The present invention relates to radar signal processing. More particularly, the present invention relates to the post-matched filter processing repair of radar return signals.
Range sidelobe suppression in radar pulse compression has been a topic of intense scrutiny for several years. The goal is to minimize the effects caused by the correlation of a transmitted waveform with delayed versions of itself while maintaining close to the optimal signal-to-noise ratio (SNR). One approach has sought to achieve this by employing some form of least squares (LS) estimation; see, for example, U.S. Pat. No. 5,805,107. LS has been shown to provide the most efficient estimator when the additive noise is white. However, LS is not robust in that it does not account for scatterers closer than some nominal range R0, which can have a deleterious effect on the estimation of the channel at the ranges of interest.
Another approach termed Reiterative Minimum Mean-Square Error (RMMSE) estimation and described in U.S. Pat. No. 6,940,450, issued Sep. 6, 2005 and incorporated herein by reference, provides a robust estimate of the radar channel impulse response that is almost completely devoid of range sidelobes. This approach, however, as with LS estimation, involves replacing the standard matched filter within legacy radar systems, which is not always a feasible solution.
It would therefore be desirable to provide an approach for decreasing the radar sidelobes after a,standard matched filter radar signal processing operation.
According to the invention, a radar pulse compression repair (RPCR) system includes a receiver for receiving a radar return signal, a matched filter for applying matched filtering to the radar return signal to generate a matched filter output, a processor programmed for applying Radar Pulse Compression Repair (RPCR) to the matched filter output to suppress a plurality of range sidelobes from the matched filter output, and a detector for receiving the RPCR-processed output. RPCR is preferably repeated until the range sidelobes are suppressed to the level of a noise floor. In a preferred embodiment, the received radar return signal at the lth range gate is defined as
y(l)=xT(l)s+ν(l) (1)
for l=0, . . . ,L+N−2, where x(l)=[x(l) x(l−1) . . . x(l−N+1)]T is a set of impulse response coefficients that a transmitted waveform s is convolved with at delay l, ν(l) is additive noise, (•)T is a transpose operation, and L is a number of range gates in a processing window, a system response model based on collecting N samples of the received radar return signal is expressed as
y(l)=[x(l)x(l+1) . . . x(l+N−1)]Ts+v(l)=XT(l)s+v(l) (2)
where y(l)=[y(l) y(l+1) . . . y(l+N−1)]T and v(l)=[ν(l) ν(l+1) . . . ν(l+N−1)]T, the matched filtering operation comprises convolving the received radar return signal with a time-reversed complex conjugate of the transmitted waveform as expressed in the digital domain as
{circumflex over (x)}MF(l)=sHy(l) (3),
the convolution of the transmitted waveform with the radar impulse response (1) and the convolution of the received radar return signal with the time-reversed, complex conjugated waveform (3) are combined and represented as
{circumflex over (x)}MF(l)=rT{tilde over (x)}(l)+u(l) (4),
where {tilde over (x)}(l)=[x(l+N−1) . . . x(l+1) x(l) x(l−1) . . . x(l−N+1)]T, u(l) is an additive noise correlated by the matched filtering, and r is a length 2N−1 result of the convolution of the transmitted waveform s and a receive filter
{circumflex over (x)}RPCR(l)=wH(l){tilde over ({circumflex over (x)}MF(l) (5)
is performed in which an assumed transmitted waveform is r, estimating an optimal receive filter for each individual range gate as
w(l)=ρ(l) (C(l)+R)−1r (6)
where ρ(l)=E[|x(l)|2] is an expected power of x(l), or alternatively ρ(l)=E[|x(l)|α], where values for α preferably fall within 1≦α≦1.7, R=E[u(l) uH(l)] is a noise covariance matrix, and the matrix C(l) is defined as
in which rn contains the elements of the length 2N−1 waveform autocorrelation r right-shifted by n samples and the remainder zero filled; (6) may be applied reiteratively to improve the accuracy of the estimate. In the embodiment in which the invention employs a stability factor, α replaces the exponent in ρ(l)=E[|x(l)|2] resulting in ρ(l)=E[|x(l)|α],
where values for α preferably fall within 1≦α≦1.7, in the processing algorithm to keep the matrix C(l) from becoming ill-conditioned when the received radar return signal has a large dynamic range.
The RPCR invention advantageously operates upon the output of the matched filter. This therefore enables RPCR to be employed as a post-processing stage in systems where it is not feasible to replace the existing pulse compression apparatus. RCPR can also be selectively employed when it is possible that large targets are present that may be masking smaller targets, thereby keeping computational complexity to a minimum.
Definitions: The term “convolution” means the process that yields the output response of an input to a linear time-invariant system, such as is described and defined in J. G. Proakis and D. G. Manolakis, Digital Signal Processing:Principles, Algorithms, and Applications, 3rd Ed., pp. 75-82, Prentice Hall: Upper Saddle River, N.J. (1996), incorporated herein by reference. The term “deconvolution” as used herein means the process that given the output of a system determines an unknown input signal to the system. See Id. at p. 355, incorporated herein by reference. The term “scatterer” means something in the path of a transmitted waveform that causes a significant reflection (relative to the noise) back to the receiver of the sensor.
The new radar pulse compression repair (RPCR) method and system is based on applying Reiterative Minimum Mean-Square Error (MMSE) estimation (described further below) after standard pulse compression via matched filtering.
Referring now to
We denote the discrete-time version of the transmitted waveform 14 as the column vector s having length N. A receiver 18 receives a radar return signal 16. According to the range resolution of the transmitted waveform, the received signal 16 at the lth range gate is defined as
y(l)=xT(l)s+ν(l) (1)
for l=0, . . . , L+N−2, where x(l)=[x(l) x(l−1) . . . x(l−N+1)]T is the set of impulse response coefficients representing the radar scattering objects in the environment which reflected the transmitted waveform 14s at delay l, ν(l) is additive noise, (•)T is the transpose operation, and L is the number of range gates in the processing window. Collecting N samples of the received radar return signal 16, the system response model is expressed as
y(l)=[x(l) x(l+1) . . . x(l+N−1)]Ts+v(l)=XT(l)s+v(l) (2)
where y(l)=[y(l) y(l+1) . . . y(l+N−1)]T and v(l)=[v(l) v(l+1) . . . v(l+N−1)]T. A matched filter 20 convolves the received radar return signal 16 with the time-reversed complex conjugate of the transmitted waveform 14 which can be expressed in the digital domain as
{circumflex over (x)}MF(l)=sHy(l). (3)
Following matched filtering, a legacy radar system may employ an A/D converter 22 as well-as some additional processing 24 prior to applying a detector 26 to the matched filter output. However, it is well-known that the matched filter 20 generates range sidelobes in range cells near to large target returns. An example of this is depicted in
In some legacy radar systems it is not feasible to replace the existing pulse compression apparatus to enable robust range sidelobe suppression. However, range sidelobe suppression can still be achieved by post-processing the output of matched filter 20 via an analog-to-digital (AD) convertor 22 and a processor 24 for applying RPCR to the digitized matched filter output prior to the detector 24. The received signal model for RPCR involves the combination of the operations of convolution of the transmitted waveform 14 with the radar impulse response (i.e. equation (1)) and the convolution of the received return signal 16 with the time-reversed, complex conjugated waveform via the matched filter 20 (i.e. equation (3) which is represented as
{circumflex over (x)}MF(l)=rT{tilde over (x)}(l)+u(l) (4)
where {tilde over (x)}(l)=[x(l+N−1) . . . x(l+1) x(l) x(l−1) . . . x(l−N+1)]T, u(l) is additive noise correlated by the matched filter, and r is the length 2N−1 convolution of the transmitted waveform s and the receive filter
{circumflex over (x)}RPCR(l)=wH(l){tilde over ({circumflex over (x)}MF(l) (5)
in which the assumed transmitted waveform for the RPCR received signal model is r.
The RPCR algorithm estimates the optimal receive filter for each individual range gate as
w(l)=ρ(l) (C(l)+R)−1r (6)
where ρ(l)=E[|x(l)|2] is the expected power of x(l), R=E└u(l) uH(l)┘ is the noise covariance matrix, and the matrix C(l) is defined as
in which rn contains the elements of the length 2N−1 waveform autocorrelation r right-shifted by n samples and the remainder zero filled.
Given the range cell estimates from the output of the matched filter, one can then reiteratively apply (6) in order to further improve the accuracy of the estimate. It has been found that one to three stages allows RPCR to robustly suppress the range sidelobes to the level of the noise floor when the radar return channel is somewhat sparsely parameterized (as is the case with high range resolution radar).
Note that each reiteration stage will reduce the number of range gate estimates by 2(2N−2). To counteract this, it is preferred to increase the window of range gates by 2M(2N−2), where M is the number of stages.
Finally, to maximize numerical efficiency, RPCR may be implemented using a variation of the matrix inversion lemma.
In a preferred embodiment, a stability factor α replaces the exponent in ρ(l)=E[|x(l)|2] in (6) resulting in
ρ(l)−E[|x(l)|α]. (8)
The stability factor is used to keep the matrix C(l) from becoming ill-conditioned when the received radar return signal has a large dynamic range. Preferred values for α fall within 1≦α≦1.7. Furthermore, similar to the adaptation step-size in closed-loop algorithms, it is preferable to set α at the high end initially and allow it to decrease to the low end by the final stage.
As an example, we use an N=30 Lewis-Kretschmer P3 code (waveform) for a radar impulse response containing one large target (with 60 dB SNR) and a smaller target (with 20 dB SNR). The RPCR algorithm is applied to the matched filter output using 1 stage with the stability parameter set as α=1.6.
The single stage of the RPCR algorithm results in a reduction of the Mean-Square Error (MSE) between the estimate and ground truth of 34 dB over the MSE of the matched filter. Also, the mismatch filter response (the matched filter response divided by the RPCR response) for the range cell containing the large target is only 0.05 dB.
For a more stressing example, we examine the performance when there are numerous targets: both large and small. We employ 2 stages of the RPCR algorithm with α1=1.6 and α2=1.4. In
Obviously many modifications and variations of the present invention are possible in light of the above teachings. It is therefore to be understood that the scope of the invention should be determined by referring to the following appended claims.
The present application claims the benefit of the priority filing date of provisional patent application No. 60/626,502, filed Nov. 8, 2004, incorporated herein by reference.
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