REMOTE SENSING ESTIMATION OF FOREST LAI IN CLOSE CANOPY
SITUATION
K. S. Lee, Y. I. Park, S. H. Kim, J. H. Park, C. S. Woo, and K. C. Jang
Inha University, Department of Geoinformatic Engineering
253 Yonghyung-dong, Nam-gu, Incheon 401-751, S. KOREA
ksung@inha.ac.kr
KEY WORDS: LAI, forest, spectral reflectance, spectro-radiometer, close canopy, ETM+
ABSTRACT:
This study attempts to find a new and better approach to estimate forest LAI in fully closed canopy condition. Although there
have been many previous studies to estimate LAI using optical remote sensor data, there are not enough evidences whether the
red and near-IR reflectance are still effective to estimate forest LAI in closed canopy situation. In this study, we have conducted a
simple correlation analysis between LAI and spectral reflectance at two different settings: 1) spectral measurements on the
multiple-layers of leaf samples and 2) Landsat ETM+ reflectance with field-measured LAI on the close canopy forest stands. In
both cases, the correlation coefficients between LAI and spectral reflectance were higher in short-wave infrared (SWIR) and
visible wavelength regions. Although the near-IR reflectance showed positive correlations with LAI the correlations strength is
weaker than in SWIR and visible region. The higher correlations were found with the spectral reflectance data measured on the
simulated vegetation samples than with the ETM+ reflectance on the actual forests. In addition, there was no significant
correlation between the forest LAI and NDVI, in particular when the LAI values were over three and full canopy situation. The
SWIR reflectance may be important factor to improve the potential of optical remote sensor data to estimate forest LAI in close
canopy situation.
INTRODUCTION
Forest leaf area index (LAI) has been one of important
structural variables to understand the process of forest
ecosystems and can be used to measure the activities and the
production of plant ecosystem (Pierce and Running, 1988;
Bonan, 1993). The measurement of LAI on the ground is very
difficult and requires a great amount of time and efforts (Gower
et al., 1999). This is particularly true in forest where the canopy
structure is much more complex than the grasslands and
agriculture systems. Since plant canopy is composed of leaves,
which is a direct source of the energy-matter interactions that
are observed by earth-observing remote sensing systems, LAI
has been an attractive variable of interest in vegetative remote
sensing.
There have been many attempts to estimate LAI using various
types of remote sensor data since the early stage of space
remote sensing (Badwhar et al., 1986; Peterson et al., 1987;
Turner et al., 1999). Remote sensing estimation of LAI has
been primarily based on the empirical relationship between the
field-measured LAI and sensor observed spectral responses
(Curran et al., 1992; Peddle et al., 1999). As a single value to
represent the remotely sensed spectral responses of green
leaves, spectral vegetation indices, such as normalized
difference vegetation index (NDVI) or simple ratio, are
frequently used to indirectly estimate LAL
Normalized difference vegetation index (NDVI) has been a
popular index with which to estimate LAI across diverse
' Corresponding author
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ecosystems. However, large portion of such studies to estimate
LAI using NDVI were dealing with semi-arid vegetation and
agricultural systems where the canopy closure is less than
100%. Recent studies have shown that the NDVI many not be
very sensitive to values of LAI in particular at the forest
ecosystem having the close canopy condition that the LAI
/alue is relatively high (Chen and Cihlar 1996, Turner et al.
1999)
The objectives of this study are to analyse the relationship
between spectral reflectance and LAI in fully canopy condition
and to find a methodology to estimate LAI in forest where the
canopy closure is closed to 100% and LAI values are high.
Although there were several studies dealing with the remote
sensing estimation of LAI in forest, the study sites were
generally not close canopy situation (Turner et al, 1999;
Lefsky et al, 1999). The forest vegetation has very dense
canopy closure in Korea as well as many other temperate and
tropical forests around the world. Considering the
environmental value of these forest ecosystems, more effective
and accurate method to estimate forest LAI would be very
beneficial.
METHODS
Spectral Measurements on Simulated LAI Samples
Before attempting to analyze the actual satellite imagery along
with field-measured LAI data, we decided to analyse the
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