Paper
8 May 2012 Features for landcover classification of fully polarimetric SAR data
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Abstract
We have previously shown that Stokes eigenvectors can be numerically extracted from the Kennaugh(Stokes) matrices of both single-look and multilook fully polarimetric SIR-C data. The extracted orientation and ellipticity parameters of the Stokes eigenvector were found to be related to the Huynen orientation and helicity parameters for single-look fully polarimetric SIR-C data. We formally show in this paper that these two parameters, which diagonalize the Sinclair matrices of the single-look data, belong to a set of parameters which diagonalize the Kennaugh matrices of single-look data. Along with the cross sections kSvvk2, kShvk2, kShhk2 and the Span, the eigenvalues of the Kennaugh matrix and the covariance matrix are used as input features in the development of a neural net landcover classifier for SIR-C data.
© (2012) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jorge V. Geaga "Features for landcover classification of fully polarimetric SAR data", Proc. SPIE 8361, Radar Sensor Technology XVI, 836108 (8 May 2012); https://doi.org/10.1117/12.917226
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KEYWORDS
Polarimetry

Matrices

Scattering

Neural networks

Synthetic aperture radar

Vegetation

Optical spheres

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