John Bosco Kyalo Kiema
20 —- n :
3 x
- 18 » > UP cs
x N Aa,
= N ro
2 18 d
14
12
10
5 18 15 20 3G 50 70 100
Compression Rate
Figure 6: Relationship between PSNR and compression rate
5 SUMMARY AND CONCLUSIONS
This study underlines the importance of multi-sensor data fusion in the classification of urban environments. In
particular, the need to integrate multispectral and geometric datasets is underscored. The need to incorporate context
information in image segmentation is also highlighted. This is achieved by expanding the object feature base in order to
exploit both spectral and spatial feature characteristics. Through this, higher classificatiori accuracy and better semantic
differentiation between the various object features can be achieved.
Data compression is conventionally employed in remote sensing within the context of data transmission and storage.
However, the examination of the influence of this on the quality and further processing of satellite sensor imagery
represents an important research and development topic. This is basically because of the existing dilemma between the
huge amount of data often captured by remote sensing sensors and the technical restrictions in using this. Compression
rates greater than 10 have been proposed for the next generation of commercial sensors in view of their higher spatial
resolution and larger swath widths (Fritz, 1997). In this regard, lossy compression schemes provide the only viable
solution. The superiority of wavelet-based methods over the standard JPEG technique in the compression of remotely
sensed data has been demonstrated (Shiewe, 1998). Nonetheless, the smoothing effect of wavelet compression,
especially at higher compression rates (K 2 50) is undesirable.
The compression rate beyond which the smoothing effect becomes evident represents the critical compression rate that
defines the range within which the compressed imagery can be used in further processing e.g., classification. It is clear
from the results obtained in this study that a compression rate of up to 20 can be adopted for the classification of urban
environments using Daedalus ATM imagery fused with airborne laser scanning data without adversely affecting the
classification results. Further studies on this are still required to determine: (1) whether the cut-off value is influenced
by the spatial resolution of the imagery, and (2) whether this depends on the scale at which the actual variation exists or
on that which the user is interested in.
ACKNOWLEDGMENTS
The author wishes to acknowledge the support of Prof. Dr.-Ing H.-P. Bihr and the Deutsche Akademischer
Austauschdienst (DAAD) in the preparation of this paper.
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Báhr, H.-P., and Vógtle, T., 1999. GIS for Environmental Monitoring. E. Schweizerbart'sche Verlagsbuchhandlung,
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Chui, C. K., 1996. Introduction to Wavelets, Academic Press, San Diego.
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