IoT-based Plant Health Analysis using Optical Sensors in Precision Agriculture

H. Bagha, Ali Yavari, Dimitrios Georgakopoulos
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引用次数: 2

Abstract

To support the current population growth, modern agriculture must increase food production while reducing the use of water and other resources required for crop cultivation. Precision agriculture (PA) aims to achieve these via a variety of methods that include site-specific plant selection, variable rate irrigation and fertilisation, as well as site-specific pesticide and herbicide application. To determine the plant performance and health that drive such precision PA practices, PA solutions currently collect and analyse data from cameras and multispectral sensors. Technological advancements in the Internet of Things (IoT) and in the development of Unmanned Aerial Vehicles (UAV) in recent years have provided potential solutions for automating image acquisition and analysis that can advance such PA practices. This paper proposes 1) devising plant models from RGB and multi-spectral data, 2) using such models to guide the above PA practices. More specifically, the paper explores monitoring plants at different health and life cycle stages from fully green to completely dry and capturing related RGB and multi-spectral data in a controlled environment. These data are then analysed to create a model for each plant variety, which we refer to as the plant profile, that captures the combined colour and light reflectance of the plant over its life cycle and related health stages. The paper proposes using such plant variety profiles to determine the performance and health of the plants across entire crops. Finally, the paper discusses how UAVs and IoT can be used to automatically capture and analyse the images and multi-spectral data for advancing PA.
精准农业中基于物联网的光学传感器植物健康分析
为了支持目前的人口增长,现代农业必须增加粮食产量,同时减少作物种植所需的水和其他资源的使用。精准农业(PA)旨在通过多种方法实现这些目标,包括特定地点的植物选择,可变速率灌溉和施肥,以及特定地点的农药和除草剂应用。为了确定驱动这种精确PA实践的工厂性能和健康状况,PA解决方案目前收集和分析来自相机和多光谱传感器的数据。近年来,物联网(IoT)和无人机(UAV)的技术进步为自动化图像采集和分析提供了潜在的解决方案,可以推进这种PA实践。本文提出1)设计基于RGB和多光谱数据的植物模型,2)使用这些模型来指导上述PA实践。更具体地说,本文探讨了在受控环境下监测植物从完全绿色到完全干燥的不同健康和生命周期阶段,并捕获相关的RGB和多光谱数据。然后对这些数据进行分析,为每个植物品种创建一个模型,我们称之为植物概况,该模型捕获了植物在其生命周期和相关健康阶段的综合颜色和光反射率。本文建议使用这些植物品种概况来确定整个作物中植物的性能和健康状况。最后,本文讨论了如何利用无人机和物联网自动捕获和分析图像和多光谱数据,以推进PA。
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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