The present disclosure relates generally to imaging systems and more particularly to imaging systems using synthetic aperture or tomographic imaging techniques.
Synthetic aperture radar (SAR) images a target region reflectivity function in the multi-dimensional spatial domain of range and cross range [I]. SAR synthesizes a large aperture radar. The cross range resolution of the SAR is Rλ/D, where D is the synthetic aperture, R is the target range, and λ is the wavelength of the measured waveform.
When imaging a target, the conventional SAR theory does not include the effects of multiple scattering from the surrounding objects in a high clutter area. In addition to the true target image, multiple-bounce echoes caused by surrounding scatterers produce spurious and random patterns in the formed SAR image. We refer to these as ghost images. A common practice to distinguish the true target from its ghost images is leading edge detection, i.e., if the ghost image is caused by trailing echoes, we may identify the peak that has the shortest range as the target. However, unless we know a priori where the scatterers are, or what their physical characteristics are, it is difficult to distinguish the true target from the ghost images.
Thus, a need exists for a SAR imaging system having improved performance
In this disclosure, we use a multi-look averaging technique to remove ghosts and to provide an estimate of the target location. The estimated target location is used to estimate a target phase angle or delay time. We can then use that information to focus time reversed signals on the target to form a clean target map with high resolution in a high clutter scene.
The time reversal step focuses on the dominant patterns and provides higher resolution. Focusing on a chosen pattern with high resolution resembles a camera to zooming in on a particular spot to see the details of its structure. The details may be the size or the shape of the target. If the focused spot has a target, we can recognize its shape or its size. However, if the focused spot is a ghost pattern, the details are blurred and random, and do not resemble any particular object. Thus, we are able to distinguish the target from its ghost patterns. To further improve the accuracy of the initial estimate of the location of a fixed target from the conventional SAR images, we can average a number of SAR images taken from different look angles. Due to the randomness of the appearance of the ghost patterns in SAR images, the averaging enhances the intensity of the target spot while reducing the intensity of the ghost patterns.
Time reversal is well known for its temporal and spatial focusing in highly cluttered environments [2, 3, 4]. Experiments have demonstrated that time reversal produces a higher resolution that exceeds the Rayleigh limit. We develop here methodologies and algorithms that form cleaner and higher resolution images by time reversal than conventional SAR. Those advantages and benefits, and others, will be apparent from the detailed description below.
The present disclosure is described, for purposes of illustration and not limitation, in connection with the following figures, wherein:
Synthetic aperture radar (SAR) is used for ground mapping as well as target identification. The general principle behind SAR is to coherently combine the amplitude and phase information of radar returns from a sequence of transmitted pulses from a relatively small antenna. When imaging a target, the conventional SAR theory does not include the effects of multiple scattering from the surrounding objects in a high clutter area. In addition to the true target image, multiple-bounce echoes caused by surrounding scatterers produce spurious and random patterns in the formed SAR image. We refer to these as ghost images. Thus, the target image is obscured by the ghost images. A common practice to distinguish the true target from its ghost images is leading edge detection, i.e., if the ghost image is caused by trailing echoes, we may identify the peak that has the shortest range as the target. However, unless we know a priori where the scatterers are, or what their physical characteristics are, it is difficult to distinguish the true target from the ghost images.
This disclosure, combining time reversal with synthetic aperture radar (TR-SAR), can reduce or remove ghost patterns and form a clean target map in a high clutter scene. Furthermore, once we identify a target spot, we can examine the shape or the size of the target with improved resolution. A detailed description of our apparatus and method is given below
We illustrate our method with a bi-static SAR system as shown in
Our disclosed system and method will now be described in conjunction with
In
The next step, step 2, is target probing. The target in this step is now present but is masked by the clutter. In this step the same signal P(ω) is physically transmitted from antenna A. Antenna A moves along the same aperture path as before and transmits the same signal P(ω) as before. However, the signal (return) received at antenna B is P(ω)Hc+t(ω,u) where Hc+t(ω,u) is the clutter plus target response. Steps 1 and 2 together may be thought of as generating target data or, more particularly, generating clutter data and generating combined clutter and target data, respectively. For a stationary scene, it is possible to remove the clutter by subtracting strong returns from clutter, yielding the target response at frequency ω and aperture u H(ω,u)=Hc+t(ω,u)−Hc(ω,u).
The target channel response can be decomposed as
G(ω,u)=τnH(ω,u)e−jkR
where Rn(u) is the distance between the transmitter (at a fixed location in our imaging geometry (XB, YB)), the target at (Xc+xn, Yc+yn), and the receiver at the aperture (0, u)
The symbol τn is the n-th target reflectivity, i.e., the target radar cross section (RCS); k=ω/c is the wave number; the relative multi-path channel is
Symbols αl and ΔRn,l denote the amplitude and differential distance, respectively, of the l-th multi-path reflected from the n-th target. The l-th term
αle−jkΔR
appears as a ghost pattern in the SAR image and characterizes the relative strength and location of the ghost pattern. If not properly removed, these ghost patterns will degrade the image solution and obscure the true target image. A goal of our method is to remove the ghost patterns in conventional SAR images and form a clean target map with improved target detectability and resolution in a multi-path rich scattering environment. Next, we derive signal models for the convention SAR and TR-SAR.
In Step 3, the clutter component is subtracted out and the received target signal can be represented as follows.
S(ω,u)=P(ω)τnH(ω,u)e−jkR
where P(ω) is the probing signal and the additive noise is not considered for the moment. Direct SAR processing of the data given in equation (4) yields a conventional SAR image. This image contains ghost patterns. Note that the ghost patterns are look angle dependent in a rich multi-path scattering environment [5]. In step 4 we use multi-look averaging to remove ghost images [5], [8]. The multi-look averaging can be described as follows.
xt=dt cos α,yt=dt sin α
where α is the aspect angel of the target with respect to the synthetic aperture. Hence, the scatterer coordinates are
xc=dc cos θ,yc=dc sin θ
where θ is the aspect angle of the scatterer with respect to the antenna. By Taylor series expansion, we have:
Let dg=(dt+dc+dtc)/2 and define
In a SAR scenario, the cross range yc<<xc and a is a small angle, i.e., cos α˜l, sin α˜α. Therefore, we have the following approximation:
The previous approximation, shows that the ghost artifacts in cross range yg depend on the scattering spread (Δθ) and the scattering density (α and dtc). The analysis demonstrates that the appearance of the ghost pattern artifacts is look angle α dependent. Because the true target location is fixed, averaging multi-look images, either coherently or non-coherently, will reduce or remove the ghost patterns and enhance the intensity of the target. Hence, from the averaged multi-look images, we obtain a rough estimate of the target location with a coarse resolution. Later, the estimated target location can be used for reconstructing the TR-SAR images in the full aperture domain to retain full resolution.
For example, we collect signals (4) at M locations of the aperture {u|u1, . . . , uM}. We divide the full aperture into two sub-apertures, U1={u|u1, . . . , uM/2} and U2={u|u1, . . . , uM}. Feeding these two sub-aperture data into a standard SAR processing train yields two sub-images I1 and I2. Averaging these two sub-images after proper image registration, coherently or incoherently, leads to a third image from which we obtain the estimated target location ({circumflex over (x)}n,ŷn). Then, in the second part of step 4, using the estimated target location ({circumflex over (x)}n,ŷn) we calculate the target distance {circumflex over (R)}n(u) as follows (from which the time delay can be calculated):
Additional information about multi-look averaging as applied to SAR may be found in Y. Jin, J. M. F. Moura, Y. Jiang, J. Zhu, and D. Stancil, “Time reversal target focusing in spotlight SAR”, 15th Adaptive Sensor Array Processing Workshop, MIT Lincoln Lab, Lexington, Mass., Jun. 5-6, 2007, the entirety of which is hereby incorporated by reference for all purposes.
Step 5 in
Pu(ω,u)=ku[S(ω,u)ejk{circumflex over (R)}
where the normalized factor is:
we can rewrite equation (5) as
Pu(ω,u)=
where
φn,ω,u=k(Rn(u)−{circumflex over (R)}n(u))
is the phase offset. Here, we assume the phase offset is zero, i.e.,
φn,ω,u=0
and the propagation channel is reciprocal.
In
Feeding the conventional SAR target data from equation (4) and TR-SAR target data from equation (10) to a standard SAR processing train (See
Detection by TR-SAR
In this section, we examine the performance of the time reversal when used in conjunction with synthetic aperture radar (SAR) for detecting a target concealed in clutter. We have proposed time reversal SAR (TR-SAR) in [4], [5]. To simplify the analysis, we interpret SAR imaging as beamforming, i.e., the SAR data-collection and image formation process is a simple beamformer with sidelobe control [6], [7]. We examine the detection performance by TR-SAR and convention SAR. To be consistent with our experimental setup, we use discrete representation of the SAR signals, i.e., we use ωq, q=0, . . . , Q−1, frequency samples, and um, m=1, . . . , M aperture samples. Hence, the received SAR data (for conventional change detection) in equation (4) can be written as:
PCD(ωq,um)=τnP(ωq)H(ωq,um)c−jk
where um is the m-th aperture, kq=ωq/c. W(ωq,um)˜CN(0,σω2) is the additive noise.
To form a SAR image, we first stack PCD(ωq, um) as a vector:
pCD=vect{PCD(ωq,νm)},q=0, . . . , Q−1,m=1, . . . , M. (12)
The weighting coefficients for each pixel x in the image are given by Vq,m(x) (for example, a windowed fast Fourier transform, or FFT, [7]) and written as a vector v(x)=vec{Vq,m(x)}. Hence, the target radar cross section (RCS) can be obtained by:
In equation (13), the first term is the target phase history data; the second term is induced by a multi-path that produces ghost images [4], [5]; the last term is the additive noise. Similarly, using time reversal, the received SAR data is
Ptr(ωq,um)=τnP*(ωq)|H(ωq,um)|2e−jk
The vectorized SAR data is:
ptr=vec{Ptr(ωq,um)},q=0, . . . , Q−1,m=1, . . . M. (15)
The estimated target RCS by time reversal is:
Compared with equation (13), the ghost images are removed in (16). See
We now compare the performance of TR-SAR with conventional SAR using a different metric. The imaging geometry is shown in
Vq,m(x)=e−jk
That is, the beamformer matches with the target response. We define the target-to-multi-path noise ration (TMNR) as:
To test our analysis, we performed electromagnetic measurements in a laboratory environment. The geometry is shown in
To examine the resolution, we project the SAR image (
The following references are hereby incorporated by reference for all purposes:
While the present disclosure has been described in conjunction with preferred embodiments, those of ordinary skill in the art will recognize that many other variations, modifications, and applications are possible. Although the present invention is disclosed in conjunction with synthetic aperture radar, the present invention is not limited to SAR, nor is it limited to two dimensions. In particular, the probing signal P(ω) is not limited to radar frequencies such that other frequencies, including sound waves, could be used. Additionally, other antenna configurations are possible, and many applications, for example, biomedical tomographic imaging, are envisioned. The present disclosure is intended to be limited only by the following claims.
The present application claims priority from copending U.S. application Ser. No. 60/958,756 entitled Time Reversal for Synthetic Aperture Imaging and Medical Imaging filed Jul. 9, 2007, which is hereby incorporated by reference for all purposes.
This disclosure was supported by DARPA Grant No. W911NF-04-1-0031. The government may have rights in this invention.
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