zhu_et_al_IGARSS2011_time_warp.ppt
Transcript of zhu_et_al_IGARSS2011_time_warp.ppt
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IGARSS 2011, 24-29 July 2011, Vancouver, Canada
Multi-Component Nonlinear Motion Estimation in Differential SAR Tomography – The Time-Warp Method
Xiao Xiang Zhu and Richard Bamler
Remote Sensing Technology Institute, DLR/TUM
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TomoSAR System Model
b
b
elevationaperture
sz
yx
r
, ,x r s
3-D reflectivity distribution
reference surface s = 0
s
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TomoSAR System Model
b
b
elevationaperture
2 nn
b
r
Complex pixel value in acquisition n (after some phase corrections):
exp 2
[ ( )] | , 1,...,n
n n
s
g s j s ds
FT s n N
sz
yx
r
, ,x r s
3-D reflectivity distribution
reference surface s = 0
s
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TomoSAR System Model
b
b
elevationaperture
2 nn
b
r
Complex pixel value in acquisition n (after some phase corrections):
exp 2
[ ( )] | , 1,...,n
n n
s
g s j s ds
FT s n N
sz
yx
r
, ,x r s
3-D reflectivity distribution
reference surface s = 0
s
TomoSAR = spectral estimation
• irregular sampling
• small N
• motion must be considered
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Test Site
Bellagio Hotel, Las Vegas
Optical image, © Google Earth TerraSAR-X spotlight mode
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SL1MMER: 30% double scatterers
Number of Scatterers
Blue: no scatterer per pixel
Green: single
Red: double
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Bellagio Hotel in 3D
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What about motion?
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D-TomoSAR System Model
General form
exp 2
2 ,n n
s
nd s tg s j s ds
displacementpossibly nonlinear & multi-component
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D-TomoSAR System Model
General form
PSI:▫ displancement model directly fitted to phase, e.g. by LAMBDA
▫ only single scatterers
exp 2
2 ,n n
s
nd s tg s j s ds
displacement
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D-TomoSAR System Model
General form
PSI:▫ displancement model directly fitted to phase, e.g. by LAMBDA
▫ only single scatterers
D-TomoSAR:▫ displacement term in exponent no longer FT (except for linear motion)
▫ for moderately non-linear motion: velocity spectrum
▫ multiple scatterers
exp 2
2 ,n n
s
nd s tg s j s ds
displacement
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D-TomoSAR System Model
General form
The time warp method
▫ Linear motion:
▫ Seasonal motion:
exp 2
2 ,n n
s
nd s tg s j s ds
n
p s
artificial temporal baseline
motion parameter along s
n nt p s V s
0sin 2n nt t
p s a s
amplitude of seasonal motion
displacement
2exp 2 , n
n n n n
p s
g s p p s j s p dsdp
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Let’s Do the Time Warp …
nd t
0sin 2 nn t t
nt
nn
nt
nd
n nd a
0sin 2n nd t a t t
Before warp:
After warp:
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Single + DoubleAmplitude of Seasonal Motion [mm]
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Bellagio Hotel in 4D
Thanks to Y. Wang for visualization
exaggerated 1000
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Multi-component Motion
Deformation pattern, Las Vegas Linear + seasonal motion
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Multi-component Motion
Deformation pattern, Las Vegas Linear + seasonal motion
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Let’s Do the Time Warp Again
Generalized time warp
Single-component motion M-component motion
2D spectral estimation M+1-D spectral estimation
1
1 1
1, 1 , 1
... ,...,
exp 2 ... ...
M
n M M
p p s
n n M n M M
g s p p s p p s
j s p p dsdp dp
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5D City Mapping: Linear + Seasonal Motion
P
P1
P2
P1 P2epicenter
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Elevation [m]
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Linear Subsidence [mm/a]
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Amplitude of Seasonal Motion [mm]
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Conclusions
Non-linear motion is everywhere in urban environment
Non-linear motion estimation is necessary and possible for TomoSAR
Single- and multi-component motion models can be accommodated by the time warp method