Title :
Lossless and Sufficient
-Invariant Decomposition of Random Reciprocal Target
Author :
Paladini, Riccardo ; Famil, L. Ferro ; Pottier, Eric ; Martorella, Marco ; Berizzi, Fabrizio ; Mese, Enzo Dalle
Author_Institution :
Dept. of Inf. Eng., Pisa Univ., Pisa, Italy
Abstract :
The target coherency or covariance matrices are the main operators useful for characterizing the polarization transformation properties of radar target by modeling the depolarization effect. In this paper, a novel decomposition of the target coherency matrix is proposed, that is sufficient for representing the physical characteristics of the observed medium in term of a minimum set of orientation invariant parameters. The Einstein´s photon circular polarization basis is used for obtaining an orientation invariant physical interpretation of the proposed parameter set both for deterministic and random target. A generalized unsupervised classification scheme is also proposed for underlining the effectiveness of the proposed decomposition theorem for classifying random reciprocal target into 75 physically meaningful clusters. The application of the proposed decomposition theorem and classification algorithm is useful for developing of novel Remote Sensing products and Data Mining softwares for monitoring the surfaces of the Earth and the Moon.
Keywords :
covariance matrices; data mining; geophysical techniques; geophysics computing; lunar surface; radar polarimetry; random processes; remote sensing by radar; Earth surface; Einstein photon circular polarization; Moon surface; classification algorithm; covariance matrices; data mining softwares; decomposition theorem; depolarization effect; generalized unsupervised classification scheme; medium physical characteristics; orientation invariant parameters; polarization transformation properties; psi-invariant decomposition; random reciprocal target; remote sensing; target coherency matrix; Covariance matrix; Eigenvalues and eigenfunctions; Matrix decomposition; Polarization; Radar; Vectors; Automatic target classification; automatic target recognition; polarimetry; radar cross section (RCS); synthetic aperture radar; target decomposition; target scattering;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2011.2181397