Weed Detection and Mapping of a Coffee Farm by a Remotely Piloted Aircraft System

Author:

Bento Nicole Lopes1ORCID,Ferraz Gabriel Araújo e Silva1ORCID,Amorim Jhones da Silva2ORCID,Santana Lucas Santos1,Barata Rafael Alexandre Pena1,Soares Daniel Veiga1,Ferraz Patrícia Ferreira Ponciano1ORCID

Affiliation:

1. Department of Agricultural Engineering, School of Engineering, Federal University of Lavras—UFLA, Trevo Rotatório Professor Edmir Sá Santos, s/n, P.O. Box 3037, Lavras 37200-900, Brazil

2. Academic Unit Specialized in Agricultural Sciences, Agricultural School of Jundiaí, Federal University of Rio Grande do Norte, RN 160, Km 03, District of Jundiaí, P.O. Box 07, Macaíba 59280-000, Brazil

Abstract

The differentiation between the main crop and weeds is an important step for selective spraying systems to avoid agrochemical waste and reduce economic and environmental impacts. In this sense, this study aims to classify and map the area occupied by weeds, determine the percentage of area occupied, and indicate treatment control strategies to be adopted in the field. This study was conducted by using a yellow Bourbon cultivar (IAC J10) with 1 year of implementation on a commercial coffee plantation located at Minas Gerais, Brazil. The aerial images were obtained by a remotely piloted aircraft (RPA) with an embedded multispectral sensor. Image processing was performed using PIX4D, and data analysis was performed using R and QGIS. The random forest (RF) and support vector machine (SVM) algorithms were used for the classification of the regions of interest: coffee, weed, brachiaria, and exposed soil. The differentiation between the study classes was possible due to the spectral differences between the targets, with better classification performance using the RF algorithm. The savings gained by only treating areas with the presence of weeds compared with treating the total study area are approximately 92.68%.

Funder

Embrapa Brazilian Coffee Research Consortium

National Council for Scientific and Technological Development

Federal University of Lavras

Publisher

MDPI AG

Subject

Agronomy and Crop Science

Reference55 articles.

1. Companhia Nacional de Abastecimento-(CONAB) (2023). Acompanhamento da Safra Brasileira-CAFÉ. Obs. Agríc., 1, 1–60.

2. Vargas, L., and Roman, E.S. (2006). Resistência de Plantas Daninhas a Herbicidas: Conceitos, Origem e Evolução, Embrapa Trigo. Available online: http://www.cnpt.embrapa.br/biblio/do/p_do58.htm.

3. Visual features based boosted classification of weeds for real-time selective herbicide sprayer systems;Ahmad;Comput. Ind.,2018

4. Weed detection by UAV: Simulation of the impact of spectral mixing in multispectral images;Louargant;Precis. Agric.,2017

5. Weed detection in wheat crop using UAV for precision agriculture;Mateen;Pak. J. Agric. Sci.,2019

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