DocumentCode :
3784982
Title :
Linear features extraction in rain forest context from interferometric SAR images by fusion of coherence and amplitude information
Author :
V. -de -P. Onana;E. Trouve;G. Mauris;J.-P. Rudant;E. Tonye
Author_Institution :
Lab. d´Informatique, Syst., Traitement de l´Inf. et de la Connaissance, Univ. de Savoie, Annecy, France
Volume :
41
Issue :
11
fYear :
2003
Firstpage :
2540
Lastpage :
2556
Abstract :
This paper presents an almost unsupervised fusion algorithm on linear features (LF) extraction in synthetic aperture radar (SAR) interferometric data, in particular for mangroves/shorelines and thin internal channels. The spatial information on LFs is first extracted in the coherence image, where they are wider and more visible: water regions (in particular thin internal channels) are dark areas (low coherence) due to the temporal decorrelation of backscattering signals in these and surrounding regions, whereas conventional vegetation regions are brighter areas (high coherence). These approximate locations of LFs are further refined by using the edge map coming from a semantic fuzzy fusion of the coefficient of variation (CV) and the ratio of local means (RLM) measured in the amplitude image. The final detection of LFs is then performed by merging the two fuzzy inputs: the spatial information and the edge location map. The membership degree statistics of CV and RLM semantic fusion measures are introduced in order to illustrate the location detection ability. The originality of this method in comparison with conventional approaches is in the fusion scheme that follows the interpreter behavior by using first the coherence image for a fuzzy detection where thin LFs are more visible, but have low location accuracy, and then the amplitude image where they are poorly visible, but with higher location accuracy, to obtain improved results. A quantitative performance evaluation is also presented. The method has been applied on real interferometric SAR images from European Remote Sensing satellites over the western part of Cameroon.
Keywords :
"Feature extraction","Rain","Image edge detection","Data mining","Synthetic aperture radar","Decorrelation","Backscatter","Vegetation mapping","Merging","Statistics"
Journal_Title :
IEEE Transactions on Geoscience and Remote Sensing
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2003.818383
Filename :
1245241
Link To Document :
بازگشت