Title of article :
Predicting leaf gravimetric water content from foliar reflectance across a range of plant species using continuous wavelet analysis
Author/Authors :
Tao Cheng، نويسنده , , Benoit Rivard، نويسنده , , Arturo G. S?nchez-Azofeifa، نويسنده , , Jean-Baptiste Féret، نويسنده , , Stephane Jacquemoud، نويسنده , , Xue Liu and Susan L. Ustin، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
9
From page :
1134
To page :
1142
Abstract :
Leaf water content is an important variable for understanding plant physiological properties. This study evaluates a spectral analysis approach, continuous wavelet analysis (CWA), for the spectroscopic estimation of leaf gravimetric water content (GWC, %) and determines robust spectral indicators of GWC across a wide range of plant species from different ecosystems. CWA is both applied to the Leaf Optical Properties Experiment (LOPEX) data set and a synthetic data set consisting of leaf reflectance spectra simulated using the leaf optical properties spectra (PROSPECT) model. The results for the two data sets, including wavelet feature selection and GWC prediction derived using those features, are compared to the results obtained from a previous study for leaf samples collected in the Republic of Panamá (PANAMA), to assess the predictive capabilities and robustness of CWA across species. Furthermore, predictive models of GWC using wavelet features derived from PROSPECT simulations are examined to assess their applicability to measured data. The two measured data sets (LOPEX and PANAMA) reveal five common wavelet feature regions that correlate well with leaf GWC. All three data sets display common wavelet features in three wavelength regions that span 1732–1736 nm at scale 4, 1874–1878 nm at scale 6, and 1338–1341 nm at scale 7 and produce accurate estimates of leaf GWC. This confirms the applicability of the wavelet-based methodology for estimating leaf GWC for leaves representative of various ecosystems. The PROSPECT-derived predictive models perform well on the LOPEX data set but are less successful on the PANAMA data set. The selection of high-scale and low-scale features emphasizes significant changes in both overall amplitude over broad spectral regions and local spectral shape over narrower regions in response to changes in leaf GWC. The wavelet-based spectral analysis tool adds a new dimension to the modeling of plant physiological properties with spectroscopy data.
Keywords :
Spectral reflectance , Remote sensing , Wavelet analysis , PROSPECT model , leaf water content
Journal title :
Journal of Plant Physiology
Serial Year :
2012
Journal title :
Journal of Plant Physiology
Record number :
1282414
Link To Document :
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