aerial Vehicle Synthetic Aperture Radar (UAVSAR) instrument, observing record-setting river stages across North and South Carolina. Fully-polarized SAR images allow for mapping of inundation extent at a high spatial resolution with a unique advantage over optical imaging, stemming from the sensor’s ability to penetrate cloud cover and dense vegetation. This study used random forest classification to generate maps of inundation from L-band UAVSAR imagery processed using the Freeman–Durden decomposition method. An average overall classification accuracy of 87% is achieved with this methodology, with areas of both under-and overprediction for the focus classes of open water and inundated forest. Fuzzy logic operations using hydrologic variables are used to reduce the number of small noise-like features and false detections in areas unlikely to retain water. Following postclassification refinement, estimated flood extents were combined to an event maximum for societal impact assessments. Results from the Hurricane Florence case study are discussed in addition to the limitations of available validation data for accuracy assessments.

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Melancon, A. M., Molthan, A. L., Griffin, R. E., Mecikalski, J. R., Schultz, L. A., & Bell, J. R. (2021). Random forest classification of inundation following hurricane florence (2018) via l-band synthetic aperture radar and ancillary datasets. Remote Sensing, 13(24). https://doi.org/10.3390/rs13245098

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