Smart Pest Management: An Augmented Reality-Based Approach for an Organic Cultivation

Nitharshana Mahenthiran, Haarini Sittampalam, Sinthumai Yogarajah, Sathurshana Jeyarajah, S. Chandrasiri, Archchana Kugathasan
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Abstract

The agricultural world faces more difficulties due to crop pests that damage or infliction cultivated plants. The main challenges to those interested in cultivation are pest attack and disease. Pests spread the disease, and the yield is decreased. However, it is possible to control pest attacks and infections in the early attack stage to reduce pesticide use and keep the farm safe. Mobile applications can provide accurate identification rather than manual detection. Mobile applications and technologies are created when considering the solution. The importance of the proposed solution is to increase the rate of the plant product and achieve high revenue without any cost. One of the main components used in this system is the image processing technique. The pest images will be taken, and they will be subjected to various preprocessing for noise reduction and enhancement of the pictures. Using image processing, the user can determine the pest's life cycle stage. The user can identify the stage of the damaged plant by applying the classification algorithm. The content analysis is based on the machine learning process, especially using a Convolutional Neural Network. Hence, the proposed system will help to get knowledge of organic pest prevention methods. In the system, we determined the type of pest with 90% accuracy by submitting a damaged leaf and a pest image. The pest's lifecycle stage and stage of the affected plant also can be identified in our system with high accuracy. Moreover, it shows the organic prevention methods.
智能害虫管理:一种基于增强现实的有机种植方法
由于农作物害虫对栽培植物造成损害,农业世界面临着更多的困难。对种植感兴趣的人面临的主要挑战是虫害和病害。害虫传播疾病,产量下降。然而,有可能在虫害发作的早期阶段控制虫害和感染,以减少农药的使用,保证农场的安全。移动应用程序可以提供准确的识别,而不是人工检测。移动应用程序和技术是在考虑解决方案时创建的。提出的解决方案的重要性在于提高工厂产品的率,并在没有任何成本的情况下实现高收入。该系统的主要组成部分之一是图像处理技术。将拍摄害虫图像,并对图像进行各种预处理,以减少噪音和增强图像。通过图像处理,用户可以确定害虫的生命周期阶段。用户可以通过应用分类算法来识别受损工厂的阶段。内容分析基于机器学习过程,特别是使用卷积神经网络。因此,提出的系统将有助于获得有机害虫预防方法的知识。在该系统中,我们通过提交受损叶片和害虫图像来确定害虫的类型,准确率为90%。该系统还可以高精度地识别害虫的生命周期阶段和受影响植物的阶段。并给出了有机防治方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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