Estimation of Atmospheric Aerosol Depth with SPOT Satellite Data
Gin-Rong Liu*, Tang-Huang Lin** and A. J. Chen*
* Center for Space and Remote Sensing Research,
National Central University Chung-Li 320,
China Taipei;
E-mail: grliu@csrsr.ncu.edu.tw
** Institute of Space Science, National Central
University Chung-Li 320, China Taipei
Keywords: Aerosol optical depth, Structure function, SPOT
Abstract
In applying the contrast method, such as the structure function method,
to estimate the atmospheric aerosol depth with satellite data, a uniform landcover area
in image is chosen as a test area to avoid the probable errors induced by the poor
structure function patterns. Unfortunately, the uniform area is not easy to pick up or
does not exist in some complex landuse regions, such as in Taiwan. In order to pursue
the potential application of the structure function method, especially for complex
terrain areas, our study extends the original single-directional structure function to
multi-directional, and introduces an “optimal number” into our procedure to improve
the accuracy of aerosol depth estimation. The comparison between the estimated and
sunphotometer-observed aerosol depths shows that the accuracy is improved
significantly by our improvements.
Introduction
Basically, satellite remote sensed data are affected mainly by the scattering
effects of atmospheric molecular and aerosols in the visible band, Fraser et al., 1984.
Some atmospheric correction schemes have been proposed in applying to the satellite
visible band data, such as Landsat and SPOT images in the past studies(Griggs, 1975;
Mekler et al., 1977; Tanre et al.,1988; Rao et al., 1989; Holben B. N. et al., 1990 and
Liu et al., 1997). Some studies showed that the structure function method can be used
to estimate accurately the atmospheric aerosol depth, however obvious errors could be
induced in some cases by the bad structure function patterns. Further analysis
indicates that the abnormal patterns probably are caused by the change of satellite
observation geometry, the change or the complexity of landcover. Therefore, the aim
of this study is to try to provide a solution to reduce the probable errors in applying
the structure method and improve the accuracy of optical depth estimation.
Methodology
Assuming the surface observed by satellite sensor is Lambertian, the apparent
reflectance,
r*, observed by satellite is (Tanre et al., 1988)
where
ms=cos
qs,
qs is the solar zenith angle,
mv=cos
qv ,
qv is the observed zenith angle,
ra is the atmospheric reflectance,
f is the relative azimuth angle between the sun
and the satellite,
t is the optical depth,
r is the surface reflectance, T is the
transmittance from the sun to surface, s is the atmospheric albedo, <
r> is the mean
surface reflectance, and t
d is the diffused transmittance from surface to satellite.
The multi-scattering effect of the surface and atmosphere is small and can be
neglected. In other words, <
r>S=0. Assuming the <
r> values to be the same in
local area, the apparent reflectance difference between two neighboring pixels, (i,j)

(i,j+d), in distance d can be written as
D r*(i,j)=D r(i,j)T(ms)exp[-t/mv] (2)
where i, j are the row and column index of image, respectively. If we assume the
D r(i,j) value being constant in time, the
r*(i,j ) will be the function of
t, which
depends upon atmosphere condition. Tanre et al. (1988) has defined a structure
function parameter, M, as
where N is the total pixel number in the test area. In their original method, a single
direction difference is calculated in the structure function. However, in our study, we
consider a multi-directional(i, j and cross(c) directions shown in Fig.1) structure
function, which can be expressed as
and the structure function M * (d) derived by satellite observation can is written as
M*2(d)=M2(d)T2(ms)exp[-2t /mv] (5)
where M is the real surface structuren function.
Figure 1 The directions of i, j and c of the multi-directional structure function.
If assuming the landcover remaining unchanged from t1 to t2 observation time,
i.e. M
2 (d,t
1)=M
2 (d,t
2), the relationship of observed structure functions between t1
to t2 is,
Equation (6) shows that if one of the aerosol optical depths in t
1 or t
2 is known, the
other optical depth can be derived from satellite observation.
Analysis shows that the estimated optical depth could be different for different d
values. In the general cases, the mean value of optical depths from d=1 to d=10 is
used, but significant errors could be observed in some cases when the correlation is
low for different distances. So, the “optimal number” is adopted to remove the
abnormal structure function areas(Liu et al., 1997). The introduction of “optimal
number can remove the poor structure functions and improve the accuracy of the
optical depth estimation.