Making the Cotton Replant Decision: A Novel and Simplistic Method to Estimate Cotton Plant Population from UAS-calculated NDVI

IF 0.7 Q4 AGRICULTURAL ENGINEERING Journal of cotton science Pub Date : 2020-01-01 DOI:10.56454/cdkg1931
Shawn A. Butler, T. Raper, M. Buschermohle, L. Tran, Lori A. Duncan
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引用次数: 1

Abstract

One proposed use of unmanned aerial systems (UAS) in crop production is to produce quantitative data to support replant decisions by assessing plant stands. Theoretically, analysis of UAS imagery could quickly determine plant populations across large areas. The objective of this research was to investigate the ability of UAS to quantify accurately varying plant populations of cotton (Gossypium hirsutum L.). Field studies were conducted in Jackson, Milan, and Grand Junction, Tennessee in three consecutive growing seasons. Treatments included five seeding rates ranging from 8,500 to 118,970 seed ha-1. After emergence, cotton plants were manually counted and images were collected in 2016 and 2017 with a MicaSense RedEdge multispectral sensor and in 2018 with a Sentera Double 4K multispectral sensor. Sensors were mounted to a quad-copter UAS flying at altitudes of 30, 60, 75, and 120 m above ground level. Spectral properties were assessed to generate normalized difference vegetation index (NDVI) thresholds that were used to limit the analysis to only plant material. Images were processed and analyzed to estimate number of plants and compared to actual plant populations within each plot. Images obtained from lower altitudes proved to be more accurate, with greatest correlations to actual ground-truthed plant populations from data collected at an altitude of 30 m. The utilization of the described novel method of estimating cotton plant population from NDVI-calculated UAS imagery might improve upon spatial and temporal efficiency in comparison to current methodology of estimation.
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棉花再植决策:一种基于uas计算NDVI估算棉花种群的简化新方法
无人机系统(UAS)在作物生产中的一个建议用途是通过评估植物林分来产生定量数据,以支持再植决策。理论上,对无人机图像的分析可以快速确定大面积的植物种群。本研究的目的是探讨紫外分光光度法(UAS)准确定量棉花(Gossypium hirsutum L.)种群变化的能力。在连续三个生长季节,在杰克逊、米兰和田纳西州的大Junction进行了实地研究。播种量为8,500 ~ 118,970粒/公顷。出芽后,在2016年和2017年分别使用MicaSense reddge多光谱传感器和2018年使用Sentera Double 4K多光谱传感器对棉花植株进行人工计数和图像采集。传感器安装在一架四旋翼无人机上,飞行高度分别为距地面30、60、75和120米。评估光谱特性以生成归一化植被指数(NDVI)阈值,用于限制仅对植物材料进行分析。对图像进行处理和分析,以估计植物数量,并与每个地块内的实际植物种群进行比较。从较低海拔获得的图像被证明更准确,与从30米高度收集的数据中获得的实际地面真实植物种群的相关性最大。与现有的估算方法相比,利用ndvi计算的UAS图像估算棉花植株种群的新方法可能会提高空间和时间效率。
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来源期刊
Journal of cotton science
Journal of cotton science AGRICULTURAL ENGINEERING-
CiteScore
0.90
自引率
20.00%
发文量
0
期刊介绍: The multidisciplinary, refereed journal contains articles that improve our understanding of cotton science. Publications may be compilations of original research, syntheses, reviews, or notes on original research or new techniques or equipment.
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