Early detection of weed in sugarcane using convolutional neural network

João Pedro dos Santos Verçosa, Flávio Henrique Dos Santos Silva, Fabrício Almeida Araújo, Regla Toujaguez la Rosa Massahud, Francisco Rafael Da Silva Pereira, Henrique Ravi Rocha de Carvalho Almeida, Marcus de Barros Braga, Arthur Costa Falcão Tavares
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Abstract

Weed infestation is an essential factor in sugarcane productivity loss. The use of remote sensing data in conjunction with Artificial Intelligence (AI) techniques, can lead the cultivation of sugarcane to a new level in terms of weed control. For this purpose, an algorithm based on Convolutional Neural Networks (CNN) was developed to detect, quantify, and map weeds in sugarcane areas located in the state of Alagoas, Brazil. Images of the PlanetScope satellite were subdivided, separated, trained in different scenarios, classified and georeferenced, producing a map with weed information included. Scenario one of the CNN training and test presented overall accuracy (0,983), and it was used to produce the final mapping of forest areas, sugarcane, and weed infestation. The quantitative analysis of the area (ha) infested by weed indicated a high probability of a negative impact on sugarcane productivity. It is recommended that the adequacy of CNN’s algorithm for Remotely Piloted Aircraft (RPA) images be carried out, aiming at the differentiation between weed species, as well as its application in the detection in areas with different culture crops
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卷积神经网络在甘蔗杂草早期检测中的应用
杂草侵害是甘蔗生产力损失的重要因素。遥感数据与人工智能(AI)技术的结合使用,可以将甘蔗种植在杂草控制方面提升到一个新的水平。为此,研究人员开发了一种基于卷积神经网络(CNN)的算法,用于检测、量化和绘制巴西阿拉戈斯州甘蔗地区的杂草。PlanetScope卫星的图像经过细分、分离、不同场景的训练、分类和地理参考,生成了一张包含杂草信息的地图。CNN训练和测试的场景一呈现出总体精度(0.983),并用于生成森林区域、甘蔗和杂草侵扰的最终地图。对杂草侵染面积(公顷)的定量分析表明,杂草侵染极有可能对甘蔗生产造成负面影响。建议对CNN算法在RPA (remote Piloted Aircraft,遥控飞行器)图像上的充分性进行研究,针对杂草种类的区分,以及在不同栽培作物地区的检测应用
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