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Creation of Farmers' Awareness on Fall Armyworms Pest Detection at Early Stage in Rwanda using Deep Learning

机译:使用深度学习在卢旺达早期建立农民对秋夜蠕虫害虫检测的意识

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In recent years, research has proven that cutting-edge technology is being used to revolutionize the agriculture sector more effectively and efficiently in both advanced and developing countries. A great number of researches have been conducted, very little research, however, has addressed the use of machine learning in Rwanda to improve farmer's knowledge and skills to be able to tackle agricultural issues related to crops pests. In this regards, we introduced the creation of extension material in the local language "Kinyarwanda" to enable smallholder farmers to find out the right pesticide to use after identifying the pest, how to fight the infection and how to prevent it from spreading. In order investigate the aforementioned method and proposed technology; we did binary classification where we collected unhealthy plant leaves images from the fields to be tested. We again obtained healthy plant leaves images without damage from a very well-known research and development unit called Plant Village where we collected our data. The findings of the current study are based on the trained model with Keras. The result of the classification model provided a satisfying accuracy 0f 99.5% and that model was deployed in an Android Mobile App to be used for both pest detection and creation of farmers' awareness on suitable crop pests' detection and diagnosis in a timely manner. Our findings contribute to the use of machine learning in agriculture literature and have important research in deep learning and practical implications.
机译:近年来,研究证明,先进技术正被用来在发达国家和发展中国家中更有效,更有效地革新农业部门。已经进行了大量研究,但是很少有研究涉及在卢旺达使用机器学习来提高农民的知识和技能,从而能够解决与农作物病虫害有关的农业问题。在这方面,我们介绍了用当地语言“ Kinyarwanda”创建扩展材料的过程,以使小农户在查明有害生物,如何抵抗感染以及如何防止其扩散后,找出合适的农药使用。为了研究上述方法和提出的技术;我们进行了二进制分类,在该分类中,我们从要测试的田地中收集了不健康的植物叶片图像。我们再次从一个非常著名的名为Plant Village的研发部门那里获取了健康的植物叶片图像,而没有损坏,我们在其中收集了数据。当前研究的结果基于Keras的训练模型。分类模型的结果提供了令人满意的精度0f 99.5%,并且该模型已部署在Android移动应用程序中,可用于有害生物检测以及农民对适时农作物有害生物的检测和诊断的及时了解。我们的发现有助于在农业文献中使用机器学习,并且在深度学习和实践意义方面具有重要的研究意义。

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