Yamaguchi 3 components decomposition

Description

There is currently a great deal of interest in the use of polarimetry for radar remote sensing. In this context, an important objective is to extract physical information from the observed scattering of microwaves by surface and volume structures. The most important observable measured by such radar systems is the 3x3 coherency matrix [T3]. This matrix accounts for local variations in the scattering matrix and is the lowest order operator suitable to extract polarimetric parameters for distributed scatterers in the presence of additive (system) and/or multiplicative (speckle) noise.

Many targets of interest in radar remote sensing require a multivariate statistical description due to the combination of coherent speckle noise and random vector scattering effects from surface and volume. For such targets, it is of interest to generate the concept of an average or dominant scattering mechanism for the purposes of classification or inversion of scattering data. This averaging process leads to the concept of the « distributed target » which has its own structure, in opposition to the stationary target or « pure single target ».

Target Decomposition theorems are aimed at providing such an interpretation based on sensible physical constraints such as the average target being invariant to changes in wave polarization basis.

Target Decomposition theorems were first formalized by J.R. Huynen but have their roots in the work of Chandrasekhar on light scattering by small anisotropic particles. Since this original work, there have been many other proposed decompositions. We classify four main types of theorem:

1.     Those employing coherent decomposition of the scattering matrix (Krogager, Cameron).

2.     Those based on the dichotomy of the Kennaugh matrix (Huynen, Barnes).

3.     Those based on a “model-based” decomposition of the covariance or the coherency matrix (Freeman and Durden, Dong).

4.     Those using an eigenvector / eigenvalues analysis of the covariance or coherency matrix (Cloude, VanZyl, Cloude and Pottier).

 

The Yamaguchi 3 components decomposition is directly based on the Freeman-Durden 3 components decomposition which models the scattering power in three distinct components and which can be successfully applied to decompose SAR observations under the reflection symmetry condition.

The main contribution concerns the modification of the volume scattering matrix in the decomposition according to the relative backscattering magnitudes of  versus . In the theoretical modeling of volume scattering, a cloud of randomly oriented dipoles is implemented with a probability function being uniform for the orientation angles. However, for vegetated areas where vertical structure seems to be rather dominant, the scattering from tree trunks and branches displays a non-uniform angle distribution. The proposed new probability distribution is given by

where θ is taken from the horizontal axis seen from the radar.

It follow that in the case of:

      a cloud of randomly oriented, very thin horizontal () cylinder-like scatterers, the volume scattering averaged covariance matrix  is thus given by

      a cloud of randomly oriented, very thin vertical () cylinder-like scatterers, the volume scattering averaged covariance matrix  is thus given by

 

In both case, fV corresponds to the contribution of the volume scattering component.

 

The asymmetric form of the two volume scattering averaged covariance matrices  seems to be of considerable use because it can be adjusted to the measured data according to the ratio .

Depending on the scene, the Yamaguchi 3 components decomposition proposes to select the appropriate volume scattering averaged covariance matrices  by choosing one of the asymmetric forms if the relative magnitude difference is larger than 2dB, or the symmetric form if the difference is within ±2dB.

As a result, this choice allows making a straightforward best fit to measured data.

 

 

Assuming that the volume, double-bounce, surface and helix scatter components are uncorrelated, the total second-order statistics are the sum of the above statistics for the individual mechanisms. Thus, the model for the total backscatter is:

 

This model gives four equations in five unknowns . The parameters a, b, c and d are fixed according to the chosen volume scattering averaged covariance matrix .

The contribution of each scattering mechanism can be estimated to the span, following  with:

The term fv corresponds to the contribution of the volume scattering of the final covariance matrix .

The power scattered by the double-bounce component of the final covariance matrix  has the expression  and the power scattered by the surface-like component is

 

References

Books:

      Jong-Sen LEE – Eric POTTIER, Polarimetric Radar Imaging: From basics to applications, CRC Press; 1st ed., February 2009, pp 422, ISBN: 978-1420054972

      Shane R. CLOUDE, Polarisation: Applications in Remote Sensing, Oxford University Press, October 2009, pp 352, ISBN: 978-0199569731

      Charles ELACHI – Jakob J. VAN ZYL, Introduction To The Physics and Techniques of Remote Sensing, Wiley-Interscience; 2nd edition (July 31, 2007), ISBN-10 0-471-47569-6, ISBN-13 978-0471475699

      Harold MOTT, Remote Sensing with Polarimetric Radar, Wiley-IEEE Press; 1st edition (January 2, 2007), ISBN-10 0-470-07476-0, ISBN-13 978-0470074763

      Jakob J. VAN ZYL – Yunjin KIM, Synthetic Aperture Radar Polarimetry, Wiley; 1st edition (October 14, 2011), ISBN-10 1-118-11511-2, ISBN-13 978-1118115114

      Yoshio Yamaguchi, Polarimetric SAR Imaging : Theory and Applications, CRC Press; 1st ed., August 2020, pp 350, ISBN: 978-1003049753

      Irena HAJNSEK – Yves-Louis DESNOS (editors), Polarimetric Synthetic Aperture Radar : Principles and applications, Springer; 1st edition (Marsh 30, 2021), ISBN 978-3-030-56502-2

 

Journals:

 

      Freeman A. and Durden S., “A three-component scattering model to describe polarimetric SAR data,” in Proc. SPIE Conf. Radar Polarimetry, vol. SPIE-1748, pp. 213-225, San Diego, CA, July 1992.

      Freeman A. and Durden S., “A Three-Component Scattering Model for Polarimetric SAR Data”, IEEE Trans. Geosci. Remote Sens., vol. 36, no. 3, May 1998.

      Krogager E. and Freeman A., “Three component break-downs of scattering matrices for radar target identification and classification”, in Proc. PIERS '94, Noordwijk, The Netherlands, July 1994.

      Yamaguchi Y., Moriyama T., Ishido M. and Yamada H., “Four-Component Scattering Model for Polarimetric SAR Image Decomposition”, IEEE Trans. Geos. Remote Sens., vol. 43, no. 8, August 2005.

      Yamaguchi Y., Yajima Y. and Yamada H., “A Four-Component Decomposition of POLSAR Images Based on the Coherency Matrix”, IEEE Geos. Rem. Sens. Letters, vol. 3, no. 3, July 2006.