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1.IntroductionSynthetic aperture radar (SAR) can realize imaging for the ground targets all day and under all weather conditions, and can achieve a high resolution in range direction due to the use of high transmitted-pulse bandwidth and in azimuth direction due to the storage of data over a certain observation time.1,2 However, along with the improvement of range resolution, the bandwidth of the transmitted signal will increase sharply, which is a huge challenge for sampling at the receiver using analog-to-digital technology.3 Stepped-frequency waveforms (SFWs) consist of sequences of single-frequency pulses where the frequency of each pulse is increased by discrete steps.4,5 Thus, SFWs are able to use the wide radio-frequency band of a frequency-agile radar with a narrow-band receiver which only needs simple hardware.6 Therefore, SFWs have been widely employed to increase system bandwidth. However, the frequency-stepped value of conventional SFWs is constant, and can be easily jammed. Meanwhile, SFWs are a group of subpulses which require a long time period of transmission and may result in Doppler ambiguity. These disadvantages dramatically reduce its applications. In the last few years, the compressed sensing (CS) theory, which has been introduced in Refs. 7 and 8, indicates that one can stably and accurately reconstruct nearly sparse signals from dramatically undersampled data in an incoherent domain. With this prominent advantage, the CS theory has been used in wide-ranging applications. Meanwhile, the idea of CS has also been introduced in imaging radar system.9–15 In Ref. 10, a CS-based radar imaging method is proposed in which the pulse compression matched filter is no longer needed. In Ref. 11, a random-frequency SAR imaging scheme based on CS is put forward. The advantage of this method is that only a small number of random frequencies are needed to reconstruct the image of the targets. However, it does not consider the situation that some of SAR echo data may be lost in the coherent integration time. In Ref. 12, the CS-based imaging algorithm is proposed to obtain the super-resolving imaging result with full data for stepped-frequency SAR. Also, the sparse recovery method is utilized to estimate the range and Doppler of multiple targets with random stepped-frequency radar.13 Reference 14 proposes a step-frequency radar system based on compressive sampling, which can use a smaller bandwidth to achieve a high range and speed resolution. If a part of the subpulses of SFWs is randomly selected for transmission, the interference frequency band will be avoided and the time period to transmit will be shortened,15 which can improve the antijamming capability, increase the equivalent pulse repetition frequency (PRF), and restrain the azimuth ambiguity. Thus, a sparse SFW for SAR imaging is studied in this paper. In addition, it frequently occurs that some of SAR echo data are contaminated or lost in the coherent integration time. The contaminated data must be abandoned, which leads to the conventional SAR imaging method being invalid. Due to the transmitted signal is the sparse SFW, the SAR echo data are two-dimensional (2-D) sparsity both in the frequency and space domains. In this paper, a novel 2-D sparse SAR imaging method is put forward. First, after analyzing the imaging model with the sparse SFWs, the range compression is completed by using CS theory instead of the inverse discrete Fourier transform (IDFT) processing. Second, in azimuth imaging processing, the imaging operator is constructed by multiplying the diagonal 2-D decoupling frequency function by the azimuth compression function. Thus, the range cell migration correction and azimuth compression are implemented simultaneously by the CS-based imaging scheme. The main advantages of our method can be concluded as follows:
The organization of this paper is as follows. Section 2 analyzes the signal model for SAR imaging with sparse SFWs. Then, after introducing CS theory, range compression is completed by using CS theory in Sec. 3. In Sec. 4, the azimuth imaging method with the sparse echo data in the space domain is proposed by constructing an imaging operator and CS-based imaging scheme which can implement range cell migration correction and azimuth compression. Simulation and experimental results are presented in Sec. 5 to validate the effectiveness of the proposed approach. Finally, we make some conclusions in Sec. 6. 2.Signal Model for Synthetic Aperture Radar Imaging with Sparse Stepped Frequency2.1.Sparse Stepped-Frequency WaveformsThe SFW is a kind of synthesized bandwidth signals which can use a sequence of single-frequency pulses to achieve an ultrawide bandwidth, and the frequency of each pulse is increased in steps. The SFW can be expressed as where , is the number of pulses in one sequence, denotes a rectangular window, is the window width (this also refers to the time duration of each pulse), is the carrier frequency, and is the frequency-stepped size.The sparse SFW is directly expanded from the full-band SFW: if only portions of full-band subpulses are transmitted, then a sparse SFW is formed, which can shorten the time period of transmission. For example, the processing interval is when transmitting a full-band SFW for a burst, whereas the processing interval is when subpulses are transmitted for a burst. So the processing interval is reduced and the equivalent PRF is increased, thus the Doppler ambiguity can be restrained. Meanwhile, the sparse SFW cannot be interfered with by external radio-frequency sources. With the prior information of interferences, a sparse SFW radar system would be programmed to step over the frequency bands with interferences so that clean echo signals can be obtained. To make the notation clear, the frequency-stepped value of sparse SFW is denoted by , where is a subset of , and runs from 1 to . The ’th subpulse in a burst of sparse SFW can be expressed as The sparsity level of sparse SFW is defined as In the following section, the SAR imaging model is analyzed by this sparse SFW. 2.2.Synthetic Aperture Radar Imaging Model with Sparse Stepped-Frequency WaveformsThe geometric model for SAR imaging with sparse SFWs is shown in Fig. 1. The SAR system adopts the “stop-and-go” model. The imaging scene is modeled by using the point-scattering model, which includes scatterers with the scattering coefficients , . Assuming that the radar system transmits sparse SFW, the expression of ’th subpulse in a burst of sparse SFW is shown in Eq. (2). Thus, the received echoes can be expressed as where denotes the fast time, denotes the slow time, is the propagation speed of electromagnetic wave, and is the distance of the ’th scatter point to radar at . From the geometry model for SAR imaging as shown in Fig. 1, can be obtained easily:We use the local oscillator signal with a frequency of as the reference signal to demodulate the received echo . The demodulation process can be written as where is the demodulated baseband signal. Sampling is performed after demodulation of the received echo. In order to obtain the maximum amplitude of the echo signal, the echo signal should be sampled at the center of the subpulse. The sampling time should be14 where is the distance between the radar and the center of the imaging scene. The extracted data areIt should be noted that the demodulated signal consisted of two phase terms, the first term of which is linearly related to for a fixed . According to Refs. 14 and 16, if the transmitted signal is full-band SFW, i.e., is uniform, then the range compression can be completed by performing IDFT about . However, in the case of sparse SFW, conventional methods for range compression would generate high side-lobes and grating lobes, which can contaminate the range profiles. Thus, a novel range compression method should be presented. 3.Range Imaging with Sparse Stepped-Frequency Waveforms3.1.Compressed Sensing TheoryLet denotes a finite signal of interest. If there exists a basis matrix satisfying , where is a -sparse vector (namely it can be approximated by its largest coefficients or its coefficients following a power decay law with strongest coefficients17), then can be reduced from -dimension to -dimension {7}, which is expressed as where denotes a measurement matrix and is the measurements’ vector of signal . Generally, recovery of signal from the measurements is an ill-posed problem because of . However, the CS theory tells us that when the matrix has the restricted isometry property (RIP),8 then it is possible to recover the largest coefficients from the measurements . The RIP is a requirement for the convergence of the reconstruction algorithm, and a detailed expression is given as follows:When the RIP holds, the coefficients of signal can be accurately reconstructed from measurements . It is difficult to directly validate a measurement matrix satisfying the RIP constraints given in Ref. 18, but fortunately, the RIP is closely related to an incoherency between and , where the rows of do not provide a sparse representation of the columns of and vice versa. When satisfies the RIP constraints, the coefficients of signal can be reconstructed by solving the following optimization problem: where denotes norm, and min(.) denotes the minimization. How to solve this optimization problem is an important aspect of CS theory. Due to the discontinuousness of norm, it is difficult to solve Eq. (11) by a gradient method. The smoothed (SL0) algorithm, which uses the continuous Gauss function to approach the norm, is proposed in Ref. 19. It has a fast reconstruction speed and high-reconstruction accuracy. Therefore, the SL0 algorithm is adopted to solve the above optimization problem. In the case of a noisy observation, Eq. (11) can be rewritten as where is the noise term. can be obtained by where is at the noise level. A good performance for the reconstruction of is ensured when the signal-to-noise ratio (SNR) is relatively high. Setting a different parameter of , we can extract different amounts of . However, if is large, the small value of may be treated as noise and rejected, and if is small, the noise elements may distort . Thus, the estimation of noise is essential. The Gaussian noise usually distributes evenly, and there are many range cells containing only noise. Given enough noise samples by those pure-noise cells, we can estimate with high accuracy.Clearly, three elements are specified in CS theory: (1) a basis to support sparse representation of the signal; (2) a measurement operator to make the matrix have RIP; and (3) a reconstruction algorithm to solve the optimization problem. 3.2.Range Compression MethodAssume that the transmitted signal is full-band SFW . The echo signal of is processed by Eqs. (6) and (8) in the aforementioned analysis, and can be obtained and expressed as We can perform IDFT for with respect to , and the range profiles of the observed scene can be obtained as where denotes the IDFT function, and is the impulse function in the discrete time domain. Let and . The above IDFT processing can be rewritten as a matrix equation, where is a discrete Fourier transform (DFT) matrix, which can be expressed as where . As to the echo signals of the sparse SFWs, let . From a CS theory point of view, the set can be viewed as a low-dimensional measurement of set , i.e., where denotes the conjugate transposition, and is an -by- random partial unit matrix. Also,That is, the elements in each row vector of are 0, and the ’th element is 1. The physical meaning of is the extraction of the data from the full data. Also, the positions of “1” are according to the positions of the residual frequency points. As discussed in Ref. 20, the randomly selected partial Fourier matrix satisfies RIP. In this paper, the measurement matrix we designed is a random partial unit matrix and the basis matrix is a DFT matrix. Thus, their multiplication is equal to the randomly selected partial DFT matrix, which satisfies RIP. Then we can obtain by solving the following expression: The above optimization problem is solved by the SL0 algorithm, and the range profiles of the observed scene can be obtained, which are expressed as 4.Azimuth Imaging with Sparse Data in the Space Domain4.1.Azimuth Imaging with Full DataIn order to facilitate the subsequent analysis, this section discusses the azimuth imaging with the full data of signal in the space domain. First, to obtain the frequency domain data, the DFT processing is performed in the range direction. The frequency domain data are where is the DFT function. In order to obtain the 2-D frequency domain data, the DFT processing should also be performed in the azimuth direction. It yields where denotes the duration time to illuminate . In order to solve Eq. (23), the principle of stationary phase is introduced. We can obtainAnd thus Submitting of Eq. (25) into Eq. (23), we can obtain where . In order to achieve an imaging process in the azimuth direction, the 2-D signals need to be separated, i.e., the 2-D decoupling method should be utilized. For simplicity, the relative range cell migration error is not considered. Thus, in the third phase term of Eq. (26), is replaced by . Equation (26) can be rewritten asMultiplying Eq. (27) by to compensate the range cell migration error, the 2-D decoupling frequency function can be expressed as After compensating the range cell migration error, Eq. (27) can be rewritten as the following equation: According to Eq. (29), it is not hard to find that the data in the range and azimuth directions have been decoupled, and thus the signal can be processed in each direction. In the azimuth direction, the compression function can be expressed as Therefore, multiplying Eq. (29) by and performing IDFT with respect to , it yields Thus, performing IDFT to signal with respect to , it yields This is the 2-D image of the observed scene by using the full data in the space domain with sparse SFWs. 4.2.Azimuth Imaging with Sparse DataAs mentioned above, it frequently occurs that some of SAR echo data are contaminated or lost in the coherent integration time. Thus, the contaminated data must be abandoned, and the echo data in the space domain are sparse. With these sparse data, the azimuth imaging method presented in Sec. 4.1 cannot be applied. A novel imaging method in this section is proposed by constructing the imaging operator based on the 2-D decoupling frequency function and azimuth compression function. In the actual digital signal processing, the set can be viewed as an -by- matrix, where is the sampled number in the azimuth direction. As to the sparse echo data, the set can be viewed as an -by- matrix, where is the number of the sparse data in the azimuth direction. The sparsity level of the echo data in the space domain is defined as . Let and denote the ’th row of the matrix and , respectively, thus we can obtain where is also a -by- random partial unit matrix. Its expression is as shown in Eq. (19), where the position of “1” is determined by the position of the residual azimuth data. For clarity, we draw Fig. 2 to show the measurement process.The processing of Eqs. (23)–(31) can be rewritten as the following expression: where denotes the performing DFT with respect to , which is the DFT matrix; denotes the performing 2-D decoupling to , which is the diagonal matrix form of ’th row of the 2-D decoupling frequency function ; denotes performing azimuth compression to , which is the diagonal matrix form of ’th row of the azimuth compression factor ; and denotes performing IDFT to , which is the IDFT matrix. denotes the ’th row of signal in Eq. (31). For convenience, let us rewrite Eq. (34) in a matrix form: where the imaging operator . Combined with Eq. (33), it can be obtained thatWhen obeys the RIP, we can obtain by solving the following equation: As discussed in Ref. 20, the randomly selected partial orthogonal matrix satisfies RIP. In this paper, the measurement matrix is a random partial unit matrix. So, if the imaging operator is an orthogonal matrix, obeys the RIP. The imaging operator is an orthogonal matrix. and are the DFT matrix and IDFT matrix, respectively, which are orthogonal matrices. Thus, we have and are the diagonal plural matrices, and we can obtain And further, So the imaging operator is an orthogonal matrix. Furthermore, obeys the RIP. Solving Eq. (37) with , we can obtain the azimuth compression results of sparse echo signals. Then, the imaging result of the observed scene can be achieved after the IDFT process in the range direction. Figure 3 shows a clear flowchart of SAR imaging with 2-D sparsity in the space and frequency domains using SFWs. 5.Experimental Analysis with Simulated and Measured Data5.1.Performance Analysis with Simulated DataIn this section, some simulations are conducted to demonstrate the effectiveness and the feasibility of the proposed method. The geometric relationship between the observed scene and the radar system is the same as that shown in Fig. 1. The observed scene consists of 285 point scatterers and is shown in Fig. 4(a). The distance between the target and the radar is 5 km. The carrier frequency of the radar system is 10 GHz, and the radar wavelength is 0.03 m. The frequency step is 1.5 MHz, and the stepped number is 600. So the total bandwidth of signal is 900 MHz, and the range resolution is about 0.17 m. The velocity of the radar plane is about , and the imaging time is 1.5 s. The aperture of radar is 1 m, so the azimuth resolution is about 0.5 m, which is higher than the range resolution. Figure 4 shows the range profiles and SAR imaging results of the observed scene with full-band SFWs. As to the SFW, the conventional range compression method is based on Fourier transform (FT). However, if we directly apply FT to sparse SFWs processing, then the high side-lobes would be generated, just as shown in Figs. 5(a) and 5(b). The proposed range compression method is based on CS theory, which uses the optimizing method instead of FT to complete range compression. Thus, the high side-lobes can be suppressed, just as shown in Figs. 5(c)–5(e). Comparing Fig. 5(d) with Fig. 5(b), we can find that the high-resolution profile is obtained by the proposed method with sparse SFWs. From Fig. 5(e), it can be noted that the imaging result via using the proposed method is clear and close to that with full data, i.e., Fig. 4(d). The Monte Carlo method is introduced here to further examine the imaging performance of proposed method with different sparsity levels of transmitted signal and different numbers of echo signals. In the paper, the peak signal-to-noise ratio (PSNR) is utilized to evaluate the quality of the reconstructed images.21 The value of PSNR of three different sparsity levels in the frequency domain versus the number of echo signals is shown in Fig. 5(f), where the -axis denotes the number of echo signals. From Fig. 5(f), we can find that when the number of echo signals is smaller than 300, the constraint condition cannot be satisfied {the constraint condition is that the dimension of low measurement satisfies 7}. Therefore, the quality of the reconstructed image would be relatively poor and could no longer be accepted. When the number of echo signals is larger than 300, the imaging quality becomes better as the number increases. When the number increases to 450, the PSNR curves saturate, which means that the quality of the imaging result is steady. With a small number of echo signals, the imaging results either of sparsity level 0.25 or of 0.75 are both relatively poor. Thus, the PSNRs are similar. But at a high number, the imaging quality of sparsity level 0.25 is as good as that of sparsity level 0.5; thus the PSNR curves of sparsity level 0.25 and 0.5 are close to each other. In order to further validate our method, the simulated scene data are utilized in the paper. The imaging parameters are set the same as that of the above simulation. The observed scene is shown as Fig. 6. Figure 7(a) shows the imaging result by using the conventional method with full data. Let the 2-D sparisity levels of the echo data be (0.5, 0.25), (0.5, 0.5), and (0.75, 0.5), respectively. The respective imaging results are shown in Figs. 7(b)–7(d). Visual inspection of these results reveals that the quality of the image is degraded along with the increasing sparsity in accordance with the CS reconstructed theory. However, when the sparisity levels are (0.5, 0.25), the high-quality imaging result is obtained, just as Fig. 8(b). Therefore, the proposed method is valid and feasible. 5.2.Performance Analysis with Measured DataThe real data are currently unavailable, so we have to use the experimental data to validate the proposed method. Hence, an experimental platform is set up as shown in Fig. 8(a). The vector network analyzer (VNA) is mounted on a rail to transmit and receive the SFWs. The horn antenna works at a Ka-band. The imaging scene consists of five metal balls, which are shown in Fig. 8(b). During the experiment, the VNA moves on the rail with preset velocity, while the metal balls are fixed. The length of the rail is 1.89 m. The other experimental parameters are shown in Table 1. Table 1Synthetic aperture radar (SAR) parameters.
Figures 9(a) and 9(b) show the imaging results obtained by using the conventional method with full data. Figure 9(a) is the range profiles, and Fig. 9(b) is the 2-D imaging result. Figures 9(c) and 9(d) show the imaging results obtained by using the proposed method with the 2-D sparse data, the sparsity level of which is (0.5, 0.25). It can be seen that the proposed CS-based imaging method is effective to get a clear SAR image with the reduced measured data. We use the CPU time of recovery as the performance benchmark to evaluate the computational complexity of the proposed and conventional methods. The experiment is run in MATLAB 2007b on a computer with an Intel Pentium 3.1 GHz dual-core processor and 3-GB memory. Regarding the reconstruction time, it requires about 5.2 s to obtain the imaging result by using the proposed method with the sparsity level of (0.5, 0.25), while it requires just about 0.38 s to obtain the conventional imaging result with full data. Although the proposed method needs much more time than the conventional method, the predominance of our method is that a smaller number of frequencies and smaller amount of imaging data are needed for SAR imaging. In the following, we assume that the received signals are corrupted by uncorrelated additive white Gaussian noise. Let SNR be varied from −20 to 30 dB and the 2-D sparsity levels be (0.25, 0.25) and (0.5, 0.25). We show the value of PSNR versus the SNR in Fig. 10. It can be found that the value of PSNR increases with increasing SNR. However, when the SNR is higher than 10 dB, the value of the PSNR varies very slowly. That is, the quality of the reconstructed image roughly remains steady in this SNR value range. 6.ConclusionConventional SFWs have the disadvantages of poor antijamming capability and requiring a long time period of transmission. Thus, the sparse SFWs are formed, which can improve the antijamming capability and shorten the time period. In the SAR integration time, it frequently occurs that some of the echo data are lost. Thus, a 2-D sparse SAR imaging method is put forward. By using the proposed method, SAR imaging result can be obtained with 2-D sparse data both in the frequency and space domains. In this paper, the proposed method takes advantage of the fact that most natural and manmade signals are compressible. Our future work will include using the uncompressible signals to test the algorithm. AcknowledgmentsThis work was supported by the National Natural Science Foundation of China under Nos. 61172169 and 61471386. ReferencesA. S. KhwajaJ. W. Ma,
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BiographyFufei Gu received his MS degree in electrical engineering from the Institute of Information and Navigation, Air Force Engineering University (AFEU), Xi’an, China, in 2011, where he is currently working toward his PhD degree in electrical engineering. He is currently with the Radar and Signal Processing Laboratory, Institute of Information and Navigation, AFEU. His research interests include compressed sensing theory and radar imaging. Qun Zhang (M’02–SM’07) received his MS degree in mathematics from Shaanxi Normal University, Xi’an, China, in 1988, and the PhD degree in electrical engineering from Xidian University, Xi’an, in 2001. He is a senior member of the Chinese Institute of Electronics (CIE), a committee member of the Radiolocation Techniques Branch, CIE. He is currently a professor with the Institute of Information and Navigation, Air Force Engineering University, Xi’an, and an adjunct professor with the Key Laboratory of Wave Scattering and Remote Sensing Information (Ministry of Education), Fudan University, Shanghai, China. Hao Lou received his MS degree in electrical engineering from the Institute of Electronic and Electric, National University of Defense University, Changsha, China, in 2008. Since 2012, he had been working toward his PhD degree in electrical engineering in the Institute of Information and Navigation, Air Force Engineering University. His research interests include radar-communication integration and radar signal processing Zhi’an Li received his MS degree from Naval Engineering University, Wuhan, China, in 2003. He is currently a professor with the Institute of Information and Navigation, Air Force Engineering University, Xi’an. His research interests include airborne radar and navigation. Ying Luo received his MS degree in electrical engineering from the Institute of Telecommunication Engineering, Air Force Engineering University (AFEU), Xi’an, China, in 2008, and the PhD degree in electrical engineering from AFEU, in 2013. He is currently working in the Key Laboratory for Radar Signal Processing, Xidian University, as a postdoctoral fellow. His research interests include signal processing and ATR in SAR and ISAR. |