智能农业:利用物联网和深度学习实现可持续番茄种植和病虫害管理

Md Rakibul Hasan , Md. Mahbubur Rahman , Fahim Shahriar , Md. Saikat Islam Khan , Khandaker Mohammad Mohi Uddin , Md. Mosaddik Hasan
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摘要

随着世界人口的不断增长,越来越多的可耕地被用来建造房屋。因此,粮食供应数量与日俱增。为了解决粮食短缺问题,必须制定合理的计划,并在技术上有所突破。番茄是一种含有健康成分的蔬菜,也是我们日常食物清单中必不可少的一种。在深度学习方法的帮助下,拟议的系统提出了一种基于物联网的番茄栽培和病虫害管理系统。在物联网实施过程中,摄像头模块和湿度传感器分别用于采集番茄植株和土壤状况的图像。根据水分含量,水泵会在必要时供水。此外,番茄叶片的实时图像将被发送到服务器,以便对各种昆虫种类等天敌进行识别和分类。在提议的系统中,借助十个深度学习模型,如 InceptionV3、Xception、InceptionResNetV2、MobileNet、MobileNetV2、MobileNetV3Large、MobileNetV3Small、DenseNet121、DenseNet169、DenseNet201,识别了七种害虫。这项研究分别对树叶和昆虫进行了训练,以识别番茄植株的图像是否为昆虫类图像。拟议架构中使用了 458 张害虫图像和 912 张叶子图像。使用 DenseNet201 对昆虫或叶子进行分类的准确率为 100%。使用 DenseNet201 模型对不同昆虫进行分类的准确率最高,达到 94%。
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Smart farming: Leveraging IoT and deep learning for sustainable tomato cultivation and pest management

Since the world's population is rising continuously, more cultivable land is being utilized for their dwellings. As a result, the amount of food supply is decreasing day by day. In order to address the food shortage, a proper plan and technological breakthroughs is must. Tomato is a kind of vegetable which has the healthy ingredients and essential for our daily food list. The proposed system suggests an IoT based tomato cultivation and pest management system, with the help of deep learning methods. In the IoT implementation, camera module and moisture sensor are used to collect images of tomato plant, soil condition respectively. Based on the moisture content, the water pump will supply the water when it necessary. Besides, the real-time images of tomato leaf will be sent to the server to identify and classify natural enemies like various insect species. In the proposed system seven types of pests are identified with the help of ten deep learning models like InceptionV3, Xception, InceptionResNetV2, MobileNet, MobileNetV2, MobileNetV3Large, MobileNetV3Small, DenseNet121, DenseNet169, DenseNet201. This study has trained with leaves and insects separately to identify whether an image from a tomato plant is insectoid or not. 458 images of pests and 912 images of leaves are utilized in the proposed architecture. The accuracy of classifying insects or leaves using DenseNet201 is 100 ​%. The highest accuracy of 94 ​% is obtained to classify the different insects using the DenseNet201 model.

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