Title :
Unsupervised learning rules for POLSAR images analysis
Author :
Chitroub, S. ; Houacine, A. ; Sansal, B.
Author_Institution :
Signal Process. Lab., USTHB, Algiers, Algeria
Abstract :
It has been shown (see Chitroub, S. et al., Signal Processing, vol.82, no.1, p.69-92, 2002) that the model for POLSAR (polarimetric synthetic aperture radar) images is a mixture model that results from the product of two distributions, one characterizes the target response and the other characterizes the speckle phenomenon. For scene interpretation purpose, it is desirable to separate between the target response and the speckle information. We propose here to use some unsupervised learning rules for POLSAR images analysis via a PCA-ICA neural network model. Based on its rigorous statistical formulation (see Chitroub et al., Intelligent Data Analysis International Journal, vol.6, no.2, 2002), a neuronal PCA approach for the simultaneous diagonalization of the signal and noise covariance matrices is proposed. The goal is to provide PC images that are uncorrelated and have an improved SNR. Speckle is a non-Gaussian multiplicative noise, and the higher order statistics contain additional information about it. ICA is used to separate the speckle from the PC images and providing new IC images that have an improved contrast. The method has been applied on real POLSAR images. The extracted features are quite effective for scene interpretation.
Keywords :
covariance matrices; feature extraction; geophysical signal processing; higher order statistics; independent component analysis; neural nets; principal component analysis; radar imaging; radar polarimetry; random noise; remote sensing by radar; speckle; synthetic aperture radar; unsupervised learning; ICA; PCA; POLSAR image analysis; SNR; covariance matrices; feature extraction; geophysical applications; higher order statistics; multiplicative noise; neural network; nonGaussian noise; polarimetric SAR; polarimetric synthetic aperture radar; radar imaging; scene interpretation; speckle information; target response; unsupervised learning rules; Data analysis; Image analysis; Integrated circuit noise; Layout; Neural networks; Polarimetric synthetic aperture radar; Principal component analysis; Radar signal processing; Speckle; Unsupervised learning;
Conference_Titel :
Neural Networks for Signal Processing, 2002. Proceedings of the 2002 12th IEEE Workshop on
Print_ISBN :
0-7803-7616-1
DOI :
10.1109/NNSP.2002.1030068