DocumentCode
1549370
Title
Unsupervised classification of multifrequency and fully polarimetric SAR images based on the H/A/Alpha-Wishart classifier
Author
Ferro-Famil, Laurent ; Pottier, Eric ; Lee, Jong-Sen
Author_Institution
Lab. Antennes Radar et Telecommun., Rennes I Univ., France
Volume
39
Issue
11
fYear
2001
fDate
11/1/2001 12:00:00 AM
Firstpage
2332
Lastpage
2342
Abstract
Introduces a new classification scheme for dual frequency polarimetric SAR data sets. A (6×6) polarimetric coherency matrix is defined to simultaneously take into account the full polarimetric information from both images. This matrix is composed of the two coherency matrices and their cross-correlation. A decomposition theorem is applied to both images to obtain 64 initial clusters based on their scattering characteristics. The data sets are then classified by an iterative algorithm based on a complex Wishart density function of the 6×6 matrix. A class number reduction technique is then applied on the 64 resulting clusters to improve the efficiency of the interpretation and representation of each class. An alternative technique is also proposed which introduces the polarimetric cross-correlation information to refine the results of classification to a small number of clusters using the conditional probability of the cross-correlation matrix. These classification schemes are applied to full polarimetric P, L, and C-band SAR images of the Nezer Forest, France, acquired by the NASA/JPL AIRSAR sensor in 1989
Keywords
image classification; radar polarimetry; synthetic aperture radar; terrain mapping; AIRSAR sensor; C-band SAR images; France; H/A/Alpha-Wishart classifier; L-band SAR; Nezer Forest; P-band SAR images; classification scheme; coherency matrices; complex Wishart density function; conditional probability; cross-correlation matrix; decomposition theorem; dual frequency polarimetric SAR data sets; multifrequency SAR images; multivariate statistics; polarimetric SAR images; polarimetric coherency matrix; polarimetric cross-correlation information; radar polarimetry; scattering characteristics; synthetic aperture radar; terrain classification; unsupervised classification; Density functional theory; Frequency; Image sensors; Iterative algorithms; Matrix decomposition; NASA; Probability; Radar scattering; Remote sensing; Statistics;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/36.964969
Filename
964969
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