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Study on Estimating Total Nitrogen Content in Sugar Beet Leaves Under Drip Irrigation Based on Vis-NIR Hyperspectral Data and Chlorophyll Content

Authors :
Zong-fei Li
Bing Chen
Hua Fan
Cong Fei
Ji-xia Su
Yang-yang Li
Ning-ning Liu
Hong-liang Zhou
Li-juan Zhang
Kai-yong Wang
Source :
Spectroscopy. :27-33
Publication Year :
2023
Publisher :
Multimedia Pharma Sciences, LLC, 2023.

Abstract

The relationship between the leaf nitrogen content (LNC) and hyperspectral remote sensing imagery (HYP) was determined to construct an estimation model of the LNC of drip-irrigated sugar beets, aiming to provide supports for the in-time monitoring of sugar beet growth and nitrogen management in arid areas. In this study, a field hyperspectrometer was used to collect the leaf reflectance at the 350–2500 nm for each treatment on the 65th, 85th, 104th, 124th, and 140th day after emergence, and the LNC and leaf chlorophyll content (CHL) of sugar beets were also determined. The spectral characteristic parameters were selected to construct the vegetation indices. The LNC estimation model using HYP as the independent variable (HYP-LNC), and that using CHL and HYP as the independent variables (HYP-CHL-LNC), were compared. The results shows that the HYP-CHL-LNC models had a better linear relationship and a higher fitting accuracy than the HYP-LNC models.

Details

ISSN :
19391900 and 08876703
Database :
OpenAIRE
Journal :
Spectroscopy
Accession number :
edsair.doi...........07f69916bcee195c87fe4157df5a0152
Full Text :
https://doi.org/10.56530/spectroscopy.rs8584b2