Automated precise seeding with drones and artificial intelligence: a workflow
Metadata
Show full item recordAuthor
Castro Gutiérrez, Jorge; Alcaraz Segura, Domingo; L. Baltzer, Jennifer; Amorós, Lot; Morales Rueda, Fernando; Tabik, SihamEditorial
Wiley Online Library
Materia
aerial seeding forest restoration microsite
Date
2024-05-02Referencia bibliográfica
Castro Gutiérrez, J. et. al. Restoration Ecology Vol. 32, No. 5, e14164. [https://doi.org/10.1111/rec.14164]
Sponsorship
Projects SmartFoRest (Ref. TED2021-129690B-I00) funded by MCIN/AEI/10.13039/ 501100011033 and project LIFEWATCH-2019-10-UGR-4, co-funded by the Ministry of Science and Innovation and European Union NextGenerationEU/PRTR through the FEDER funds from the Spanish Pluriregional Operational Program 2014–2020; Salvador de Madariaga grant from the Spanish Government; Canada Research Chairs program; University of Granada/CBUAAbstract
Aerial seeding with drones has great potential in forest restoration but faces enormous challenges to be efficient and scalable.
Current protocols use blanket seeding throughout the area to be restored, meaning a high demand for seed since many seeds
arrive in sites unsuitable for establishment. High precision seeding directed to safe microsites at submeter scale could reduce
seed use per hectare, reducing economic and ecological costs, while increasing establishment success. Here, we propose an alternative,
precision approach to make drone seeding more successful and efficient. This requires (1) submeter-scale selection of
target microsites for seeding founded in ecological knowledge; (2) high-resolution remote sensing imagery to train artificial
intelligence (AI) systems in target microsite recognition; and (3) process automation by transferring target microsite coordinates
from the AI system to the drone. This will reduce seed inputs per unit area, seedling establishment failure risks, and drone
operation costs.