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利用无人机(UAV)在丘陵地区对玉米进行生长监测和产量预估。

Growth Monitoring and Yield Estimation of Maize Plant Using Unmanned Aerial Vehicle (UAV) in a Hilly Region.

机构信息

Faculty of Science, Health and Technology, Nepal Open University, Manbhawan, Lalitpur, Nepal.

School of Surveying and Built Environment, University of Southern Queensland, Springfield, QLD 4300, Australia.

出版信息

Sensors (Basel). 2023 Jun 8;23(12):5432. doi: 10.3390/s23125432.

Abstract

More than 66% of the Nepalese population has been actively dependent on agriculture for their day-to-day living. Maize is the largest cereal crop in Nepal, both in terms of production and cultivated area in the hilly and mountainous regions of Nepal. The traditional ground-based method for growth monitoring and yield estimation of maize plant is time consuming, especially when measuring large areas, and may not provide a comprehensive view of the entire crop. Estimation of yield can be performed using remote sensing technology such as Unmanned Aerial Vehicles (UAVs), which is a rapid method for large area examination, providing detailed data on plant growth and yield estimation. This research paper aims to explore the capability of UAVs for plant growth monitoring and yield estimation in mountainous terrain. A multi-rotor UAV with a multi-spectral camera was used to obtain canopy spectral information of maize in five different stages of the maize plant life cycle. The images taken from the UAV were processed to obtain the result of the orthomosaic and the Digital Surface Model (DSM). The crop yield was estimated using different parameters such as Plant Height, Vegetation Indices, and biomass. A relationship was established in each sub-plot which was further used to calculate the yield of an individual plot. The estimated yield obtained from the model was validated against the ground-measured yield through statistical tests. A comparison of the Normalized Difference Vegetation Index (NDVI) and the Green-Red Vegetation Index (GRVI) indicators of a Sentinel image was performed. GRVI was found to be the most important parameter and NDVI was found to be the least important parameter for yield determination besides their spatial resolution in a hilly region.

摘要

超过 66%的尼泊尔人口日常生计依赖农业。玉米是尼泊尔种植面积最大的谷物作物,无论是在产量方面还是在尼泊尔丘陵和山区的种植面积方面。传统的基于地面的玉米植株生长监测和产量估计方法耗时耗力,尤其是在测量大面积区域时,并且可能无法全面了解整个作物。可以使用无人机(UAV)等遥感技术进行产量估计,这是一种用于大面积检查的快速方法,可以提供有关植物生长和产量估计的详细数据。本研究旨在探索无人机在山区地形中进行植物生长监测和产量估计的能力。一架带有多光谱相机的多旋翼无人机用于获取玉米在玉米植物生命周期的五个不同阶段的冠层光谱信息。从无人机拍摄的图像经过处理,获得正射镶嵌图和数字表面模型(DSM)的结果。使用植物高度、植被指数和生物量等不同参数来估计作物产量。在每个子地块中建立了一个关系,进一步用于计算单个地块的产量。通过统计检验对模型估算的产量与地面实测产量进行了验证。对 Sentinel 图像的归一化差异植被指数(NDVI)和红绿植被指数(GRVI)指标进行了比较。结果发现,在丘陵地区,除了空间分辨率之外,GRVI 是最重要的参数,而 NDVI 是确定产量的最不重要的参数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf4e/10300992/f4b5cfb0b256/sensors-23-05432-g001.jpg

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