Abstract:Mapping fluvial hydromorphology is an important part of defining river
habitat. Mapping via field sampling or hydraulic modelling is however
time consuming, and mapping hydromorphology directly from remote sensing
data may offer an efficient solution. Here we present a system for
automated classification of fluvial hydromorphology based on a deep
learning classification scheme applied to aerial orthophotos. Using
selected rivers in Norway, we show how surface flow patterns (smooth or
rippled surfaces versus st… Show more
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