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A COMPARISON OF ESTIMATING FOREST CANOPY HEIGHT
INTEGRATING MULTI-SENSOR DATA SYNERGY
A CASE STUDY IN MOUNTAIN AREA OF THREE GORGES
Lixin Dong, Bingfang Wu *
Institute of Remote Sensing Applications, Chinese Academy of Sciences, Beijing 100101, P. R. China
Datun Road No. 3, P. O. Box 9718, 100101, Beijing, P. R. China, dlx_water@163.com
KEY WORDS: Forest Canopy Height, Lidar, Multisensor Integration, Three Gorges, Spatial models
ABSTRACT:
Forest canopy height is an important input for ecosystem and highly correlated with aboveground biomass at the landscape scale. In
this paper, we make efforts to extracte the maximum canopy height using GLAS waveform combination with the terrain index in
sloped area where LiDAR data were present. Where LiDAR data were not present, the optical remote sensing data were used to
estimate the canopy height at broad scale regions, we compared four aspatial and spatial methods for estimating canopy height
integrating large footprint Lidar system (GLAS) and Landsat ETM+: ordinary least squares regression, ordinary kriging, cokriging,
and cokriging of regression residuals. The results show that (1) the terrain index will help to extract the forest canopy height over a
range of slopes. Regression modles explained 51.0% and 84.0% of variance for broadleaf and needle forest respectively.(2) some
improvements were achieved by adding additional remote sensing data sets. The integrated models that cokriged regression residuals
were preferable to either the aspatial or spatial models alone.The integrated modeling strategy is most suitable for estimating forest
canopy height at locations unsampled by lidar.
1. INTRODUCTION
Measurements of forest structure are critical for biomass esti
mation (Sun et al., 2008), biodiversity studies (North et al.1999),
fire modelling (Finney, 1998), carbon stock estimation (Skole
& Tucker, 1993), et,al.. Meantime, forest canopy height is an
important input for ecosystem and is highly correlated with bio
mass (Lefsky, 2005). Traditionally, these attributes have been
measured in field using handheld equipment, which are time-
consuming and limited in scope to mapping at the landscape
scale (Hyde et al. 2006). For passive optical sensors (Landsat
TM/ETM+), it provide useful structure information in the hori
zontal plane (Cohen & Spies, 1992), but is difficult to pene
trating beyond upper canopy layers (Weishampel et al., 2000).
Full waveform digitizing, large footprint LiDAR provides
highly accurate measurements of forest canopy structure in the
vertical plane (Nilsson, 1996, Lefsky et al. 1999). However,
current lidar sensors have limited coverage in horizontal plane
(Lefsky et al. 2002, Hyde et al. 2006).
In present time, due to no single technology is capable of
provide all broad scale information of vertical structure, there
have been several calls for improving the applicability of
remote sening data through multisensor integration (Hudak et al.
2002), combining information from multiple sensor is a pro
mising efforts to improving the accuracy of canopy height esti
mation at landscape scales (Slatton et al., 2001, Wulder et al.
2004).
Lidar-Landsat TM/ETM+ integration has immediate relevance
due to the anticipated launches of the Ice, Cloud, and Land
Elevation Satellite (ICESat) (Hudak et al. 2002). In this study,
our mainly objective was to estimate canopy height at broad
scales by integrating the lidar and Landsat TM/ETM+ at the
lidar sample locations. The basic data from GLAS (maximum
canopy height) and biophysical attributes from Landsat
TM/ETM+ (LAI, Forest cover and vegetation indices) were
used for estimation of canopy height. We compared and tested
four widely used empirical estimation methods: ordinary least
squares (OLS) regression, ordinary kriging (OK), and ordinary
cokriging (OCK), and the mixed model of cokriging of
regression residuals.
Our study area lies in mountain area of Three Gorges, which is
representative of the age and structural classes common in the
region. For forests on level ground, the waveform peaks of
canopy surfaces and underlying ground within the footprint
were easily separate. However, over sloped areas, the extent of
waveform increased which inducing some errors. Harding and
Carabajal (2005) point out that the vertical extent of each
waveform increases as a function of the product of the slope
and the footprint size, and returns from both canopy and ground
surfaces can occur at the same elevation. In order to effectively
extracting the canopy height in the sloped area, a new technique
using Terrain Index algorithms was used for estimation of
canopy height GLAS system in Three Gorges.
2. STUDY AREAS AND DATA PROCESSING
2.1 Sduty Areas
Three Gorges area is a key area of the natural protective regions
in China. It is located in 106°00'~111°50'E, 29 0 16'~31 0 25'N,
and covers an area of approximately 5.8* 10 4 km 2 . It lies in the
lower part of the upper reaches of the Yangtze. To the north is
* Corresponding author. Email: wubfiirsa. ac. cn..