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Precision agricultural robotic sprayer with real-time Tobacco recognition and spraying system based on deep learning

Fazal Nasir, Muhammad Tufail, Muhammad Haris, Jamshed Iqbal, Said Ghani Khan, Muhammad Tahir Khan

发表年份
2023
引用次数
26
访问权限
开放获取

摘要

Precision agricultural techniques try to prevent either an excessive or inadequate application of agrochemicals during pesticide application. In recent years, it has become popular to combine traditional agricultural practices with artificial intelligence algorithms. This research presents a case study of variable-rate targeted spraying using deep learning for tobacco plant recognition and identification in a real tobacco field. An extensive comparison of the detection performance of six YOLO-based models for the tobacco crop has been performed based on experimentation in tobacco fields. An F1-score of 87.2% and a frame per second rate of 67 were achieved using the YOLOv5n model trained on actual field data. Additionally, a novel disturbance-based pressure and flow control method has been introduced to address the issue of unwanted pressure fluctuations that are typically associated with bang-bang control. The quality of spray achieved by attenuation of these disturbances has been evaluated both qualitatively and quantitatively using three different spraying case studies: broadcast, and selective spraying at 20 psi pressure; and variable-rate spraying at pressure varying from 15-120 psi. As compared to the broadcast spraying, the selective and variable rate spray methods have achieved up to 60% reduction of agrochemicals.

关键词

SprayerAgrochemicalArtificial intelligenceComputer scienceDeep learningPrecision agricultureVariable (mathematics)Machine learningAgricultural engineeringAgriculture

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