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Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance

As a primary pigment of leafy green vegetables, chlorophyll plays a major role in indicating vegetable growth status. The application of hyperspectral remote sensing reflectance offers a quick and nondestructive method to estimate the chlorophyll content of vegetables. Reflectance of adaxial and aba...

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Autores principales: Lu, Fan, Bu, Zhaojun, Lu, Shan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6806069/
https://www.ncbi.nlm.nih.gov/pubmed/31547033
http://dx.doi.org/10.3390/s19194059
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author Lu, Fan
Bu, Zhaojun
Lu, Shan
author_facet Lu, Fan
Bu, Zhaojun
Lu, Shan
author_sort Lu, Fan
collection PubMed
description As a primary pigment of leafy green vegetables, chlorophyll plays a major role in indicating vegetable growth status. The application of hyperspectral remote sensing reflectance offers a quick and nondestructive method to estimate the chlorophyll content of vegetables. Reflectance of adaxial and abaxial leaf surfaces from three common leafy green vegetables: Pakchoi var. Shanghai Qing (Brassica chinensis L. var. Shanghai Qing), Chinese white cabbage (Brassica campestris L. ssp. Chinensis Makino var. communis Tsen et Lee), and Romaine lettuce (Lactuca sativa var longifoliaf. Lam) were measured to estimate the leaf chlorophyll content. Modeling based on spectral indices and the partial least squares regression (PLS) was tested using the reflectance data from the two surfaces (adaxial and abaxial) of leaves in the datasets of each individual vegetable and the three vegetables combined. The PLS regression model showed the highest accuracy in estimating leaf chlorophyll content of pakchoi var. Shanghai Qing (R(2) = 0.809, RMSE = 62.44 mg m(−2)), Chinese white cabbage (R(2) = 0.891, RMSE = 45.18 mg m(−2)) and Romaine lettuce (R(2) = 0.834, RMSE = 38.58 mg m(−2)) individually as well as of the three vegetables combined (R(2) = 0.811, RMSE = 55.59 mg m(−2)). The good predictability of the PLS regression model is considered to be due to the contribution of more spectral bands applied in it than that in the spectral indices. In addition, both the uninformative variable elimination PLS (UVE-PLS) technique and the best performed spectral index: MDATT, showed that the red-edge region (680–750 nm) was effective in estimating the chlorophyll content of vegetables with reflectance from two leaf surfaces. The combination of the PLS regression model and the red-edge region are insensitive to the difference between the adaxial and abaxial leaf structure and can be used for estimating the chlorophyll content of leafy green vegetables accurately.
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spelling pubmed-68060692019-11-07 Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance Lu, Fan Bu, Zhaojun Lu, Shan Sensors (Basel) Article As a primary pigment of leafy green vegetables, chlorophyll plays a major role in indicating vegetable growth status. The application of hyperspectral remote sensing reflectance offers a quick and nondestructive method to estimate the chlorophyll content of vegetables. Reflectance of adaxial and abaxial leaf surfaces from three common leafy green vegetables: Pakchoi var. Shanghai Qing (Brassica chinensis L. var. Shanghai Qing), Chinese white cabbage (Brassica campestris L. ssp. Chinensis Makino var. communis Tsen et Lee), and Romaine lettuce (Lactuca sativa var longifoliaf. Lam) were measured to estimate the leaf chlorophyll content. Modeling based on spectral indices and the partial least squares regression (PLS) was tested using the reflectance data from the two surfaces (adaxial and abaxial) of leaves in the datasets of each individual vegetable and the three vegetables combined. The PLS regression model showed the highest accuracy in estimating leaf chlorophyll content of pakchoi var. Shanghai Qing (R(2) = 0.809, RMSE = 62.44 mg m(−2)), Chinese white cabbage (R(2) = 0.891, RMSE = 45.18 mg m(−2)) and Romaine lettuce (R(2) = 0.834, RMSE = 38.58 mg m(−2)) individually as well as of the three vegetables combined (R(2) = 0.811, RMSE = 55.59 mg m(−2)). The good predictability of the PLS regression model is considered to be due to the contribution of more spectral bands applied in it than that in the spectral indices. In addition, both the uninformative variable elimination PLS (UVE-PLS) technique and the best performed spectral index: MDATT, showed that the red-edge region (680–750 nm) was effective in estimating the chlorophyll content of vegetables with reflectance from two leaf surfaces. The combination of the PLS regression model and the red-edge region are insensitive to the difference between the adaxial and abaxial leaf structure and can be used for estimating the chlorophyll content of leafy green vegetables accurately. MDPI 2019-09-20 /pmc/articles/PMC6806069/ /pubmed/31547033 http://dx.doi.org/10.3390/s19194059 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lu, Fan
Bu, Zhaojun
Lu, Shan
Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title_full Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title_fullStr Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title_full_unstemmed Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title_short Estimating Chlorophyll Content of Leafy Green Vegetables from Adaxial and Abaxial Reflectance
title_sort estimating chlorophyll content of leafy green vegetables from adaxial and abaxial reflectance
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6806069/
https://www.ncbi.nlm.nih.gov/pubmed/31547033
http://dx.doi.org/10.3390/s19194059
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