In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
experimental data themselves using the leave-one-out method
(Figure 5). Figure 6 shows that we get a slight overestimation of
CWC in this way.
Figure 5. Relationship between first derivative of canopy
reflectance over the interval 1015 - 1050 nm and
CWC at the Achterhoek site in 2008. At the
background the simulated relationship of Figure 3 is
shown.
Figure 6. Comparison between CWC measurements from field
samples and CWC estimations using PROSAIL
simulations of the relationship between CWC and
the spectral derivative over the 1015 - 1050 nm
interval.
4. CONCLUSIONS
Results presented in this paper show that the spectral
derivatives for wavelengths on the right slope of the water
absorption feature at 970 nm can be used for estimating canopy
water content (CWC). PROSAIL model simulations were
performed using the improved PROSPECT-5 model as
described by Feret et al. (2008). A linear relationship between
first derivative over the 1015 - 1050 nm spectral interval and
CWC was found, which was not very sensitive for leaf and
canopy structure. Field spectroscopic measurements at a fen
meadow confirmed the simulation results. The relationship
between the first derivative over the 1015 - 1050 nm interval
and CWC based on in-situ spectral measurements obtained in
the field appeared to match the simulated relationship obtained
from the PROSAIL model. This showed that one may transfer
simulated results to real measurements obtained in the field,
thus giving them a physical basis and more general
applicability.
Both simulated spectra and experimental FieldSpec spectra
showed that the right slope of the 970 nm absorption feature is
linear (constant) in the range from about 1015 nm up to about
1050 nm. Due to this broad interval, the first derivative over
this 1015 - 1050 nm interval can be measured more accurately
than the derivative at a certain spectral position (or narrow
interval). As a result, this derivative also is more robust and less
susceptible to noise. Smoothing the spectral measurements did
not give better results than non-smoothed measurements.
Smoothing was necessary when using narrow intervals (Clevers
et ah, 2008).
The PROSAIL simulations performed in this study do not
include an atmospheric model. When using remote sensing
observations from an airborne or spacebome platform, one
should also consider the water vapour absorption by the
atmosphere. This occurs, for instance, at 940 nm and 1140 nm
(Gao and Goetz, 1990; Iqbal, 1983), thus being shifted to
shorter wavelengths as compared to the corresponding liquid
water absorption features. This means that the effect of water
vapour absorptions in the atmosphere occurs at the left slopes of
the water absorption features used for estimating CWC. So, if
one cannot correct well for the effects of atmospheric water
vapour, it is recommended to use the first derivative, e.g., in the
1015 - 1050 nm interval.
Future work will continue focusing on higher spectral
resolution instruments, in particular in the water absorption
regions at 970 and 1200 nm. Instruments with a significantly
higher spectral resolution would be able to assess separately
water molecules in atmosphere and vegetation, allowing correct
estimations for both atmospheric water vapour and liquid water
in vegetation.
ACKNOWLEDGEMENTS
This work has been supported by the European Community’s
Marie Curie Research Training Networks Programme under
contract MRTN-CT-2006-035927, Hyperspectral Imaging
Network (HYPER-I-NET).
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