Targeted weed management of Palmer amaranth using robotics and deep learning (YOLOv7)

Effective weed management is a significant challenge in agronomic crops which necessitates innovative solutions to reduce negative environmental impacts and minimize crop damage. Traditional methods often rely on indiscriminate herbicide application, which lacks precision and sustainability. To addr...

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Veröffentlicht in:Frontiers in robotics and AI 2024-10, Vol.11, p.1441371
Hauptverfasser: Balabantaray, Amlan, Behera, Shaswati, Liew, CheeTown, Chamara, Nipuna, Singh, Mandeep, Jhala, Amit J, Pitla, Santosh
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Sprache:eng
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Zusammenfassung:Effective weed management is a significant challenge in agronomic crops which necessitates innovative solutions to reduce negative environmental impacts and minimize crop damage. Traditional methods often rely on indiscriminate herbicide application, which lacks precision and sustainability. To address this critical need, this study demonstrated an AI-enabled robotic system, Weeding robot, designed for targeted weed management. Palmer amaranth ( ) was selected as it is the most troublesome weed in Nebraska. We developed the full stack (vision, hardware, software, robotic platform, and AI model) for precision spraying using YOLOv7, a state-of-the-art object detection deep learning technique. The Weeding robot achieved an average of 60.4% precision and 62% recall in real-time weed identification and spot spraying with the developed gantry-based sprayer system. The Weeding robot successfully identified Palmer amaranth across diverse growth stages in controlled outdoor conditions. This study demonstrates the potential of AI-enabled robotic systems for targeted weed management, offering a more precise and sustainable alternative to traditional herbicide application methods.
ISSN:2296-9144
2296-9144
DOI:10.3389/frobt.2024.1441371