REAL-TIME SELECTIVE SPRAYING FOR VIOLA ROPE CONTROL IN SOYBEAN AND COTTON CROPS USING DEEP LEARNING

Hederson de S. Sabóia, Renildo L. Mion, Adriano de O. Silveira, A. Mamiya
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引用次数: 4

Abstract

The cultivation of soy and cotton is of great importance in the Brazilian economic scenario, both of which move billions of reais per year in exports. Weed management is important for obtaining optimal yields. Among the plants that have gained resistance and tolerance are those of the genus Ipomoea spp . These plants affect soybean and cotton crops throughout their cycle, thereby affecting their productivity. In this context, the objective of this work was to develop an embedded system for the selective spraying of rope and viola in cotton and soybean crops using algorithms for the classification and detection of objects in real time (Faster R-CNN and YOLOv3). This project was developed at the Agricultural Machinery Laboratory of the Federal University of Rondonópolis. The algorithms were trained to detect three classes (soybean, viola, and cotton) and were evaluated in terms of precision and sensitivity in the laboratory and field. Control results using faster R-CNN sprays demonstrated that real-time object detection algorithms for the selective control of weeds can be used for soybean and cotton crops.
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基于深度学习技术的大豆和棉花中花绳实时选择性喷洒
大豆和棉花的种植在巴西经济中非常重要,这两种作物每年的出口都有数十亿雷亚尔的收入。杂草管理对获得最佳产量很重要。在获得抗性和耐受性的植物中,有一些属的植物。这些植物在整个生长周期中影响大豆和棉花作物,从而影响其生产力。在这种情况下,本工作的目标是开发一个嵌入式系统,用于在棉花和大豆作物上选择性喷洒绳索和堇菜,使用实时分类和检测对象的算法(Faster R-CNN和YOLOv3)。该项目是由Rondonópolis联邦大学农业机械实验室开发的。经过训练,该算法可以检测三种类型(大豆、堇菜和棉花),并在实验室和现场对其精度和灵敏度进行了评估。使用更快的R-CNN喷雾的控制结果表明,用于选择性控制杂草的实时目标检测算法可以用于大豆和棉花作物。
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