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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV. Part B7. Istanbul 2004
where 2 is the scattering angle between incidence (6!,4,) and
reflection direction (6,4) and expressed as
cos 4 = cos0, cos0! + sin0' sin0! cos(d, —$4,) . Note that the
directional parameters (0,0!) have been primed to indicate
their adjusted value underwater due to refraction effects.
The G and F define the morphological characteristics of the
benthic cover that are three-dimensional, specifically corals and
seagrass. The BRDF for sand is assumed to be Lambertian.
2.6 Fusion of multisource imagery with varying resolution
To fuse images, we employ multiresolution decomposition
algorithm (Gross and Schott, 1998; Piella, 2004). This method
exploits the fact that the reflectance from the high resolution
image bears a linear relationship with its equivalent composite
of image pixels of lower resolution. In order to determine the
proper relationship, we degraded the higher-resolution satellite
data to correspond with the pixel size of lower-resolution
satellite data. We then increase the pixel size of the lower
resolution image but now weighted according the regressed
relationship for the nearest band. In this way, the detail of
objects captured in the higher resolution image is preserved
while retaining spectral integrity.
Going through all of these procedures, the intermediate product
at this stage could now be imagined to be the reflectance 14-
band image free from inherent effects of the atmosphere, water
surface conditions and object morphology.
2.7 Simultaneous fractional cover, classification and depth
estimation
Classification of benthic cover is based on the evaluation of
spectral unmixing results and radiative transfer model after the
necessary image corrections are accomplished and image fusion
is attained (Paringit and Nadaoka 2003). The proportions, /; of
the different benthic cover types are initially deconvolved by a
non-negative iterative least squares solution with sum-to-one
constraint (NILSSTOC). Using the estimated proportions for
the n number of benthic cover, the approximate reflectance is
computed by radiative transfer model (RTM):
R(b) =R, (b)exp(-2k,d,) + [=lexp(-2k,4, JS /R (b) (11)
where R,(b)is the reflectance at a nearby deep area (outside
the reef). The attenuation coefficient k, also varies only for
each band. The depth, d. initially given, varies with each sensor
by the difference d. sd n.) . The total rms (root mean
Square) error, R^ between the approximate reflectance R(b)
and the actual image data R(b) value for m number of bands
are then evaluated. We use a downhill simplex method to
iteratively vary d , repeat NILLSTOC and RTM, that will lead
0 a minimal and stable R’, The final product of this step
therefore will be a set of f, and the estimated average depth d .
In the classification, benthic cover is assigned according to its
ecological significance (Edinger and Risk, 2000). This scheme
I5 adopted because sometimes it is not necessary to assign
benthic cover with the largest / for a given pixel. Biological
999
researchers often regard the presence of a certain important
habitat as the pertinent cover even if only occurring at a fraction
physically.
2.8 Verification and accuracy assessment
In order to check the consistency of the merged datasets, we
compared the reflectance spectra of pure benthic cover obtained
from the image against the spectral data taken from the field.
We also evaluated the relative differences and/or similarities
between in-situ reflectance transect and its transect
representation in equivalent location in the image. We also
analyzed the classification and bathymetry estimates based on
confusion matrices and statistical measures of errors
respectively.
3. RESULTS AND ANALYSIS
3.1 Spectral consistency of merged datasets
Processed data show that there is strong correspondence
between the image reflectance and the measured field
reflectance (Figure 3). The additional bands augmented
appreciably in the recovery of the spectral curves by defining
spans of abrupt change in high and low absorption points.
Errors seem to be lower on shorter wavelength ranges (9%)
especially from targets with naturally high reflectance on the
VIS range.
60 {
© Seagrass
D Coral
50 A Sand £|
X Algae |
‘3 O Reef Rock i
e 40 Sand ^ A
9 — — Coral A^
8 30 - Seagrass A A fb +
= Algae
= Reefrocks
20
O 9 |
10 OQ 9 |
0 == J
400 500 600 700 800
Wavelength (nm)
Figure 3. Spectral signatures of typical reef cover types (lines)
superimposed with the equivalent reflectance values (marks)
obtained from each inclusive band of the satellite sensors used.
As shown in Figure 4, there appears to be a very strong
correlation of reflectance values between image and in-situ
transects. The strength of the retrievals are significantly reduced
(P>0.1) for longer wavelengths particularly the NIR bands.
0.26 0.2
* Reflectance . Reflectance
. .
0.24 Ideal line Ideal line
*.
30.22 $0.18
S e e =
= 2
3 0.2 ^ Z
S ve ë
5018 oe 7 0.16
E: = /:0.0537x ! 8
z 0.9481x + 0.0094 z € 3:90.0837x 1 0,0083
A 0.16 R?=0.9212 = R° =0.9237
0.14 0.14
0.14 0.16 0.18 0.2 0.22 0.24 0.26 0.14 0.16 0.18 0.2
Image transect Reh) Image transect Rib)
(a) (b)
Figure 4. Comparison of band 1 (IKONOS band 1) reflectance
from in-situ transects and image transects values along (a)
Shiraho Reef: 343 points and (b) Fukido River mouth area: 435
points.