Figure 7 The Superposition result
pwwfi w$m wm
From the above experiment we know that :1) if we can fully
understand and describe geometry characteristic and the
spectrum characteristic of the objects information, and select
appropriate structure element, , we can extract majority road
information that satisfies certain size and geometry by the
mathematics morphology method., especially as the road
geometry shape is complex changeable ,detail numerous and
diverse;2) the improvement method of region growth - seed
growth, which eliminates burr in the road median line and the
non- road shoreline and more effective improves extraction
precision;3)in actual production process, the people need extract
other objects in the remote sensing image , such as the rivers
network, the building, the inhabitant and so on, these objects all
have their own unique geometry and the spectrum characteristic.
Therefore, the road information extraction thought may expand
to other remote sensing image objects extraction.
At the same time , we also find that, because of the limited of
the mathematics morphology theory and the complex of road
information in the remote sensing, there also has its deficiency
in the experiment: 1) As the extraction objects and the noise has
the same geometry and spectrum characteristic, the
morphology method is no longer effective; 2) Different objects
processing needs different structure elements, However,
currently, structure element selection doesn’t unification theory
basis, in this paper the structural element selection has been in
the certain experience foundation, through experimental
analysis definite.;3) the extraction result through mathematics
morphology processing is decided by the image segmentation
result in the great degree therefore, if we use a more highly
effective segmentation method, we may unify it with the
existing some other methods, especially the context information,
or the texture information method ,we would increase the
precision.
This paper gives priority to mathematics morphology and gives
assistance to the seed growth method, compared with the
independent mathematics morphology or seed growth, the
extraction precision has been improved, this has a vital
significance for the research area such as the targets extraction,
the GIS data regarding, automobile navigation, urban planning,
and map digital and so on. Using many kinds of extraction
methods to unify, the multi-scale multi-temporal multi-spatial
resolution image fusion, extracting the high precise road
information will become the hot research spot in the future.
REFERENCES
[1] Jin X., Davis, C.H. 2004. An integrated system for
automatic road mapping from high-resolution mufti-spectral
satellite imagery by information fusion, Elsevier Science
Information Fusion, pp. 2
[2] Shi Wen-zhong,Zhu Chang-qing,WangYu. 2001.Road
Feature Extraction from Remotely Sensed Image: Review and
Prospects[J].Acta Geodaetica et Cartographica Sinica, 30(3),
pp.257-262.