Fundamentals of Remote Sensing SAR Polarimetry.pdf
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Fundamentals of Remote Sensing SAR Polarimetry.pdf
Mathematical representation through the Jones vector: J = E0xejδx. E0yejδy ..... [2] "Advanced Radar Polarimetry Tutorial", Canada Centre for Remote Sensing.
24/06/13
Fundamentals of Remote Sensing: SAR Polarimetry Gabriel VASILE, Chargé de Recherche, CNRS Nikola BESIC, Doctorant, Grenoble INP
GIPSA-lab Département Image Signal (DIS) Equipe SIGnal IMAge PHYsique (SIGMAPHY)
I Electromagnetic wave polarization (1/8) Electromagnetic wave: • electric field component e(r, t) • magnetic field component h(r, t)
characteristic impedance
e(r, t) = ξ ⋅ h(r, t) × k direction vector
$ j (2 π ft− 2 π z) ' λ e(x, y, z, t) = ex ⋅ x + ey ⋅ y = ℜ % E0 ⋅ e ( & ) 1
Fundamentals of Remote Sensing: SAR Polarimetry
1
24/06/13
I Electromagnetic wave polarization (2/8)
behavior of
e(r, t)
EM wave polarization ~ in the plane perpendicular to the propagation direction ~ behavior of ex and ey
2π z + δx ) λ 2π ey = E0 y cos(2π ft − z + δy ) λ ex = E0 x cos(2π ft −
e(z, t) ey (z, t)
ex (z, t) Phase difference between two components:
δ = δx − δy Fundamentals of Remote Sensing: SAR Polarimetry
2
I Electromagnetic wave polarization (3/8)
δ = 0 ∨δ = π E0 x = E0 y
LINEAR 3
π 2 E0 x = E0 y
the rest…
CIRCULAR
ELIPTICAL
δ =±
Fundamentals of Remote Sensing: SAR Polarimetry
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I Electromagnetic wave polarization (4/8) Fully polarized wave: Mathematical representation through the Jones vector:
! E0 x e jδx # J= # E e jδy " 0y
$ & & %
x axis – horizontal y axis – vertical
polarization
horizontal
vertical
circular (L)
circular (R)
Normalized Jones vector
! 1 $ # & " 0 %
! 0 $ # & " 1 %
1 ! 1 $ # & 2" i %
1 " 1 % $ ' 2 # −i &
Fundamentals of Remote Sensing: SAR Polarimetry
4
I Electromagnetic wave polarization (5/8) Polarization ellipse:
χ =0 π ψ = (δ = 0 ) 2 3π ψ= (δ = π ) 2
LINEAR:
CIRCULAR:
χ ° [−45°, 45°]
- ellipticity
ψ ° [ 0°,180°]
- orientation angle
5
χ =±
π 2
ELLIPTICAL: the rest…
Fundamentals of Remote Sensing: SAR Polarimetry
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I Electromagnetic wave polarization (6/8) Partly polarized wave: Mathematical representation through the Stokes vector:
! # I = ## # #"
S0 Q U V
S02 ≥ Q 2 +U 2 +V 2
d=
! $ # & # &=# & # & # &% # #"
2
2
2
2
Eh + Ev Eh − Ev
2ℜ {Eh Ev* } −2ℑ {Eh* Ev }
$ & & & & & & &%
Equality holds for fully polarized wave.
Q 2 +U 2 +V 2 S02
Degree of polarization
Fundamentals of Remote Sensing: SAR Polarimetry
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I Electromagnetic wave polarization (7/8) Poincaré sphere:
! # I = ## # #"
7
! S0 S0 $ # & Q & = # S0 cos2ψ cos2 χ & # U & # S0 sin 2ψ cos2 χ V &% #" S0 sin 2ψ
II SAR Polarimetry principle (1/12) SAR systems: (a) monostatic (b) bistatic
V
H
E
I
E
S
• single pol (HH v VV v HV v VH) • dual pol (HH & HV v VV & VH) • full pol (HH & HV & VH & VV)
HH v VV – co-polarized channels HV v VH – cross-polarized channels
9
Fundamentals of Remote Sensing: SAR Polarimetry
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II SAR Polarimetry principle (2/12) Agricultural fields in southern Manitoba
Full Pol: RADARSAT 2 • Launched in 2007 • Canadian Space Agency • C band
Fundamentals of Remote Sensing: SAR Polarimetry
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II SAR Polarimetry principle (3/12) RH AH T
V H
AV
RV T H
V
H
V
RH RV
TRANSMITTER: RECEIVERS:
H&V H&V
SHH
SHV
SHH
SHV
SVH
SVV
SVH
SVV
(BACK)SCATTERING MATRIX 11
') ! S HH ([ S ] = # #" SVH )*
SHV $+) &, SVV &%) -
Fundamentals of Remote Sensing: SAR Polarimetry
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24/06/13
II SAR Polarimetry principle (4/12) Scattering matrix:
Targets causing depolarization of the incident wave?
NO
12
YES
Coherent targets
Incoherent targets
Coherent backscattering
Incoherent backscattering
Backscattered wave described by the Jones vector
Backscattered wave described by the Stokes vector
Fundamentals of Remote Sensing: SAR Polarimetry
II SAR Polarimetry principle (5/12) Scattering matrix:
Backscattering coordinate system
Back Scatterer Alignment (BSA)
13
Forward Scatterer Alignment (FSA)
Fundamentals of Remote Sensing: SAR Polarimetry
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II SAR Polarimetry principle (6/12) Scattering matrix:
• S and J – complex matrices • K and M – real matrices • Under reciprocity assumption: S, J, K and M – symmetric matrices Fundamentals of Remote Sensing: SAR Polarimetry
14
II SAR Polarimetry principle (7/12) Sinclair matrix: SAR polarimetry SAR interferometry
! S HH
[S ] = #
#" SVH
! # k =# # #"
SHV $ & SVV &%
SHH 2SHV SVV
$ & & & &%
S
E =
Propagation
e − jkr [S ]E I r
Penetration depth
+
Backscattering mechanisms
target vector 15
Fundamentals of Remote Sensing: SAR Polarimetry
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II SAR Polarimetry principle (8/12) Target vector:
! S HH
SHV $ & SVV &%
[S ] = #
#" SVH
kTi = Trace ([ S ] [ψTi ])
Pauli matrices:
1 ! ψT 0 = # 2" 1 ! ψT1 = # 2" 1 ! ψT 2 = # 2"
1 0 1 0 0 1
0 $ &, 1 % 0 $ &, −1 % 1 $ & 0 %
" S +S HH VV 1 $ kT = $ SHH − SVV 2$ $# 2SHV
% ' ' ' '&
Frobenius norm:
kT
2
(
*
)
2
2
= Span([ S ]) = Trace [ S ] [ S ] = SHH + 2 SHV + Svv
2
Fundamentals of Remote Sensing: SAR Polarimetry
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II SAR Polarimetry principle (9/12) Muller matrix: Incident Stokes vector d=1
I S = [M ] I I
Initially, 10 real parameters. Trace condition: Backscattered Stokes vector d