Predicting rice grain yield using normalized difference vegetation index from UAV and GreenSeeker

Hiroshi Nakano, Ryo Tanaka, Senlin Guan, Hideki Ohdan
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引用次数: 1

Abstract

A precise, simple, and rapid growth diagnosis method using normalized difference vegetation index (NDVI) obtained by unmanned aerial vehicle (UAV), which will help determine nitrogen (N) application rate to increase grain yield in numerous farmers' fields, is necessary for the development of a robust production system for rice (Oryza sativa L.). In the present study, we examined the relationship between UAV-NDVI and NDVI measured with the GreenSeeker handheld crop sensor (GS-NDVI), and between grain yield and UAV-NDVI or GS-NDVI at the reproductive stage in the plant communities at 4–1 ​week (wk) before heading in 2018 and 2019 and in 2020 and 2021, respectively. In the data of each measurement day in 2018 and 2019, the relationship between UAV-NDVI and GS-NDVI was strongly positive. However, in the pooled data of different measurement days, the relationship between UAV-NDVI and GS-NDVI was weakly positive. This was because GS-NDVI was more constant under various climatic conditions and across various time of day than UAV-NDVI at the reproductive stage. Furthermore, in the pooled data of different years in 2020 and 2021, GS-NDVI correlated more strongly with grain yield than UAV-NDVI between 3 and 1 ​wk before heading. To increase the efficiency of growth diagnosis and yield prediction in the numerous farmers’ fields, UAV-NDVI could be used with correction by a few measurements of GS-NDVI determined on the same day.

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基于无人机和GreenSeeker归一化植被指数的水稻产量预测
利用无人机(UAV)获得的归一化差异植被指数(NDVI)进行精确、简单、快速的生长诊断方法,将有助于确定氮(N)的施用率,以提高众多农民的粮食产量,这对于开发一个强大的水稻生产系统是必要的。在本研究中,我们研究了无人机NDVI和GreenSeeker手持式作物传感器(GS-NDVI)测量的NDVI之间的关系,以及在4–1的植物群落繁殖阶段,粮食产量与无人机NDVI或GS-NDVI之间的关系​分别于2018年和2019年以及2020年和2021年出发前一周。在2018年和2019年的每个测量日的数据中,UAV-NDVI和GS-NDVI之间的关系是强阳性的。然而,在不同测量日的汇总数据中,UAV-NDVI和GS-NDVI之间的关系呈弱阳性。这是因为在生殖阶段,GS-NDVI在各种气候条件下和一天中的不同时间比UAV-NDVI更稳定。此外,在2020年和2021年不同年份的汇总数据中,在3至1之间,GS-NDVI与粮食产量的相关性比UAV-NDVI更强​出发前工作。为了提高众多农民田地的生长诊断和产量预测效率,可以通过当天测定的几次GS-NDVI测量值进行校正,使用无人机NDVI。
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