Aerial hyperspectral imagery and deep neural networks for high-throughput yield phenotyping in wheat
Ali Moghimi, Ce Yang, James A. Anderson

TL;DR
This study presents an automated framework using aerial hyperspectral imagery and deep neural networks to estimate wheat yield at sub-plot scale, enhancing high-throughput phenotyping and crop selection efficiency.
Contribution
The paper introduces a novel integration of UAV-based hyperspectral imaging, image processing, and deep learning for detailed yield prediction within wheat plots.
Findings
Yield prediction coefficient of determination 0.79
Root mean square error of 5.90 grams in yield estimation
Framework enables remote inspection and analysis of yield variation
Abstract
Crop production needs to increase in a sustainable manner to meet the growing global demand for food. To identify crop varieties with high yield potential, plant scientists and breeders evaluate the performance of hundreds of lines in multiple locations over several years. To facilitate the process of selecting advanced varieties, an automated framework was developed in this study. A hyperspectral camera was mounted on an unmanned aerial vehicle to collect aerial imagery with high spatial and spectral resolution. Aerial images were captured in two consecutive growing seasons from three experimental yield fields composed of hundreds experimental plots (1x2.4 meter), each contained a single wheat line. The grain of more than thousand wheat plots was harvested by a combine, weighed, and recorded as the ground truth data. To leverage the high spatial resolution and investigate the yield…
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