Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques

Abstract Currently, applying uniform distribution of chemical herbicide through a sprayer without considering the spatial distribution information of crops and weeds is the most common method of controlling weeds in commercial agricultural production system. This kind of weed management practice lea...

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Main Authors: Ranjan Sapkota, John Stenger, Michael Ostlie, Paulo Flores
Format: Article
Language:English
Published: Nature Portfolio 2023-04-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-023-33042-0
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author Ranjan Sapkota
John Stenger
Michael Ostlie
Paulo Flores
author_facet Ranjan Sapkota
John Stenger
Michael Ostlie
Paulo Flores
author_sort Ranjan Sapkota
collection DOAJ
description Abstract Currently, applying uniform distribution of chemical herbicide through a sprayer without considering the spatial distribution information of crops and weeds is the most common method of controlling weeds in commercial agricultural production system. This kind of weed management practice lead to excessive amounts of chemical herbicides being applied in a given field. The objective of this study was to perform site-specific weed control (SSWC) in a corn field by: (1) using a unmanned aerial system (UAS) to map the spatial distribution information of weeds in the field; (2) creating a prescription map based on the weed distribution map, and (3) spraying the field using the prescription map and a commercial size sprayer. In this study, we assumed that plants growing outside the corn rows are weeds and they need to be controlled. The first step in implementing such an approach is identifying the corn rows. For that, we are proposing a Crop Row Identification algorithm, a computer vision algorithm that identifies corn rows on UAS imagery. After being identified, the corn rows were then removed from the imagery and remaining vegetation fraction was classified as weeds. Based on that information, a grid-based weed prescription map was created and the weed control application was implemented through a commercial-size sprayer. The decision of spraying herbicides on a particular grid was based on the presence of weeds in that grid cell. All the grids that contained at least one weed were sprayed, while the grids free of weeds were not. Using our SSWC approach, we were able to save 26.2% of the acreage from being sprayed with herbicide compared to the current method. This study presents a full workflow from UAS image collection to field weed control implementation using a commercial size sprayer, and it shows that some level of savings can potentially be obtained even in a situation with high weed infestation, which might provide an opportunity to reduce chemical usage in corn production systems.
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spelling doaj.art-ad8611f2a854441f90b182ee297a34942023-04-23T11:13:17ZengNature PortfolioScientific Reports2045-23222023-04-0113111410.1038/s41598-023-33042-0Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniquesRanjan Sapkota0John Stenger1Michael Ostlie2Paulo Flores3Center for Precision and Automated Agricultural Systems, Washington State UniversityAgricultural and Biosystems Engineering, North Dakota State UniversityNDSU Carrington Research Extension CenterAgricultural and Biosystems Engineering, North Dakota State UniversityAbstract Currently, applying uniform distribution of chemical herbicide through a sprayer without considering the spatial distribution information of crops and weeds is the most common method of controlling weeds in commercial agricultural production system. This kind of weed management practice lead to excessive amounts of chemical herbicides being applied in a given field. The objective of this study was to perform site-specific weed control (SSWC) in a corn field by: (1) using a unmanned aerial system (UAS) to map the spatial distribution information of weeds in the field; (2) creating a prescription map based on the weed distribution map, and (3) spraying the field using the prescription map and a commercial size sprayer. In this study, we assumed that plants growing outside the corn rows are weeds and they need to be controlled. The first step in implementing such an approach is identifying the corn rows. For that, we are proposing a Crop Row Identification algorithm, a computer vision algorithm that identifies corn rows on UAS imagery. After being identified, the corn rows were then removed from the imagery and remaining vegetation fraction was classified as weeds. Based on that information, a grid-based weed prescription map was created and the weed control application was implemented through a commercial-size sprayer. The decision of spraying herbicides on a particular grid was based on the presence of weeds in that grid cell. All the grids that contained at least one weed were sprayed, while the grids free of weeds were not. Using our SSWC approach, we were able to save 26.2% of the acreage from being sprayed with herbicide compared to the current method. This study presents a full workflow from UAS image collection to field weed control implementation using a commercial size sprayer, and it shows that some level of savings can potentially be obtained even in a situation with high weed infestation, which might provide an opportunity to reduce chemical usage in corn production systems.https://doi.org/10.1038/s41598-023-33042-0
spellingShingle Ranjan Sapkota
John Stenger
Michael Ostlie
Paulo Flores
Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
Scientific Reports
title Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
title_full Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
title_fullStr Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
title_full_unstemmed Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
title_short Towards reducing chemical usage for weed control in agriculture using UAS imagery analysis and computer vision techniques
title_sort towards reducing chemical usage for weed control in agriculture using uas imagery analysis and computer vision techniques
url https://doi.org/10.1038/s41598-023-33042-0
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AT michaelostlie towardsreducingchemicalusageforweedcontrolinagricultureusinguasimageryanalysisandcomputervisiontechniques
AT pauloflores towardsreducingchemicalusageforweedcontrolinagricultureusinguasimageryanalysisandcomputervisiontechniques