Abstract

Leaf area index (LAI) has been investigated in multiple studies, either by means of visible/near-infrared and shortwave-infrared or thermal infrared remotely sensed data, with various degrees of accuracy. However, it is not yet known how the integration of visible/near and shortwave-infrared and thermal infrared data affect estimates of LAI. In this study, we examined the utility of Landsat-8 thermal infrared data together with its spectral data from the visible/near and shortwave-infrared region to quantify the LAI of a mixed temperate forest in Germany. A field campaign was carried out in August 2015, in the Bavarian Forest National Park, concurrent with the time of the Landsat-8 overpass, and a number of forest structural parameters, including LAI and proportion of vegetation cover, were measured for 37 plots. A normalised difference vegetation index threshold method was applied to calculate land surface emissivity and land surface temperature and their relations to LAI were investigated. Next, the relation between LAI and eight commonly used vegetation indices were examined using the visible/near-infrared and shortwave-infrared remote sensing data. Finally, the artificial neural network was used to predict the LAI using: (i) reflectance data from the Landsat-8 operational land imager (OLI) sensor; (ii) reflectance data from the OLI sensor and the land surface emissivity; and (iii) reflectance data from the OLI sensor and land surface temperature. A stronger relationship was observed between LAI and land surface emissivity compared to that between LAI and land surface temperature. In general, LAI was predicted with relatively low accuracy by means of the vegetation indices. Among the studied vegetation indices, the modified vegetation index had the highest accuracy for LAI prediction (R2CV = 0.33, RMSECV = 1.21 m2m−2). Nevertheless, using the visible/near-infrared and shortwave-infrared spectral data in the artificial neural network, the prediction accuracy of LAI increased (R2CV = 0.58, RMSECV = 0.83 m2m−2). The integration of reflectance and land surface emissivity significantly improved the prediction accuracy of the LAI (R2CV = 0.81, RMSECV = 0.63 m2m−2). For the first time, our results demonstrate that the combination of Landsat-8 reflectance spectral data from the visible/near-infrared and shortwave-infrared domain and thermal infrared data can boost the estimation accuracy of the LAI in a forest ecosystem. This finding has implication for the prediction of other vegetation biophysical, or possibly biochemical variables using thermal infrared satellite remote sensing data, as well as regional mapping of LAI when coupled with a canopy radiative transfer model.

Highlights

  • Leaf area index (LAI) is extensively applied to observe and monitor ecosystem functions [1,2,3]

  • The results of this study demonstrate that integration of the VNIR/SWIR and TIR satellite data has a high potential for boosting the retrieval accuracy of the LAI as the most important vegetation biophysical variable as well as the essential biodiversity variables (EBVs)

  • The results of this study revealed that a combination of both TIRS (i.e., LSE) and reflectance data using a trained ANN (R2CV = 0.81, RMSECV = 0.63 m2m−2), is more reliable, and achieved higher prediction accuracy than the use of reflectance and its combination with LST

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Summary

Introduction

Leaf area index (LAI) is extensively applied to observe and monitor ecosystem functions (e.g., vegetation growth, and physiological activity) [1,2,3]. LAI has been widely retrieved by means of visible/near-infrared (VNIR, 0.3–1.0 μm) as well as shortwave-infrared (SWIR, 1.0–2.5 μm) spectral data over different ecosystems with varying degree of success [14,15,16,17,18,19,20,21]. In this respect, Verrelst et al [22] were evaluated the all possible band combinations for two- and tree-bands indices as well as different machine learning approaches using Sentinel-2 data for LAI retrieval and revealed machine learning approaches performed with greater accuracy. The potential of TIR remote sensing for estimating vegetation biophysical variables in general, and LAI in particular, has not been sufficiently studied

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