Learning to See More: UAS-Guided Super-Resolution of Satellite Imagery for Precision Agriculture
Arif Masrur, Peder A. Olsen, Paul R. Adler, Carlan Jackson, Matthew W. Myers, Nathan Sedghi, Ray R. Weil

TL;DR
This paper introduces a scalable super-resolution framework that fuses satellite and UAS imagery to enhance spatial and spectral detail for precision agriculture, significantly improving biomass and nitrogen estimation accuracy.
Contribution
It presents a novel, lightweight super-resolution system that combines satellite and UAS data, enabling cost-effective, high-resolution imagery for precision farming applications.
Findings
Improved biomass estimation accuracy by 18%
Enhanced nitrogen estimation accuracy by 31%
Effective spectral extension even without cloud-free satellite data
Abstract
Unmanned Aircraft Systems (UAS) and satellites are key data sources for precision agriculture, yet each presents trade-offs. Satellite data offer broad spatial, temporal, and spectral coverage but lack the resolution needed for many precision farming applications, while UAS provide high spatial detail but are limited by coverage and cost, especially for hyperspectral data. This study presents a novel framework that fuses satellite and UAS imagery using super-resolution methods. By integrating data across spatial, spectral, and temporal domains, we leverage the strengths of both platforms cost-effectively. We use estimation of cover crop biomass and nitrogen (N) as a case study to evaluate our approach. By spectrally extending UAS RGB data to the vegetation red edge and near-infrared regions, we generate high-resolution Sentinel-2 imagery and improve biomass and N estimation accuracy by…
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Taxonomy
TopicsRemote Sensing in Agriculture · Satellite Image Processing and Photogrammetry · Advanced Image Fusion Techniques
