individual land use classes using the three child images and
parent spectral image IRS 1C LISS III were. presented in
Table 2.
IAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India,2002
Thematic Accuracy of Classification Results (%)
LISS I | poco | substituted | fused
1 | Sugarcane 80.00 | 95.00 86.67 83.33
2 | Banana 66.67 | 78.79 75.76 72.13
3 | Plantation crops 64.29 | 71.43 67.86 71.43
4 | Other Crops 72.31 80.00 83.85 50.00
5 | Fallow Land 1 91.46 | 92.68 87.80 86.59
6 | Stony Waste 61.54 73.08 57.69 53.85
7 pue a a | 7-48 | 7143 | 5714 | 4444
Overall Accuracy 78.40 84.24 80.78 68.43
Kappa statistic 0.75 0.81 0.76 0.56
Table 2 .The Thematic accuracy of natural land cover classification
results
Builtup
Banana
Coconut
Stonv
i ans
Road
LISIII data of study area Land use map prepared from LISSIII
Fig.1. LISS III image of the study area and corresponding land
use map
A comparison of the accuracy estimates for LISS III and PAN
merged LISS III (IHS) derived land use map reveals overall
accuracy figures of 78.40 per cent and 84.24 per cent,
respectively. The overall accuracy was 5.80 per cent greater
than the parent spectral image. À significant enhanced accuracy
of IHS fused image over the LISS III image was obtained for
the land use classes, sugarcane, banana, fallowland and stony
wasteland.
p
Other
Fallow
Coconut
Stonv
Tank
Road
PAN + LISIII (IHS) data Land use map
sugarcane
Fig.l. PAN + LISIII (IHS) image of the study area and
corresponding land use map
Merging LISS III digital data with the PAN data has resulted
in a increase in overall classification accuracy was observed
when the intensity, hue and saturation (IHS) transformation
was applied to the LISS III data followed by replacing the
Intensity (I) component by the PAN data, restoring
subsequently to RGB components, and linearly stretching the
resultant digital data. Because only one of the three
components of the IHS transforms of the LISS III data were
replaced by the PAN data while keeping the other two
components — hue and saturation — undisturbed. The spectral
information of the LISS III data could be better utilized. Kappa
coefficient values also manifest a similar trend.
A band substitution visually had a greater spatial resolutions
but poor in spectral details. Owing probably to the poor
spectral definition of land use/land cover in the latter sensor
data resulting from replacement of the red ( 0.62 to 0.68um)
bands of LISS III data by the PAN (0.55 to 0.75 um). The
overall accuracy of band substituted image was 80.78 per cent.
The band substitution visually had a greater spatial resolutions
but poor in spectral details. In spite of the reduced spectral
details the band substituted fused image showed a slight
improvement in overall accuracy (1.80 %) from that of the
parent spectral image. The Kappa statistic obtained was 0.76
indicating that the classification was 76 per cent better than
resulting from chance.
However, the PCA fused image showed a larger degree of
distorted spectral characteristics. The overall accuracy was very
low when compared to other two fusion methods employed in
the present study. PCA method exhibited 10 per cent
degradation in overall accuracy from the parent spectral image,
16.84 per cent from the IHS fused image and 12.35 per cent
legradation from the band substituted fused image. But certain
provements of accuracy in the PCA-fused image over the
parent spectral image in some classes such as sugarcane (3.33
%), banana (6.06%) and plantation crops (7.14%) were
achieved. However, the accuracy of the remaining classes
decreased. The Kappa statistic was 0.56.
CONCLUSION
Land cover classification works with the spectral information of
an image. Among the three selected fusion approaches, IHS
fusion approach produced high overall accuracy results than the
parent image. Overall accuracy figures achieved from the
various sensors data LISSIII, LISSIII and PAN merged (IHS),
band substituted image, PCA fused image are 78.40 per cent,
84.24per cent, 80.78 per cent and 68.43 per cent, respectively.
The wealth of information that could be derived from space
borne multispectral data will be further enhanced with the
availability of higher spatial resolution data from the recently
launched IKONOS - II and future earth observation missions
such as Cartostat-1, IRS-P6 (Resourcesat), Cartosat-2,
Quickbird etc.
REFERENCES
Benediktsson, J.A., and P.H. Swain, 1989. A method of
statistical multisource classification with a mechanism to
weight the influence of the data sources. Proceedings of IEEE
symposium on Geosciencees and Remote Sensing (IGARSS),
July, Vancouver, Canada, pp.517-520.
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