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Deriving leaf mass per area (LMA) from foliar reflectance across a variety of plant species using continuous wavelet analysis
Institution:1. Center for Spatial Technologies and Remote Sensing (CSTARS), Department of Land, Air and Water Resources, University of California, Davis, CA 95616, USA;2. Earth Observation Systems Laboratory, Department of Earth and Atmospheric Sciences, University of Alberta, Edmonton, Alberta T6G 2E3, Canada;3. Smithsonian Tropical Research Institute, Panama, Panama;4. Department of Global Ecology, Carnegie Institution for Science, 260 Panama Street, Stanford, CA 94305, USA;5. Institut de Physique du Globe de Paris, Sorbonne Paris Cité, Université Paris Diderot, UMR CNRS 7154, Case 7071, 35-39 rue Hélène Brion, 75013 Paris, France;1. College of Agriculture, Shanxi Agricultural University, 030801, Taigu, Shanxi, China;2. Institute of Geography Science, Taiyuan Normal University, 030619, Jinzhong, Shanxi, China;1. Institute of Geography, FAU Erlangen-Nürnberg, Wetterkreuz 15, 91058 Erlangen, Germany;2. Department of Environment, Centre for Energy, Environment and Technology (CIEMAT), Avda. Complutense 40, E-28040-Madrid, Spain;3. Andreas-Paulus-Str. 57, 91080 Spardorf, Germany;4. Dep. Biogeochemistry and Microbial Ecology, Museo Nacional de Ciencias Naturales, MNCN-CSIC, Serrano 115 dpdo, 28006 Madrid, Spain;5. Real Jardín Botánico, RJB-CSIC, Pza. de Murillo 2, 28014 Madrid, Spain
Abstract:Leaf mass per area (LMA), the ratio of leaf dry mass to leaf area, is a trait of central importance to the understanding of plant light capture and carbon gain. It can be estimated from leaf reflectance spectroscopy in the infrared region, by making use of information about the absorption features of dry matter. This study reports on the application of continuous wavelet analysis (CWA) to the estimation of LMA across a wide range of plant species. We compiled a large database of leaf reflectance spectra acquired within the framework of three independent measurement campaigns (ANGERS, LOPEX and PANAMA) and generated a simulated database using the PROSPECT leaf optical properties model. CWA was applied to the measured and simulated databases to extract wavelet features that correlate with LMA. These features were assessed in terms of predictive capability and robustness while transferring predictive models from the simulated database to the measured database. The assessment was also conducted with two existing spectral indices, namely the Normalized Dry Matter Index (NDMI) and the Normalized Difference index for LMA (NDLMA).Five common wavelet features were determined from the two databases, which showed significant correlations with LMA (R2: 0.51–0.82, p < 0.0001). The best robustness (R2 = 0.74, RMSE = 18.97 g/m2 and Bias = 0.12 g/m2) was obtained using a combination of two low-scale features (1639 nm, scale 4) and (2133 nm, scale 5), the first being predominantly important. The transferability of the wavelet-based predictive model to the whole measured database was either better than or comparable to those based on spectral indices. Additionally, only the wavelet-based model showed consistent predictive capabilities among the three measured data sets. In comparison, the models based on spectral indices were sensitive to site-specific data sets. Integrating the NDLMA spectral index and the two robust wavelet features improved the LMA prediction. One of the bands used by this spectral index, 1368 nm, was located in a strong atmospheric water absorption region and replacing it with the next available band (1340 nm) led to lower predictive accuracies. However, the two wavelet features were not affected by data quality in the atmospheric absorption regions and therefore showed potential for canopy-level investigations. The wavelet approach provides a different perspective into spectral responses to LMA variation than the traditional spectral indices and holds greater promise for implementation with airborne or spaceborne imaging spectroscopy data for mapping canopy foliar dry biomass.
Keywords:Leaf mass per area  Dry matter content  Specific leaf area  PROSPECT model  Remote sensing  Wavelet analysis
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