Spatial and Spectral Dependencies of Maize Yield Estimation Using Remote Sensing
Nathan Burglewski,
Subhashree Srinivasagan,
Quirine Ketterings
et al.
Abstract:Corn (Zea mays L.) is the most abundant food/feed crop, making accurate yield estimation a critical data point for monitoring global food production. Sensors with varying spatial/spectral configurations have been used to develop corn yield models from intra-field (0.1 m ground sample distance (GSD)) to regional scales (>250 m GSD). Understanding the spatial and spectral dependencies of these models is imperative to result interpretation, scaling, and deploying models. We leveraged high spatial resolution hy… Show more
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