Abstract

Abstract. The Normalized Difference Vegetation Index (NDVI) is widely used for Leaf Area Index (LAI) estimation. It is well documented that the NDVI is extremely subject to the saturation problem when LAI reaches a high value. A new multi-angular vegetation index, the Hotspot-darkspot Difference Vegetation Index (HDVI) is proposed to estimate the high density LAI. The HDVI, defined as the difference between the hot and dark spot NDVI, relative to the dark spot NDVI, was proposed based on the Analytical two-layer Canopy Reflectance Model (ACRM) model outputs. This index is validated using both in situ experimental data in wheat and data from the multi-angular optical Compact High-Resolution Imaging Spectrometer (CHRIS) satellite. Both indices, the Hotspot-Darkspot Index (HDS) and the NDVI were also selected to analyze the relationship with LAI, and were compared with new index HDVI. The results show that HDVI is an appropriate proxy of LAI with higher determination coefficients (R2) for both the data from the in situ experiment (R2=0.7342, RMSE=0.0205) and the CHRIS data (R2=0.7749, RMSE=0.1013). Our results demonstrate that HDVI can make better the occurrence of saturation limits with the information of multi-angular observation, and is more appropriate for estimating LAI than either HDS or NDVI at high LAI values. Although the new index needs further evaluation, it also has the potential under the condition of dense canopies. It provides the effective improvement to the NDVI and other vegetation indices that are based on the red and NIR spectral bands.

Highlights

  • The Leaf Area Index (LAI) is defined as one half the total green leaf areas per unit ground surface area [1]

  • The usefulness of the Hotspot-darkspot Difference Vegetation Index (HDVI) was tested in the estimation of LAI using both the data from in situ measurements of wheat and Compact High-Resolution Imaging Spectrometer (CHRIS)/Project On-Board Autonomy (PROBA) remote sensing image data

  • This study has demonstrated the potential of the new vegetation index HDVI to estimate LAI

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Summary

Introduction

The Leaf Area Index (LAI) is defined as one half the total green leaf areas per unit ground surface area [1]. The vegetation index method is a common and widely-used approach to estimate LAI by satellite remote sensing observations [4,5] This method is simple to use, but the empirical relationship between the indices and the LAI varies with vegetation types, space, and time [6], and most vegetation indices have limited potential for the interpretation of LAI for dense canopies. This saturation problem suggests that other elements, such as the three-dimensional distribution of the canopy, should be taken into account [7]. Because traditional vegetation indices cannot account for the heterogeneity of vegetation reflection, vegetation indices combined with multi-angular data have the potential to further improve vegetation structure parameters estimation [8]

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