International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
> Post-earthquake
Spot imagery
Topographic
3 maps :
Spot imagery :
Geometric correction
p; Relative radiometric A
| Exclusion areas n]
I. Band substitution 51
| res to IHS transformation |
b Image differencing "
v
|. Integration with vector ans J@— [Vector data ]
| Comparison x ground rn poamage
*il
EE
Figure 2. Damage assessment using Spot imagery
Vector data
Visual interpretation
Training data
Threshold decision
E Video imagery |
li Frame grabbing 2
| Image enhancement |
| Colour and edge feature
| Texture feature layers |
i34
€ Ec
Ir Multi level slicing |
|. Actual damage id
p: Comparison with actual damage 4
Figure 3. Damage assessment using video imagery
change detection to avoid spurious results (Jensen, 1996),
relative radiometric correction was applied to normalize pixel
values of the multitemporal data sets. Vegetation areas and
water bodies were excluded from the analysis. Band
substitution, which does not change radiometric qualities of any
of the data (Jensen, 1996), was applied to merge Spot data set.
The panchromatic band was substituted directly for Band 2.
Intensity values of the merged data set were used for the change
detection. Image differencing (Singh, 1989), which is one of the
simple change detection algorithms, was applied in the
methodology. To assess the damaged areas at the regional and
local level, the result was thresholded and aggregated into
parcel level.
The analysis of video imagery was carried out in two steps: (1)
visual interpretation and (ii) digital image processing. Visual
interpretation was carried out at the parcel level. In digital
image processing, frame grabbing was the first step to convert
analogue video frames to digital ones. Astrostack software was
used to improve the quality of the frames
(http://www.innostack.com). Colour indices (hue), edge feature
layers (edge) and local variance (saturation variance and edge
variance), which is one of the texture parameters, were used to
detect damaged areas. Threshold values derived from training
data set of damaged areas were used for multi level
thresholding of feature layers. At the end of the analysis, the
result was compared with the actual damage information
observed in the video imagery. The overall process of aerial
video imagery analysis for damage assessment was shown in
Figure 3.
3. DATA ANALYSIS
3.1 Analysis of User Information Requirements
According to the results of the analysis, information
requirements differ depending on government hierarchy and
activities of the agencies. Although at the national level, there is
a need for overall information about the damage, at the local
level detailed information becomes most important for the user.
Moreover, each organization requires different types of
information in terms of scale, detail and characteristic based on
their activities. For search and rescue operations, only
information on collapsed buildings, as well as their inhabitants
and use are required. On the other hand, for emergency aid
activities, the number of people who survived the disaster is
important, as they need to know food, accommodation and
medication requirements. Rapid data gathering following the
disaster is required, as after 72 hour, the chance for exposed
and/or injured people to survive approaches zero.
The analysis has shown that remotely sensed data without
integration with baseline data are not enough by themselves to
fulfil the information requirements of the user. Baseline data
showing the pre-disaster situation, such as population, road
network, land use, ownership information, are critical for an
optimal use of the potential of remotely sensed data. Moreover,
for an effective use and flow of information derived from
remote sensing technology, there is a need for organizational
improvements. In the time of emergency, the main challenge is
dissemination of different types of information, which requires
an information network between emergency agencies, as
information is only valuable if it reaches to the right
organization at the right time.
3.2 Analysis of Spot Imagery
The results of the Spot imagery analysis were evaluated at
regional and local levels (Figure 4). At the regional level,
damage assessment using Spot imagery showed both significant
overestimation and underestimation of damaged areas. Due to
smoke coming from fire at the Tupras Oil Refinery, there was
underestimation in the western part of the area. Overestimation
in the northern part of the image shows the need for
orthorectification for hilly areas. Moreover, differences in the
incidence angle, the pixel-by-pixel registration requirement,
which can cause spurious changes in the change detection
analysis (Jensen, 1996), clouds and shadows were other
obstacles for change detection. Differentiating between
damaged areas and change values due to external factors is a
688
In
ch
th
as
da
Hk
art
Acc
evel
(tot:
bu il
Figu
nort
ovel
In c
exte
info
abot
Des]
over
area: