IoT based Plant Growth and Health Monitoring System for Mushrooms

Punsala S.M.P., Benthara B.W.H.T, Ferdinando D.V.P., Chathura W.B.D., Silva S., Liyanage R.
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Abstract

This research paper proposes the development of an IoT-based monitoring system using a robot camera for mushroom cultivation in Sri Lanka. The system aims to address several sub-objectives, including harvest time prediction, disease detection, quality assurance, and environmental monitoring. The research utilizes image processing and machine learning techniques to capture mushroom images, analyze their size, shape, morphology, and color, and predict the optimal harvest time. It also focuses on identifying common diseases, researching their early symptoms, and recommending appropriate treatment options. The system incorporates user-friendly mobile interfaces for farmers to provide input on mushroom quality and receive alerts. Moreover, it establishes quality standards, defines criteria and thresholds, and uses machine learning algorithms to train a model for quality assessment. The research introduces an IoT device that integrates environmental sensors to optimize crop growth by analyzing real-time sensor data and recommending corrective actions. The novelties include the use of robotic camera and machine learning for feature detection, personalized disease recommendations based on individual mushroom conditions, promotion of sustainable farming practices, ui-based quality assurance score, and prioritization of corrective actions based on severity and impact. The proposed system aims to improve accuracy, increase product value, enhance profitability, and promote environmentally friendly agriculture.
基于物联网的蘑菇植物生长和健康监测系统
本研究论文提出了一种基于物联网的监测系统的开发,该系统使用机器人摄像机用于斯里兰卡的蘑菇种植。该系统旨在解决几个子目标,包括收获时间预测、疾病检测、质量保证和环境监测。该研究利用图像处理和机器学习技术捕捉蘑菇图像,分析它们的大小、形状、形态和颜色,并预测最佳收获时间。它还侧重于识别常见疾病,研究其早期症状,并建议适当的治疗方案。该系统结合了用户友好的移动界面,供农民输入蘑菇质量并接收警报。此外,它建立了质量标准,定义了标准和阈值,并使用机器学习算法来训练质量评估模型。该研究介绍了一种集成环境传感器的物联网设备,通过分析实时传感器数据并建议纠正措施来优化作物生长。这些创新包括使用机器人相机和机器学习进行特征检测,基于单个蘑菇条件的个性化疾病建议,促进可持续农业实践,基于ui的质量保证评分,以及基于严重程度和影响的纠正措施优先级。该系统旨在提高准确性,增加产品价值,提高盈利能力,促进环境友好型农业。
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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