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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
(A ADGAD S C TABI ; )
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Figure 1. Disparate high-resolution sensor data and GIS data
automatic fusion for change-detection analysis.
To refine the change-detection to fine level (subtle) other
parameters such as NDVI obtained from hyperspectral images,
Road data for moving objects location extraction and building
data information were also used. After obtaining the final
change-detection image a GIS analysis of attribute data was
carried out. Later a pixel-by-pixel matching was carried out
with TABI, and hyper-spectral images to know the
landuse/landcover features.
5. RESULTS
5.1 Change-Detection by DSM Analysis
Since DSM data plays a vital role in detecting subtle changes in
landuse/landcover features, the obtained DSM data were
matched for change detection purpose. DSM from stereo
matching of ADS40 images of two dates was used at present. A
broad change-detection image was generated first. By using
DSM data obtained by pixel-pixel matching we tried to extract
subtle changes in landcover for various applications such as
automatic mapping and house taxing purpose.
For the purpose of DSM extraction six stereo pairs of ADS 40
images were used and DSM at 50 cm was obtained (figure 2. a,
b) for two dates. Then by simple pixel difference estimation,
changed areas were extracted (figure 2. c). The cyan colour
shows areas where there is increase in elevation (structures
demolished or no vegetation) and orange colour areas
correspond to new structures or land cover features.
Information, which can be read in change-difference, are the
existence of the leaf, new-buildings, a removed building, and
plant, a growth situation (after /before 2003 shedding leaves
/2002 shedding leaves) and a moving objects.
a). Year: 2002
903
b). Year: 2003
C). Detested changes
Cyan: Change but no features; Orange: New construction
Figure 2. DSM obtained from pixel matching
5.2 Thermal and Hyperspectral Fusion
Figure 3 shows AISA and TABI data fused image. The AISA
captured 66 ranges of bands and the PCA was fused with TABI
thermal pixels. The temperature ranges from 33 deg. Cel (in
orange) to 43 deg. C. (in Red). It can be observed from figure 3
that the vegetated and cooler areas have lesser thermal values
than the residential and industrial rooftops.
The AISA sensor hyperspectral data was used to estimate the
NDVI values (figure 4). Because of its dimensionality,
hyperspectral data potentially provides the capability to
discriminate between nearly any set of classes.
Figure 3. Hyperspectral (PCA) and thermal data fusion result.
Man -made structures show higher temperature values.