Abstract
Recently, a general polarimetric model-based decomposition framework was proposed by Chen et al., which addresses several well-known limitations in previous decomposition methods and implements a simultaneous full-parameter inversion by using complete polarimetric information. However, it only employs four typical models to characterize the volume scattering component, which limits the parameter inversion performance. To overcome this issue, this paper presents two general polarimetric model-based decomposition methods by incorporating the generalized volume scattering model (GVSM) or simplified adaptive volume scattering model, (SAVSM) proposed by Antropov et al. and Huang et al., respectively, into the general decomposition framework proposed by Chen et al. By doing so, the final volume coherency matrix structure is selected from a wide range of volume scattering models within a continuous interval according to the data itself without adding unknowns. Moreover, the new approaches rely on one nonlinear optimization stage instead of four as in the previous method proposed by Chen et al. In addition, the parameter inversion procedure adopts the modified algorithm proposed by Xie et al. which leads to higher accuracy and more physically reliable output parameters. A number of Monte Carlo simulations of polarimetric synthetic aperture radar (PolSAR) data are carried out and show that the proposed method with GVSM yields an overall improvement in the final accuracy of estimated parameters and outperforms both the version using SAVSM and the original approach. In addition, C-band Radarsat-2 and L-band AIRSAR fully polarimetric images over the San Francisco region are also used for testing purposes. A detailed comparison and analysis of decomposition results over different land-cover types are conducted. According to this study, the use of general decomposition models leads to a more accurate quantitative retrieval of target parameters. However, there exists a trade-off between parameter accuracy and model complexity which constrains the physical validity of solutions and must be further investigated.
Highlights
Understanding of polarimetric scattering mechanisms is the bridge between the polarimetric synthetic aperture radar (PolSAR) measurements and both qualitative and quantitative retrieval of parameters describing physical processes on land cover [1]
This paper proposes the incorporation of both generalized volume scattering models proposed by Antropov et al [25] and Huang et al [26,27], named the generalized volume scattering model (GVSM) and simplified adaptive volume scattering model (SAVSM) respectively, into Chen’s decomposition framework
We briefly review the general decomposition framework proposed by Chen et al [22], and the modified parameter inversion algorithm we proposed in [23,24]
Summary
Understanding of polarimetric scattering mechanisms is the bridge between the polarimetric synthetic aperture radar (PolSAR) measurements and both qualitative and quantitative retrieval of parameters describing physical processes on land cover [1]. Polarimetric target decomposition techniques are designed to this aim. They can be devised to represent measured data either in terms of some polarimetric signature parameters (e.g. scattering entropy and mean scattering angle) or in a combination of some simple scattering mechanisms which describe first order scattering interactions [2]. Polarimetric target decompositions are grouped into two main categories, i.e., Sinclair matrix-based coherent approaches and coherency/covariance matrix-based incoherent ones [2]. The decomposition results have been used for a number of applications, such as target detection [3,4,5], land cover classification [6,7,8,9,10,11,12,13], and geophysical parameter inversion [14,15,16]
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