基于实时机器学习的精准农业变率喷洒作物/杂草检测与分类

Mansoor Alam, M. S. Alam, Muhammad Roman, M. Tufail, Muhammad Umer Khan, Muhammad Tahir Khan
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引用次数: 40

摘要

传统的农用化学品喷洒技术往往导致过量或不足的剂量。喷洒化学品的过量使用成本高昂,对环境构成严重威胁,而剂量不足则导致作物保护效率低下,从而导致作物产量下降。因此,为了提高每亩产量并保护作物免受病害,应根据田地/作物的需要喷洒农药的确切数量。提出了一种基于计算机视觉的实时农药喷洒作物/杂草检测系统。通过随机森林分类器进行杂草/作物检测和分类。首先使用我们自己创建的数据集离线训练分类模型,然后将其部署到现场进行测试。农药喷洒是通过应用设备完成的,该设备由基于pwm的流体流动控制系统组成,该系统能够在基于视觉的反馈系统的指导下喷洒所需的农药量。现场试验结果表明,所提出的基于视觉的农用化学品实时喷洒框架是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Machine-Learning Based Crop/Weed Detection and Classification for Variable-Rate Spraying in Precision Agriculture
Traditional agrochemical spraying techniques often result in over or under-dosing. Over-dosing of spray chemicals is costly and pose a serious threat to the environment, whereas, under-dosing results in inefficient crop protection and thereby low crop yields. Therefore, in order to increase yields per acre and to protect crops from diseases, the exact amount of agrochemicals should be sprayed according to the field/crop requirements. This paper presents a real-time computer vision-based crop/weed detection system for variable-rate agrochemical spraying. Weed/crop detection and classification were performed through the Random Forest classifier. The classification model was first trained offline with our own created dataset and then deployed in the field for testing. Agrochemical spraying was done through application equipment consisting of a PWM-based fluid flow control system capable of spraying the desired amounts of agrochemical directed by the vision-based feedback system. The results obtained from several field tests demonstrate the effectiveness of the proposed vision-based agrochemical spraying framework in real-time.
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