首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Unmanned Aerial Vehicle-Based Multispectral Remote Sensing for Commercially Important Aromatic Crops in India for Its Efficient Monitoring and Management
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Unmanned Aerial Vehicle-Based Multispectral Remote Sensing for Commercially Important Aromatic Crops in India for Its Efficient Monitoring and Management

机译:基于无人机的多光谱遥感对印度具有重要商业价值的芳香作物进行高效监测和管理

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摘要

Aromatic plants cultivation, processing and marketing is an upcoming agro-industry. The yields from these plants are generally governed by its good management practices of timely, suitable and precise actions against damaging factors. Remote sensing in agriculture is not a new phenomenon anymore, but using unmanned aerial vehicle (UAV, commonly known as drones) for the same is a pertinent topic these days, especially in India. Therefore, the study seeks to perform UAV-based airborne data acquisition, processing and analysis for modernised agricultural practices, finding of which may lead to generate rapid and on-demand real-time remotely sensed data for precision agriculture of commercial crops, which require more care and timely inputs as compared to conventional crops. The UAV high-resolution (1.5 cm/pixel) data were acquired from Mica Sense Altum, a 6 bands multispectral sensor, mounted over an indigenous Quad-copter (< 5 kg). With the help of processed orthoimage, the 22 plots of Rosa damascena (Damask Rose) were precisely (95 accuracy) classified into 03 categories, i.e., rose canopy, weed and open soil areas. We have also estimated digital plant count, plant height derived from canopy height model (CHM), canopy temperature and the topographic conditions of the crop plots. The digital plant counting for R. damascena planted in 4323 m2 area took 1.2 h as compared to manual 5.94 h counting. Average plant height values derived from CHM ranged from 23–68 cm as compared to 28–71 cm manually measured heights. Results were compared with ground sampling data, with which high correlation was found in digital plant count (R2 = 0.99) and plant height (96.69 accuracy). The derived average moderate slopes and northeast aspect suggested suitable topographic conditions required for R. damascena cultivation. The image-derived canopy temperature was compared to the relative ground-based measurements, obtaining accuracy percent of 98.54. The outcomes are encouraging and have potential to be applied for future UAV grounded applications by farmhands.
机译:芳香植物的种植、加工和销售是一个即将到来的农业产业。这些植物的产量通常取决于其及时、适当和精确的针对破坏性因素的良好管理实践。农业中的遥感不再是一个新现象,但使用无人机(UAV,俗称无人机)是当今的一个相关话题,尤其是在印度。因此,本研究旨在为现代化农业实践进行基于无人机的机载数据采集、处理和分析,其发现可能导致为经济作物的精准农业生成快速和按需的实时遥感数据,与传统作物相比,这些作物需要更多的照顾和及时的投入。无人机高分辨率(1.5 厘米/像素)数据是从 Mica Sense Altum 获取的,Mica Sense Altum 是一个 6 波段多光谱传感器,安装在本土四轴飞行器(< 5 kg)上。在处理后的正射影像的帮助下,将大马士革蔷薇的22个样地精确地(准确率为95%)分为03类,即玫瑰冠层、杂草和开阔土壤区域。我们还估算了数字植株数量、冠层高度模型(CHM)得出的植株高度、冠层温度和农作物地块的地形条件。在4323 m2面积种植的大马士革红斑的数字化植物计数耗时1.2 h,而人工计数耗时5.94 h。从CHM得出的平均株高值在23-68厘米之间,而人工测量的高度为28-71厘米。将结果与地面采样数据进行比较,发现数字植物计数(R2 = 0.99)和植物高度(准确率为96.69%)具有高度相关性。推导的平均中等坡度和东北面表明了大马士革栽培所需的适宜地形条件。将图像导出的冠层温度与相对地面测量值进行比较,获得98.54%的准确率。研究结果令人鼓舞,并有可能应用于未来无人机地面应用。

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