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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Remote Sensing Analysis of Agricultural Drone
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Remote Sensing Analysis of Agricultural Drone

机译:农业无人机的遥感分析

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摘要

Farmers have more requirements for the completion of cultivations. Remote sensing is a big technology for reducing this requirement. Now, we need an organic spraying system at a low cost. We have two methods, first one neural network algorithm of quantum geographic information system (QGIS) and another one global positioning system (GPS) with drone. This paper describes the analysis of drone remote sensing using the normalized difference vegetation index (NDVI)/Near-infrared band (NIR) sensor in a multispectral view of agricultural land. NIR and NDVI images had water content values and precision values which is mixed in managing water resources. NDVI sensors are loaded to produce high-density images. Real-time monitoring coupled in NIR imaging geometrically and radiometrically adjusted to measure temperature. Multispectral and hyperspectral views had used for analyzing the tested data. Standard irrigation level is 60% to produce the plant growing. Irrigation techniques followed the treatment of the plant within continuous data per second. The implemented view focused only on growth controlling of plant in-depth irrigation between 30 and 90 cm in 60% deviation. NDVI, green normalized difference vegetation index (GNDVI), soil brightness index (SBI), green vegetation index (GVI), degree of yellow vegetation index (YVI), nitrogen sufficiency index (NSI), perpendicular vegetation index (PVI), transformed vegetation index (TVI), soil adjusted vegetation index (SAVI) and vegetation condition index (VCI) vegetation indices are used to the correlation of plant growth control with managing leaf strength and import python packages display the Vegetation various Real-time value in QGIS. Correlation of plant growth p <= 0.01, r = 0.77 and - 0.77 with conductance. It measured degree and demonstrated GPS view using irrigation techniques to control water stress. It had used to estimate the leaf conductance rate with the variation of atmospherically changing. It can calculate real-time leaf stress analysis. This report provided a drone survey analysis of compost percentage and vegetation indices of agricultural land.
机译:农民对完成耕作有更多的要求。遥感是减少这一需求的一项重要技术。现在,我们需要一个低成本的有机喷雾系统。我们有两种方法,第一种是量子地理信息系统(QGIS)的神经网络算法,另一种是无人机全球定位系统(GPS)。本文描述了在农田多光谱视图中使用归一化差分植被指数(NDVI)/近红外波段(NIR)传感器进行无人机遥感分析。近红外和NDVI图像的含水量值和精度值在水资源管理中是混合的。装载NDVI传感器以生成高密度图像。实时监测与近红外成像相结合,通过几何和辐射调整来测量温度。多光谱和高光谱视图用于分析测试数据。标准灌溉水平为60%,以使植物生长。灌溉技术在每秒连续数据的范围内对植物进行处理。实施的观点仅侧重于在60%偏差的情况下,将植物深度灌溉控制在30到90厘米之间。NDVI、绿色归一化差异植被指数(GNDVI)、土壤亮度指数(SBI)、绿色植被指数(GVI)、黄色植被指数(YVI)、氮素充足指数(NSI)、垂直植被指数(PVI)、转化植被指数(TVI),土壤调整植被指数(SAVI)和植被状况指数(VCI)植被指数用于植物生长控制与管理叶片强度的相关性,导入python软件包在QGIS中显示植被的各种实时值。植物生长p<=0.01,r=0.77和-0.77与电导的相关性。它利用灌溉技术来控制水分胁迫,测量了程度并演示了GPS视图。它被用来估计叶片电导率随大气变化的情况。它可以实时计算叶片应力分析。该报告提供了无人机调查分析的堆肥百分比和农田植被指数。

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