Can Unmanned Aerial Vehicle Images Be Used to Estimate Forage Production Parameters in Agroforestry Systems in the Caatinga?

Author:

Santos Wagner Martins dos1ORCID,Costa Claudenilde de Jesus Pinheiro2,Medeiros Maria Luana da Silva3ORCID,Jardim Alexandre Maniçoba da Rosa Ferraz4ORCID,Cunha Márcio Vieira da2,Dubeux Junior José Carlos Batista5ORCID,Jaramillo David Mirabedini6ORCID,Bezerra Alan Cezar3ORCID,Souza Evaristo Jorge Oliveira de1ORCID

Affiliation:

1. Postgraduate Program in Plant Production, Academic Unit of Serra Talhada, Federal Rural University of Pernambuco, Serra Talhada 56909-535, Brazil

2. Postgraduate Program in Animal Science, Federal Rural University of Pernambuco, Recife 52171-900, Brazil

3. Academic Unit of Serra Talhada, Federal Rural University of Pernambuco, Serra Talhada 56909-535, Brazil

4. Department of Biodiversity, Institute of Biosciences, São Paulo State University—UNESP, Rio Claro 13506-900, Brazil

5. North Florida Research and Education Center, University of Florida, Marianna, FL 32446, USA

6. U.S. Dairy Forage Research Center, USDA-ARS, Marshfield, WI 54449, USA

Abstract

The environmental changes in the Caatinga biome have already resulted in it reaching levels of approximately 50% of its original vegetation, making it the third most degraded biome in Brazil, due to inadequate grazing practices that are driven by the difficulty of monitoring and estimating the yield parameters of forage plants, especially in agroforestry systems (AFS) in this biome. This study aimed to compare the predictive ability of different indexes with regard to the biomass and leaf area index of forage crops (bushveld signal grass and buffel grass) in AFS in the Caatinga biome and to evaluate the influence of removing system components on model performance. The normalized green red difference index (NGRDI) and the visible atmospherically resistant index (VARI) showed higher correlations (p < 0.05) with the variables. In addition, removing trees from the orthomosaics was the approach that most favored the correlation values. The models based on classification and regression trees (CARTs) showed lower RMSE values, presenting values of 3020.86, 1201.75, and 0.20 for FB, DB, and LAI, respectively, as well as higher CCC values (0.94). Using NGRDI and VARI, removing trees from the images, and using CART are recommended in estimating biomass and leaf area index in agroforestry systems in the Caatinga biome.

Funder

Foundation for the Support of Science and Technology of the State of Pernambuco

Coordination for the Improvement of Higher Education Personnel

São Paulo Research Foundation—FAPESP

National Council for Scientific and Technological Development—CNPq

Publisher

MDPI AG

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