Rubber Buddy: A Mobile Application to Empower Rubber Planters of Sri Lanka.

A. Jayawardena, Kasuni Ganegoda, Sakuni Imbulana, Gavin Gunapala, N. Kodagoda, Thilini Jayasinghe
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Abstract

This research was conducted to develop a mobile application that provides expert solutions for the common problems faced by rubber planters in Sri Lanka. The application developed consists of four components, namely, identification of pests in immature rubber plantations and rubber nurseries; leaf disease identification; cover crop identification; and weed identification. Images taken using the mobile phone cameras are recognized using machine learning models developed using several convolutional neural network (CNN) architectures such as mobile net version 2 (MobileNet v2), VGG 16, VGG19, and residual networks (ResNet). After the images were recognized, the application will provide expert solutions and management strategies to the rubber planters. As most of the rubber plantations are located in areas with low network coverage, the application was designed to be operated in offline mode using TensorFlow lite technology.
橡胶伙伴:授权斯里兰卡橡胶种植者的移动应用程序。
这项研究是为了开发一个移动应用程序,为斯里兰卡橡胶种植者面临的常见问题提供专家解决方案。开发的应用程序包括四个部分,即未成熟橡胶园和橡胶园害虫的鉴定;叶片病害鉴定;覆盖作物鉴定;以及杂草识别。使用手机相机拍摄的图像使用使用几种卷积神经网络(CNN)架构(如移动网络版本2 (MobileNet v2), VGG 16, VGG19和残余网络(ResNet))开发的机器学习模型进行识别。在对图像进行识别后,该应用程序将为橡胶种植者提供专家解决方案和管理策略。由于大多数橡胶种植园位于网络覆盖率较低的地区,因此该应用程序被设计为使用TensorFlow lite技术在离线模式下运行。
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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