An IoT-based agriculture maintenance using pervasive computing with machine learning technique

K. Swathi, Sampath Dakshina Murthy Achanta, P. R. K. Rao, Ramesh Vatambeti, Saikumar Kayam
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引用次数: 20

Abstract

PurposeIn cultivation, early harvest offers farmers an opportunity to increase production while decreasing the chances of lower crop production rates, ensuring that the economy remains balanced. The significant reason is to predict the disease in plants and distinguish the type of syndrome with the help of segmentation and random forest optimization classification. In this investigation, the accurate prior phase of crop imagery has been collected from different datasets like cropscience, yesmodes and nelsonwisc . In the current study, the real-time earlier state of crop images has been gathered from numerous data sources similar to crop_science, yes_modes, nelson_wisc dataset.Design/methodology/approachIn this research work, random forest machine learning-based persuasive plants healthcare computing is provided. If proper ecological care is not applied to early harvesting, it can cause diseases in plants, decrease the cropping rate and less production. Until now different methods have been developed for crop analysis at an earlier stage, but it is necessary to implement methods to advanced techniques. So, the detection of plant diseases with the help of threshold segmentation and random forest classification has been involved in this investigation. This implemented design is verified on Python 3.7.8 software for simulation analysis.FindingsIn this work, different methods are developed for crops at an earlier stage, but more methods are needed to implement methods with prior stage crop harvesting. Because of this, a disease-finding system has been implemented. The methodologies like “Threshold segmentation” and RFO classifier lends 97.8% identification precision with 99.3% real optimistic rate, and 59.823 peak signal-to-noise (PSNR), 0.99894 structure similarity index (SSIM), 0.00812 machine squared error (MSE) values are attained.Originality/valueThe implemented machine learning design is outperformance methodology, and they are proving good application detection rate.
基于普适计算和机器学习技术的物联网农业维护
在种植中,提前收获为农民提供了增加产量的机会,同时减少了作物产量下降的可能性,确保经济保持平衡。重要的原因是借助分割和随机森林优化分类来预测植物的病害和区分综合征类型。在本研究中,从不同的数据集(如作物科学、yesmodes和nelsonwisc)中收集了准确的作物前期图像。在目前的研究中,作物图像的实时早期状态已经从许多类似于crop_science, yes_modes, nelson_wisc数据集的数据源中收集。设计/方法/方法在这项研究工作中,提供了基于随机森林机器学习的有说服力的植物保健计算。如果在早期收获时不采取适当的生态保护措施,就会引起植物病害,降低作物的成活率,减少产量。到目前为止,在作物分析的早期阶段已经开发了不同的方法,但有必要将这些方法应用到先进的技术中。因此,基于阈值分割和随机森林分类的植物病害检测成为本课题的研究内容。在Python 3.7.8软件上对实现的设计进行了仿真分析验证。在这项工作中,针对早期作物开发了不同的方法,但需要更多的方法来实现早期作物收获的方法。因此,已经实施了疾病发现系统。“阈值分割”和RFO分类器的识别精度为97.8%,真实乐观率为99.3%,峰值信噪比(PSNR)为59.823,结构相似指数(SSIM)为0.99894,机器平方误差(MSE)为0.00812。原创性/价值实现的机器学习设计是优于方法论的,它们证明了良好的应用检测率。
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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