The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
513
Figure 13. Extraction Result of Single-shape road
Figure 14. Result of Crossing Road Figure 15. Result of Cruciform
Cross
Figure 16. Extraction Result of Elevate Urban Highway
From the results, we can get the conclusions that the method
proposed
1) There is a great accuracy (Figure 13)in extracting road with
single shape(Figure 5). Edge line and the centrelines of the road
can be showed exactly.
2) To the roads whose surface has many branches (Figure 6),
the extraction result is not very good (Figure 14). One branch
has not been extracted accurately. The reason for it is that in the
same area, different branches have different grey value, which
will be unable to extract all of the branches totally.
3) Cruciform cross (Figure 7) is one of the most popular kinds
of road, which consists of two simple crossing lines. Although
the extracting result is not better than 1), cruciform cross has
been marked obviously. (Figure 15).
4) To the elevate urban highways (Figure 8), this proposed
approach has great advantage in extracting work. Although the
shape of them is complex, its edge has also been detected,
especially the overlapping part(Figure 16).
5. CONCLUDING REMARKS
The results of research indicate that, the method mentioned in
this paper has a good effect on the extraction work of the road
information in modem cities, especially on the elevate
highways that are obvious in modem cities. The appearances of
elevate highways now are getting more and more complex, the
centre section of this which is composed of many surrounding
roads overlapping each other whose curvature are larger than
general ones. Considering the aspect of the uniformity of grey
value on road, we group the edge points of road again in the
same supported region, which can realize the elevate highways
exactly. With the rapid development of city and the complex of
the road, traditional methods for extraction haven’t satisfied for
all the demands of the urban development, so an improved one
in this paper has been proposed in view of the existed problems.
But some roads can’t be extracted correctly for the deficiency
of the image quality and algorithm. Moreover, a few distances
from the original roads appeared in some road crossings, which
should be do more researches on it.
ACKNOWLEDGMENTS
This work was financially supported by: National 863 High-
tech Project “ Complicated Features’ Extraction and Analysis
from Central Districts in Metropolis” PRC (2007AA12Z178).
And the paper is also substantially supported by Chang Jiang
Scholars Program, Ministry of Education, People's Republic of
China. The author would like to thank ChangJiang Scholars
Professor Li RongXing for his help.
REFERENCES
Chen Y., 2003 Digital Photogrammetry Surveying of Remote
Sensing Image, Tongji University Press, China, pp. 100-129
Gruen A., Li H. Road Extraction from Aerial and Satellite
Images by Dynamic Programming[J], ISPRS Journal of
Photogrammetry and Remote Sensing, 1995, 50(4), pp.11-20
Li Y.X., Li H.Y., A Semi-automated Approach to Road
Extraction From High-resolution Satellite Imagery[J],Journal of
Xiangnan University Oct., 2004 Vol.25 No.5, P75-P76. (in
Chinese with English abstract)
Rafael C. Gonzalez , Richard E. Woods Digital Image
Processing (Version II) ,2004, Electronics Industry Press,
China, 2004.6, pp.463-474
Rao H., Zhang H., Cai Z.Y.. Recognition of Welding Line
based on Phase Classification[J]. Modem Electronic Technique,
2004, 27(16), pp 66-69
Shi W.Z., Zhu C.Q., Wang Y. The Rreview and Prospect of
Extraction Road Features from Remote Sensing ImagesfJ], Acta
Geodatica et Cartograghica Sinica, 2001, 30(3), pp.257-261.(in
Chinese with English abstract)
Song F.L., Liu R. Road Extraction from Remotely Sensed
Image : Review and Prospects [J], Water Conservancy Science
and Technology and Economy Vol. 11 No. 10 Oct.2005,
pp.636-638. (in Chinese with English abstract)
Trinder J.C., Wang Y.D., Sowmya A., et al. Artificial
Intelligence in 3D Feature Extraction[A], Automatic Extraction