4.7 Article

Single bands leaf reflectance prediction based on fuel moisture content for forestry applications

期刊

BIOSYSTEMS ENGINEERING
卷 202, 期 -, 页码 79-95

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.biosystemseng.2020.12.003

关键词

Leaf water index; Machine learning; Remote sensing; Wildfire; Wildland fuels

资金

  1. Agencia Nacional de Investigacion y Desarrollo (ANID)/PFCHA/DOCTORADO NACIONAL CHILE [2019-21190471, PIA/ANILLO/ACT172095]
  2. FONDECYT [1201319]
  3. Advanced Center for Electrical and Electronic Engineering, AC3E, Basal Project [FB0008]
  4. DGIIP-UTFSM Chile [PIIC 2020/1]

向作者/读者索取更多资源

Vegetation indices can be used to assess vegetation cover quantitatively and qualitatively by predicting biophysical properties of leaves through their reflectance features. Different indices can describe the same biophysical parameter, with at least sixteen indices capable of inferring vegetation water content. A machine learning regressor can predict leaf reflectance at specific spectral bands using leaf moisture content and a single vegetation index.
Vegetation indices can be used to perform quantitative and qualitative assessment of vegetation cover. These indices exploit the reflectance features of leaves to predict their biophysical properties. In general, there are different vegetation indices capable of describing the same biophysical parameter. For instance, vegetation water content can be inferred from at least sixteen vegetation indices, where each one uses the reflectance of leaves in different spectral bands. Therefore, if the leaf moisture content, a vegetation index and the reflectance at the wavelengths to compute the vegetation index are known, then the reflectance in other spectral bands can be computed with a bounded error. The current work proposes a method to predict, by a machine learning regressor, the leaf reflectance (spectral signature) at specific spectral bands using the information of leaf moisture content and a single vegetation index of two tree species (Pinus radiata, and Eucalyptus globulus), which constitute 97.5% of the Valparai ' so forests in Chile. Results suggest that the most suitable vegetation index to predict the spectral signature is the Leaf Water Index, which using a Kernel Ridge Regressor achieved the best prediction results, with a RMSE lower than 0.022, and a average R2 greater than 0.95 for Pinus radiata and 0.81 for Eucalyptus globulus, respectively. (c) 2020 IAgrE. Published by Elsevier Ltd. All rights reserved.

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