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Estimation of leaf water content from hyperspectral data of different plant species by using three new spectral absorption indices

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  • Hong Li
  • Wunian Yang
  • Junjie Lei
  • Jinxing She
  • Xiangshan Zhou

Abstract

The leaf equivalent water thickness (EWT, g cm−2) and fuel moisture content (FMC, %) are key variables in ecological and environmental monitoring. Although a variety of hyperspectral vegetation indices have been developed to estimate the leaf EWT and FMC, most of these indices are defined considered two or three specific bands for a specific plant species, which limits their applicability. In this study, we proposed three new spectral absorption indices (SAI970, SAI1200, and SAI1660) for various plant types by considering the symmetry of the spectral absorption at 970 nm, 1200 nm and 1660 nm and spectral heterogeneity of different leaves. The indices were calculated considering the absorption peak and shoulder bands of each leaf instead of the same specific bands for all leaves. A pooled dataset of three tree species (camphor (VX), capricorn (VJ), and red-leaf plum (VL)) was used to test the performance of the SAIs in terms of the leaf EWT and FMC estimation. The results indicated that, first, SAI1200 was more suitable for estimating the EWT than FMC, whereas SAI970 and SAI1660 were more suitable for estimating the FMC. Second, SAI1200 achieved the most accurate estimation of the EWT with a cross-validation coefficient of determination (Rcv2) of 0.845 and relative cross-validation root mean square error (rRMSEcv) of 8.90%. Third, SAI1660 outperformed the other indices in estimating the FMC at the leaf level, with an Rcv2 of 0.637 and rRMSEcv of 8.56%. Fourth, SAI970 achieved a moderate accuracy in estimating the EWT (Rcv2 of 0.25 and rRMSEcv of 19.68%) and FMC (Rcv2 of 0.275 and rRMSEcv of 12.10%) at the leaf level. These results can enrich the application of the SAIs and demonstrate the potential of using SAI1200 to determine the leaf EWT and SAI1660 to obtain the leaf FMC among various plant types.

Suggested Citation

  • Hong Li & Wunian Yang & Junjie Lei & Jinxing She & Xiangshan Zhou, 2021. "Estimation of leaf water content from hyperspectral data of different plant species by using three new spectral absorption indices," PLOS ONE, Public Library of Science, vol. 16(3), pages 1-16, March.
  • Handle: RePEc:plo:pone00:0249351
    DOI: 10.1371/journal.pone.0249351
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    References listed on IDEAS

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    1. El-Hendawy, Salah E. & Al-Suhaibani, Nasser A. & Hassan, Wael M. & Dewir, Yaser H. & Elsayed, Salah & Al-Ashkar, Ibrahim & Abdella, Kamel A. & Schmidhalter, Urs, 2019. "Evaluation of wavelengths and spectral reflectance indices for high-throughput assessment of growth, water relations and ion contents of wheat irrigated with saline water," Agricultural Water Management, Elsevier, vol. 212(C), pages 358-377.
    2. El-Hendawy, Salah E. & Al-Suhaibani, Nasser A. & Elsayed, Salah & Hassan, Wael M. & Dewir, Yaser Hassan & Refay, Yahya & Abdella, Kamel A., 2019. "Potential of the existing and novel spectral reflectance indices for estimating the leaf water status and grain yield of spring wheat exposed to different irrigation rates," Agricultural Water Management, Elsevier, vol. 217(C), pages 356-373.
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