scene for keeping
If the urban extent
scene is assigned
cenes. The scenes
> included in the
| with cloud.
e combination by
mentally.
ION
oints of the subset
By the 30-km rule,
2214 COCs. The
rere determined by
reject apparently
contamination less
failure of SWIR
tamination, from I
1e beginning to 31
e 2214 COCs, the
cessfully assigned.
: with condition of
: search period. In
of the 263 COCs
ts of merging the
to be least-cloud
7s, the mosaic of
ganized; however,
vere incomplete to
contaminated with
ted ASTER/VNIR
manual procedure,
es were improved;
Figure 2. Examples of the results of automated selecting the ASTER/VNIR images. The background images are false color
composite of the merged ASTER/VNIR. The white lines represents the boundary of the crowd of cities. (a) Tokyo
(Japan), (b) Sao Paulo (Brazil), (c) Cape Town (South Africa), (d) Najaf (Iraq), (e) Yamoussoukro (Republic of Cote
d'Ivoire), (f) La Romana (Dominican Republic), (g) Koln (Germany), (h) Rockford (United States of America), (1)
Gagnoa (Republic of Cote d'Ivoire)
however, some of them were still contaminated with cloud and
haze.
In the selection of satellite images, cloud contamination was the
main obstacle to determine the best combination of the satellite
images. In this experiment, we used the database with rate of
cloud contamination assessed by scene; therefore we could not
reject cloud contamination partly occurred in the images. By
assessing cloud contamination for each pixel (e.g. Tonooka et al.
2010), good-quality pixels of images partly contaminated with
clouds would be combined with other good-quality pixels.
Pixel-based assessment also would yield availability of the
rejected images by less-than-20% criteria to be used for the
urban area mapping, indicating that the pixel-based assessment
would be necessary for completing the urban area map of the
cities of the world.
4. CONCLUSION
In this paper, we presented a method to construct coverage
catalogues of satellite images of urban areas of the world. We
proposed and implemented an automated algorithm to select the
best combination of satellite images covering a target COC. The
experimental results showed that there were considerable spaces
to be improved for complete coverage of urban area maps,
especially with assessing cloud contaminations. We found that
omitted cloud contaminations from the assessment were major
causes of inferior quality of the merged satellite images. We
regard that introducing pixel-by-pixel assessment of cloud
contamination is needed for better quality of the urban area
maps.
The method had still much space to be improved; however, we
regard that, with the improvement, it would be a great
contribution to completing high-resolution urban maps of the
world and realizing Global Earth Observation Systems of
System (GEOSS).
ACKNOWLEDGMENT
This research used ASTER Data beta processed by the AIST
GEO Grid from ASTER Data owned by the Ministry of
Economy, Trade and Industry of Japan. The study was
supported by a grant from Grant-in-Aid for JSPS Fellows (22-
2598).