Title :
Algebraic Synthesis of Forest Scenarios From Multibaseline PolInSAR Data
Author :
Tebaldini, Stefano
Author_Institution :
Dipt. di Elettron. e Inf., Politec. di Milano, Milan, Italy
Abstract :
In this paper, a new methodology is proposed for the analysis of forested areas basing on multipolarimetric multibaseline synthetic aperture radar (SAR) surveys. Such a methodology is based on three hypotheses: 1) statistical uncorrelation of the different scattering mechanisms (SMs), such as ground, volume, and ground-trunk scattering; 2) independence of volumetric and temporal coherence losses of each SM on the choice of the polarimetric channel; and 3) invariance (up to a scale factor) of the average polarimetric signature of each SM with respect to the choice of the track. Under these hypotheses, the data covariance matrix can be expressed as a Sum of Kronecker Products, after which it follows that K SMs are uniquely identified by K (K - 1) real numbers. This result provides the basis to perform SM separation by employing not only model-based approaches, generally retained in literature but also model-free and hybrid approaches, while yielding the best Least Square solution given the hypothesis of K SMs. It will be shown that this approach to SM separation is consistent with the inversion procedures usually exploited in single-baseline polarimetric SAR interferometry. Experimental validation of this methodology is provided on the basis of the P-band data set relative to the forest site of Remningstorp, Sweden, acquired by German Aerospace Center´s E-SAR airborne system in the framework of the European Space Agency campaign BioSAR.
Keywords :
algebra; geophysical techniques; radar polarimetry; remote sensing by radar; synthetic aperture radar; vegetation; BioSAR; E-SAR airborne system; Kronecker products sum; P-band data set; Remningstorp; SAR surveys; Sweden; algebraic synthesis; forest scenarios; forested areas; least square solution; multibaseline PolInSAR data; multipolarimetric multibaseline synthetic aperture radar; single-baseline polarimetric SAR interferometry; statistical uncorrelation; temporal coherence losses; volumetric coherence losses; Matrix decomposition; polarimetry; synthetic aperture radar (SAR); tomography;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2009.2023785