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RESEARCH ARTICLE

Monitoring leaf pigment status with hyperspectral remote sensing in wheat

Wei Feng A , Xia Yao A , Yongchao Tian A , Weixing Cao A and Yan Zhu A B
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A Jiangsu Key Laboratory for Information Agriculture, Nanjing Agricultural University, 1 Weigang Road, Nanjing, Jiangsu 210095, P.R. China.

B Corresponding author. Email: yanzhu@njau.edu.cn

Australian Journal of Agricultural Research 59(8) 748-760 https://doi.org/10.1071/AR07282
Submitted: 30 July 2007  Accepted: 24 April 2008   Published: 29 July 2008

Abstract

Leaf pigment status within a canopy is a key index for evaluating photosynthetic efficiency and nutritional stress in crop plants. Non-destructive and quick assessment of leaf pigment status is needed for growth diagnosis, yield prediction, and nitrogen (N) management in crop production. The objectives of this study were to analyse quantitative relationships of leaf pigment concentration on a dry weight basis and leaf pigment density per unit soil area to ground-based canopy hyperspectral reflectance and derivative parameters, and to establish estimation models for real-time monitoring of leaf pigment status with key hyperspectral bands and indices in wheat (Triticum aestivum L.). Two field experiments were conducted with different N application rates and wheat cultivars across two growing seasons, and time-course measurements were taken on canopy hyperspectral reflectance over 350−2500 nm, leaf pigment concentrations, and leaf dry weights under the various treatments at different growth stages. The results showed that different pigment concentrations and densities of chlorophyll a (Chla), chlorophyll b (Chlb), total chlorophyll (Chla+b), and carotenoids (Car) in two cultivars, Ningmai 9 (low grain protein concentration) and Yumai 34 (high grain protein concentration), tended to increase with increasing N rates, and differed with genotypes and growth stages. The analyses on the relationships between vegetation indices and leaf pigment concentrations and densities indicated that the pigment concentrations and pigment densities, respectively, were highly correlated with eight spectral parameters selected. The leaf chlorophyll concentrations were highly correlated with red edge position, with highest coefficients of determination (R2) for REPLE, while R2 between Car and spectral indices decreased. The chlorophyll densities were highly correlated with VOG2, VOG3, RVI(810,560), Dr/Db, and SDr/SDb, but the correlation was also reduced for carotenoids. Testing of the monitoring equations with independent datasets indicated that the red edge position was the best hyperspectral parameter to estimate leaf pigment concentrations, with no significant difference between REPLE and REPIG for Chla, Chla+b, and Car, although better performance with REPIG than with REPIE for estimation of Chlb. The VOG2, VOG3, Dr/Db, and SDr/SDb were the best hyperspectral parameters to estimate leaf pigment densities, but with lower estimation accuracy for Chlb and lower estimation precision for Car. The overall results suggested that the pigment concentrations and densities in wheat leaves, especially for Chla and Chla+b, could be reliably estimated with the hyperspectral parameters established in this study.

Additional keywords: pigment concentration, pigment density, monitoring model.


Acknowledgments

This research was supported by the National Natural Science Foundation of China (30671215, 30400278), the State Hi-tech Research and Development Plan of China (2006AA10Z202), the PhD Program Fund of China (20060307031), and the Natural Science Foundation of Jiangsu Province (BK2005212).


References


Blackburn GA (1998a) Quantifying chlorophylls and caroteniods at leaf and canopy scales: an evaluation of some hyperspectral approaches. Remote Sensing of Environment 66, 273–285.
Crossref | GoogleScholarGoogle Scholar | open url image1

Blackburn GA (1998b) Spectral indices for estimating photosynthetic pigment concentrations: a test using senescent tree leaves. International Journal of Remote Sensing 19, 657–675.
Crossref | GoogleScholarGoogle Scholar | open url image1

Blackmer TM, Schepers JS, Varvel GE (1994) Light reflectance compared with other nitrogen stress measurements in corn leaves. Agronomy Journal 86, 934–938. open url image1

Broge NH, Mortensen JV (2002) Deriving green crop area index and canopy chlorophyll density of winter wheat from spectral reflectance data. Remote Sensing of Environment 81, 45–57.
Crossref | GoogleScholarGoogle Scholar | open url image1

Buschmann C, Nagel E (1993) In vivo spectroscopy and internal optics of leaves as basis for remote sensing of vegetation. International Journal of Remote Sensing 14, 711–722.
Crossref | GoogleScholarGoogle Scholar | open url image1

Chappelle EW, Kim MS, McMurtrey JE (1992) Ratio analysis of reflectance spectra (RARS): an algorithm for the remotely estimation of the concentrations of chlorophyll a, chlorophyll b, and carotenoids in soybean leaves. Remote Sensing of Environment 39, 239–247.
Crossref | GoogleScholarGoogle Scholar | open url image1

Cho MA, Skidmore AK (2006) A new technique for extracting the red edge position from hyperspectral data: the linear extrapolation method. Remote Sensing of Environment 101, 181–193.
Crossref | GoogleScholarGoogle Scholar | open url image1

Curran PJ, Dungan JL, Gholz HL (1990) Exploring the relationship between reflectance red edge and chlorophyll content in slash pine. Tree Physiology 7, 33–48.
PubMed |
open url image1

Datt B (1998) Remote sensing of chlorophyll a, chlorophyll b, chlorophyll a+b, and total carotenoid content in eucalyptus leaves. Remote Sensing of Environment 66, 111–121.
Crossref | GoogleScholarGoogle Scholar | open url image1

Daughtry CST, Walthall CL, Kim MS, de Colstoun EB, McMurtrey JE (2000) Estimating corn leaf chlorophyll concentration from leaf and canopy reflectance. Remote Sensing of Environment 74, 229–239.
Crossref | GoogleScholarGoogle Scholar | open url image1

Dawson TP, Curran PJ (1998) A new technique for interpolating the reflectance red edge position. International Journal of Remote Sensing 19, 2133–2139.
Crossref | GoogleScholarGoogle Scholar | open url image1

Demetriades-Shah TH, Steven MD, Clark JA (1990) High resolution derivative spectra in remote sensing. Remote Sensing of Environment 33, 55–64.
Crossref | GoogleScholarGoogle Scholar | open url image1

Fernández-Escobar R, Barranco D, Benlloch M (1993) Overcoming iron chlorosis in olive and peach trees using a low-pressure trunk-injection method. Horticultural Science 28, 192–194. open url image1

Filella I, Serrano L, Serra J, Peñuelas J (1995) Evaluating wheat nitrogen status with canopy reflectance indices and discriminant analysis. Crop Science 35, 1400–1405. open url image1

Gitelson AA, Gritz Y, Merzlyak MN (2003) Relationships between leaf chlorophyll content and spectral reflectance and algorithms for non-destructive chlorophyll assessment in higher plant leaves. Journal of Plant Physiology 160, 271–282.
Crossref | GoogleScholarGoogle Scholar | PubMed | open url image1

Gitelson AA, Kaufman YJ, Merzlyak MN (1996) Use of a green channel in remote sensing of global vegetation from EOS-MODIS. Remote Sensing of Environment 58, 289–298.
Crossref | GoogleScholarGoogle Scholar | open url image1

Gitelson AA, Merzlyak MN (1994) Spectral reflectance changes associate with autumn senescence of Aesculus hippocastanum L. and Acer platanoides L. leaves spectral features and relation to chlorophyll estimation. Journal of Plant Physiology 143, 286–292. open url image1

Gitelson AA, Merzlyak MN (1997) Remote estimation of chlorophyll content in higher plant leaves. International Journal of Remote Sensing 18, 2691–2697.
Crossref | GoogleScholarGoogle Scholar | open url image1

Gitelson AA, Zur Y, Chivkunova OB, Merzlyak MN (2002) Assessing carotenoid content in plant leaves with reflectance spectroscopy. Photochemistry and Photobiology 75, 272–281.
Crossref | GoogleScholarGoogle Scholar | PubMed | open url image1

Gong P, Pu R, Heald RC (2002) Analysis of in situ hyperspectral data for nutrient estimation of giant sequoia. International Journal of Remote Sensing 23, 1827–1850.
Crossref | GoogleScholarGoogle Scholar | open url image1

Graeff S, Claupein W (2003) Quantifying nitrogen status of corn (Zea mays L.) in the field by reflectance measurements. European Journal of Agronomy 19, 611–618.
Crossref | GoogleScholarGoogle Scholar | open url image1

Gupta RK, Vijayan D, Prasad TS (2003) Comparative analysis of red edge hyperspectral indices. Advances in Space Research 32, 2217–2222.
Crossref | GoogleScholarGoogle Scholar | open url image1

Gutiérrez-Rosales F, Garrido-Fernández J, Galliardo-Guerrero L, Gandul-Rojas B, Minguez-Mosquera MI (1992) Action of chlorophylls on the stability of virgin olive oil. Journal of the American Oil Chemists’ Society 69, 866–871.
Crossref | GoogleScholarGoogle Scholar | open url image1

Hansen PM, Schjoerring JK (2003) Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalize difference vegetation indices and partial least squares regression. Remote Sensing of Environment 86, 542–553.
Crossref | GoogleScholarGoogle Scholar | open url image1

Horler DNH, Dockray M, Barber J (1983) The red edge of plant leaf reflectance. International Journal of Remote Sensing 4, 273–288.
Crossref | GoogleScholarGoogle Scholar | open url image1

Hu BX, Qian SE, Haboudane D, Miller JR, Hollinger AB, Tremblay N, Pattey E (2004) Retrieval of crop chlorophyll content and leaf area index from decompressed hyperspectral data: the effects of data compression. Remote Sensing of Environment 92, 139–152.
Crossref | GoogleScholarGoogle Scholar | open url image1

Jago RA, Cutler MEJ, Curran PJ (1999) Estimating canopy chlorophyll concentration from field and airborne spectra. Remote Sensing of Environment 68, 217–224.
Crossref | GoogleScholarGoogle Scholar | open url image1

Johnkutty I, Mathew G, Thiyagarajan TM, Balasubramanian V (2000) Relationship among leaf nitrogen content, SPAD and LCC values in rice. Journal of Tropical Agriculture 38, 97–99. open url image1

Lichtenthaler HK (1987) Chlorophylls and carotenoids: pigments of photosynthetic biomembranes. Methods in Enzymology 148, 350–382.
Crossref |
open url image1

Liu WD, Xiang YQ, Zheng LF, Tong QX, Wu CS (2000) Relationships between rice LAI, CH.D and hyperspectra data. Journal of Remote Sensing 4, 279–283 [in Chinese]. open url image1

Merzlyak MN, Gitelson AA (1995) Why and what for the leaves are yellow in autumn? On the interpretation of optical spectra of senescing leaves (Acer platanoides L.). Journal of Plant Physiology 145, 315–320. open url image1

Miller JR, Hare EW, Wu J (1990) Quantitative characterization of the vegetation red edge reflectance 1. An inverted-Gaussian reflectance model. International Journal of Remote Sensing 11, 1755–1773.
Crossref | GoogleScholarGoogle Scholar | open url image1

Peñuelas J, Filella I (1998) Visible and near-infrared reflectance techniques for diagnosing plant physiological status. Trends in Plant Science 3, 151–156.
Crossref | GoogleScholarGoogle Scholar | open url image1

Pinar A, Curran PJ (1996) Grass chlorophyll and the reflectance red edge. International Journal of Remote Sensing 17, 351–357.
Crossref | GoogleScholarGoogle Scholar | open url image1

Richardson AD, Duigan SP, Berlyn GP (2002) An evaluation of noninvasive methods to estimate foliar chlorophyll content. New Phytologist 153, 185–194.
Crossref | GoogleScholarGoogle Scholar | open url image1

Rouse JW , Haas RH , Schell JA , Deering DW , Harlan JC (1974) Monitoring the vernal advancements and retrogradation of natural vegetation. NASA/GSFC, Type III, Final Report. MD, USA Greenbelt. pp. 1–371.

SAS Institute (2004) ‘SAS/STAT user’s guide. Version 9.1.’ pp. 25–68. (SAS Inst.: Cary, NC)

Sims DA, Gamon JA (2002) Relationships between leaf pigment content and spectral reflectance across a wide range of species, leaf structures and developmental stages. Remote Sensing of Environment 81, 337–354.
Crossref | GoogleScholarGoogle Scholar | open url image1

Tang YL, Wang RC, Huang JF, Kong WS, Cheng Q (2004) Hyperspectral data and their relationships correlative to the pigment contents for rice under different nitrogen support level. Journal of Remote Sensing 8, 186–192 [in Chinese]. open url image1

Thenkabail PS, Smith RB, Pauw ED (2000) Hyperspectral vegetation indices and their relationships with agricultural crop characteristics. Remote Sensing of Environment 71, 158–182.
Crossref | GoogleScholarGoogle Scholar | open url image1

Vogelmann JE, Rock BN, Moss DM (1993) Red-edge spectral measurements from Sugar Maple leaves. International Journal of Remote Sensing 14, 1563–1575.
Crossref | GoogleScholarGoogle Scholar | open url image1

Wang XZ, Huang JF, Li YM, Wang RC (2003) Correlation between chemical contents of leaves and characteristic variables of hyperspectra on rice field. Transactions of the CSAE 19, 144–148 [in Chinese]. open url image1

Zarco-Tejada PJ, Berjón A, López-Lozano R, Miller JR, Martín P, Cachorro V, González MR, de Frutos A (2005) Assessing vineyard condition with hyperspectral indices: leaf and canopy reflectance simulation in a row-structured discontinuous canopy. Remote Sensing of Environment 99, 271–287.
Crossref | GoogleScholarGoogle Scholar | open url image1

Zarco-Tejada PJ, Miller JR, Noland TL, Mohammed GH, Sampson PH (2001) Scaling-up and model inversion methods with narrow-band optical indices for chlorophyll content estimation in closed forest canopies with hyperspectral data. IEEE Transactions on Geoscience and Remote Sensing 39, 1491–1507.
Crossref | GoogleScholarGoogle Scholar | open url image1

Zhu Y, Li YX, Feng W, Tian YC, Yao X, Cao WX (2006) Monitoring leaf nitrogen in wheat using canopy reflectance spectra. Canadian Journal of Plant Science 86, 1037–1046. open url image1