Defining the Ideal Phenological Stage for Estimating Corn Yield Using Multispectral Images

Author:

Abreu Júnior Carlos Alberto Matias de1,Martins George Deroco1ORCID,Xavier Laura Cristina Moura1,Bravo João Vitor Meza2ORCID,Marques Douglas José1,Oliveira Guilherme de3ORCID

Affiliation:

1. Institute of Agrarian Sciences, Federal University of Uberlândia, Monte Carmelo 38500-000, Brazil

2. Institute of Geography, Federal University of Uberlândia, Monte Carmelo 38500-000, Brazil

3. Lallemand Soluções Biológicas LTDA, Patos de Minas 38706-420, Brazil

Abstract

Image-based spectral models assist in estimating the yield of maize. During the vegetative and reproductive phenological phases, the corn crop undergoes changes caused by biotic and abiotic stresses. These variations can be quantified using spectral models, which are tools that help producers to manage crops. However, defining the correct time to obtain these images remains a challenge. In this study, the possibility to estimate corn yield using multispectral images is hypothesized, while considering the optimal timing for detecting the differences caused by various phenological stages. Thus, the main objective of this work was to define the ideal phenological stage for taking multispectral images to estimate corn yield. Multispectral bands and vegetation indices derived from the Planet satellite were considered as predictor variables for the input data of the models. We used root mean square error percentage and mean absolute percentage error to evaluate the accuracy and trend of the yield estimates. The reproductive phenological phase R2 was found to be optimal for determining the spectral models based on the images, which obtained the best root mean square error percentage of 9.17% and the second-best mean absolute percentage error of 7.07%. Here, we demonstrate that it is possible to estimate yield in a corn plantation in a stage before the harvest through Planet multispectral satellite images.

Funder

Lallemand Plant Care

Publisher

MDPI AG

Subject

Agronomy and Crop Science

Reference52 articles.

1. Terliksiz, A.S., and Altýlar, D.T. (2019, January 16). Use of deep neural networks for crop yield prediction: A case study of soybean yield in Lauderdale County, Alabama, USA. Proceedings of the 8th International Conference on Agro654 Geoinformatics (Agro-Geoinformatics), Istanbul, Turkey.

2. Soil water content and actual evapotranspiration predictions using regression algorithms and remote sensing data;Filgueiras;Agric. Water Manag.,2020

3. Use of Remote-Sensing Imagery to Estimate Corn Grain Yield;Shanahan;Agron. J.,2001

4. Jensen, J. (2009). Remote Sensing of the Environment: An Earth Resource Perspective, Pearson PrenticeHall. [2nd ed.].

5. Estimation of soybean yield from machine learning techniques and multispectral RPAS imagery;Eugenio;Remote Sens. Appl. Soc. Environ.,2020

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