DPCA SAR imaging based on Compressed Sensing

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Transcript DPCA SAR imaging based on Compressed Sensing

DISPLACED PHASE CENTER ANTENNA SAR IMAGING BASED ON COMPRESSED SENSING

Yueguan Lin

1,2,3

, Bingchen Zhang

1,2

, Wen Hong

1,2

and Yirong Wu

1,2

1 National Key Laboratory of Science and Technology on Microwave Imaging, P. R. China 2 Institute of Electronics, Chinese Academy of Sciences (IECAS), Beijing, P. R. China 3 Graduate University of Chinese Academy of Sciences (GUCAS), Beijing, P. R. China National Key Laboratory of Microwave Imaging Technology Institute of Electronics, Chinese Academy of Sciences

Outlines

• Introduction • DPCA SAR imaging based on Compressed Sensing • Ground-based DPCA SAR experiment • Conclusion and discussion • Acknowledgement

Introduction

• High azimuth resolution and wide unambiguous swath coverage are contradictive in SAR system design.

• DPCA SAR has the potential to achieve HRWS imaging. While there is a rigid restriction posed on its selection of PRF: SAR platform moves just one half of its total antenna length between subsequent radar pulses .

• When this condition is not satisfied, there will be nonuniform sampling in azimuth and rising azimuth ambiguities will appear under traditional imaging algorithms based on matched filter

Introduction

• Krieger proposed A Doppler spectrum reconstruction algorithm *.

• This method can recover the unambiguous signal and suppress ambiguous energy.

• It is computation costly as inversions of matrix are involved and the reconstruction of spectrum should be carried out for every azimuth signal.

* Krieger, G., Gebert, N., and Moreira, A.: nonuniform displaced phase center ‘Unambiguous SAR signal reconstruction from sampling’.

IEEE Geoscience and Remote Sensing Letters

, 2004, 1(4): 260-264.

DPCA SAR imaging based on Compressed Sensing

Compressed Sensing X

is sparse representable if there exists a sparsity basis that provides a sparse representation of it.

K

Y = ΦX

When

Φ

satisfies Restricted Isometry Property. The number of measurements needed to reconstruct the signal is not restrained by the Nyquist sampling rate, but by the complexity of the signal. We only need measurements, where

M M

= log (

N

/

K

) ) where

N

is the number of measurements needed by the Nyquist Theorem

DPCA SAR imaging based on Compressed Sensing

According to systems the DPCA SAR model can be constructed precisely

y

 where ,

y

is the observations

x Φ

is observed scene is observation matrix

n Φ

  is observation noise.

Φ

p

P

k P

 1,

l

    

p h p

(1)  1)

Φ

p

   

p

0 0

p

0

p

0  1) 0 0

h p

(1)

p p

0 0 

P

) 0 0

p h p

(1)  1) 0

p

0 0

h p

(1)          

DPCA SAR imaging based on Compressed Sensing

• The backscattering field of target is usually contributed by a few strong scattering centers, so CS is suitable in SAR imaging.

• As the observation is constructed precisely according to SAR system parameters, the ambiguity causes by nonuniform effective azimuth phase centers doesn’t exist.

• The observed scene can be reconstructed through solving an optimization problem

min

  1

, subject to

y

Φx

2  

Ground-based DPCA SAR experiment

Ground-based DPCA SAR system with one aperture transmitting stepped frequency and three apertures receiving echoes.

System parameters

Parameters Carrier frequency Based band width Stepped frequencies Span in azimuth Azimuth sampling interval Length of subaperture Values 17 GHz 1 GHz 2.5 MHz [-1, 1] m 0.024 m 0.032 m

DPCA SAR system

• Azimuth effective phase centers 6 5.5

5 4.5

4 3 2.5

2 1.5

1 0.5

-0.03

-0.02

-0.01

0 0.01

0.02

Azimuth effective phase centers (m)

Azimuth effective phase centers

.

0.03

Antennas

• Effective azimuth phase centers of this DPCA SAR system are nonuniformly distributed.

Ground-based DPCA SAR experiment

0 -10 -20 -30 -40 -50 -1 -0.5

0 Azimuth (m) 0.5

1

Observed trihedral corner reflector

.

RD imaging without preprocessing

• Result using traditional Range-Doppler algorithm without preprocessing has

-17dB

ambiguities.

Ground-based DPCA SAR experiment

0 -10 -20 -30 -40 -50 -1 -0.5

0 Azimuth (m) 0.5

1

RD imaging with spectrum reconstruction

0 -10 -20 -30 -40 -50 -1 -0.5

0 Azimuth (m) 0.5

1

Proposed CS imaging

• Result using RD algorithm after spectrum reconstruction has

-25dB

ambiguities; result using proposed imaging algorithm with ambiguities being suppressed under

-30dB

.

Conclusion and discussion

• DPCA SAR imaging algorithm based on CS can suppress the ambiguities caused by nonuniform sampling in azimuth and retrieve the target scene with high quality.

• The experimental results with ground-based DPCA SAR system validate its advantage.

 We will evaluate this method’s performance with real space borne and airborne raw data in next step.

 The effect of observation noise will be researched.

Acknowledgement

• This work was supported by the State Key Development Program for Basic Research of China (Grant No. 2010CB731905).

Thank you for your attention!

Email: [email protected]