Annual field-scale maps of tall and short crops at the global scale using GEDI and Sentinel-2
Stefania Di Tommaso, Sherrie Wang, Vivek Vajipey, Noel Gorelick, Rob, Strey, David B. Lobell

TL;DR
This study develops global maps distinguishing tall and short crops using GEDI lidar data combined with Sentinel-2 satellite imagery, achieving high accuracy with minimal ground data in diverse regions.
Contribution
The paper introduces a novel method leveraging GEDI lidar data to train Sentinel-2 models for global crop height classification, reducing reliance on ground labels.
Findings
GEDI data reliably classifies tall vs short crops after filtering extreme shots.
Temporal frequency of tall crops identifies peak growth months.
Sentinel-2 models achieve 87-90% accuracy across multiple continents.
Abstract
Crop type maps are critical for tracking agricultural land use and estimating crop production. Remote sensing has proven an efficient and reliable tool for creating these maps in regions with abundant ground labels for model training, yet these labels remain difficult to obtain in many regions and years. NASA's Global Ecosystem Dynamics Investigation (GEDI) spaceborne lidar instrument, originally designed for forest monitoring, has shown promise for distinguishing tall and short crops. In the current study, we leverage GEDI to develop wall-to-wall maps of short vs tall crops on a global scale at 10 m resolution for 2019-2021. Specifically, we show that (1) GEDI returns can reliably be classified into tall and short crops after removing shots with extreme view angles or topographic slope, (2) the frequency of tall crops over time can be used to identify months when tall crops are at…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Forest ecology and management
