IoT-Fog-enabled robotics-based robust classification of hazy and normal season agricultural images for weed detection

I. Kansal, Vikas Khullar, Jyoti Verma, Renu Popli, Rajeev Kumar
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引用次数: 3

Abstract

Abstract The mechanization of farming is currently the most pressing problem facing humanity and a burgeoning academic field. Over the last decade, there has been an explosion of Internet of Things (IoT) application growth in agriculture. Agricultural robotics is bringing about a new era of farming because they are growing more intelligent, recognizing causes of variation on the farm, consuming fewer resources, and optimizing their efficiency to more flexible jobs. The purpose of this article is to construct an IoT-Fog computing equipped robotic system for the categorization of weeds and soy plants during both the hazy season and the normal season. The used dataset in this article included four classes: soil, soybean, grass, and weeds. A two-dimensional Convolutional Neural Network (2D-CNN)-based deep learning (DL) approach was implemented for data image classification with dataset of height and width of 150 × 150 and of three channels. The overall proposed system is considered an IoT-connected robotic device that is capable of applying classification through the Internet-connected server. The reliability of the device is also enhanced as it is enabled with edge-based Fog computing. Hence, the proposed robotic system is capable of applying DL classification through IoT as well as Fog computing architecture. The analysis of the proposed system was conducted in steps including training and testing of CNN for classification, validation of normal images, validation of hazy images, application of dehazing technique, and at the end validation of dehazed images. The training and validation parameters ensure 97% accuracy in classifying weeds and crops in a hazy environment. Finally, it concludes that applying the dehazing technique before identifying soy crops in adverse weather will help achieve a higher classification score.
基于物联网雾的基于机器人的模糊和正常季节农业图像鲁棒分类,用于杂草检测
农业机械化是当前人类面临的最紧迫的问题,也是一个新兴的学术领域。在过去十年中,物联网(IoT)在农业中的应用出现了爆炸式增长。农业机器人正在带来一个农业新时代,因为它们越来越智能,能够识别农场变化的原因,消耗更少的资源,并优化效率,以实现更灵活的工作。本文的目的是构建一个配备物联网雾计算的机器人系统,用于在雾霾季节和正常季节对杂草和大豆进行分类。本文使用的数据集包括四类:土壤、大豆、草和杂草。采用基于二维卷积神经网络(2D-CNN)的深度学习方法,对高度和宽度均为150 × 150的三通道数据集进行图像分类。整个系统被认为是能够通过连接互联网的服务器应用分类的物联网连接机器人设备。由于启用了基于边缘的雾计算,设备的可靠性也得到了增强。因此,所提出的机器人系统能够通过物联网和雾计算架构应用深度学习分类。对所提出的系统进行了CNN分类训练和测试、正常图像验证、模糊图像验证、去雾技术应用、去雾图像验证等步骤的分析。训练和验证参数确保在雾霾环境下杂草和作物分类的准确率达到97%。最后得出结论,在恶劣天气条件下大豆作物识别前应用脱雾技术有助于获得更高的分类分数。
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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