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High Resolution ISAR Imaging Based on Improved Smoothed L0 Norm Recovery Algorithm

  • Feng, Junjie (Key Laboratory of Radar Imaging and Microwave Photonics, Ministry of Education) ;
  • Zhang, Gong (Key Laboratory of Radar Imaging and Microwave Photonics, Ministry of Education)
  • Received : 2015.09.02
  • Accepted : 2015.10.28
  • Published : 2015.12.31

Abstract

In radar imaging, a target is usually consisted of a few strong scatterers which are sparsely distributed. In this paper, an improved sparse signal recovery algorithm based on smoothed l0 (SL0) norm method is proposed to achieve high resolution ISAR imaging with limited pulse numbers. Firstly, one new smoothed function is proposed to approximate the l0 norm to measure the sparsity. Then a single loop step is used instead of two loop layers in SL0 method which increases the searching density of variable parameter to ensure the recovery accuracy without increasing computation amount, the cost function is undated in every loop for the next loop until the termination is satisfied. Finally, the new set of solution is projected into the feasible set. Simulation results show that the proposed algorithm is superior to the several popular methods both in terms of the reconstruction performance and computation time. Real data ISAR imaging obtained by the proposed algorithm is competitive to several other methods.

Keywords

1. Introduction

Inverse synthetic aperture radar (ISAR) imaging has received much attention in the past three decades[1]-[3]. ISAR imaging is widely used in many military and civilian applications, such as target identification and aircraft traffic control. In the conventional ISAR imaging, the observing interval must be long enough so that a high cross-range resolution can be obtained by a coherent integration. To obtain high resolution, ISAR imaging always needs many measurements in range frequency and cross-range time domains. For a long coherent processing interval, the target may moves with maneuvering. If the rotation angle is too large, the Radar Cross Section (RCS) of the scatterer may be time varying which increases the difficulty of coherent processing. So implementing imaging in a short time duration is meaningful.

In recent years, compressive sensing (CS) has become very popular in signal processing[4]-[9]. CS provides a new sampling paradigm which is able to reconstruct the sparse or compressible signals exactly from limited measurements by solving an optimization problem. It is a technique proposed to improve signal separation ability using a prior sparse property information of the signal. Sparsity usually can be measured by lp (0 ≤ p ≤ 1) norm [10]. The sparse signal reovery is a key step in CS. Although l0 norm is better in describing sparsity of noise free case, sparse signal recovery algorithms based on l0 norm are intractable because they are sensitive to noise and need combinatorial search. The reconstruction algorithms based on l1 norm are computational complex, which limits their practical applications. Hence many simpler algorithms, such as orthogonal matching pursuit (OMP) [11][12] are proposed. However, they are iteratively greedy algorithms and do not give good estimation of the sources.

Mohimani et al proposed a smoothed function to approximate l0 norm, then the problem of minimum l0 norm optimization can be transferred to an optimization problem of smoothed functions. The method called smoothed l0 norm (SL0) method[13]. The SL0 method is about two orders of magnitude faster than l1-magic method, while providing better estimation of the source than l1-magic method.

For radar imaging, a target is usually regarded as consist of a few strong scatterers and the distribution of these strong scatterers is sparse in the imaging volume. Then sparse learning methods can be used to improve radar imaging quality[14]-[17], such as SAR/ISAR imaging [18][19], MIMO radar imaging [20][21], and so on.

For ISAR imaging, this has been shown that combining ISAR and sparse learning can improve the 2D image quality with limited measured data[22]. Combination of local sparsity constraint and nonlocal total variation are discussed in [23]. The application of CS to ISAR imaging of moving targets in sea clutter is discussed in [24]. A multi-task Bayesian model is utilized for ISAR in [25]. Fully polarimetric ISAR imaging based on CS is discussed in [26].

In this paper, we proposed a new reconstruction algorithm based on SL0 method to improve ISAR imaging quality. One new continuous sequence is proposed as smoothed function to approach the l0 norm which is suit to measure sparsity. Then one single loop step is used to replace two loop layers in SL0 algorithm which increase the searching density of variable parameters. The proposed algorithm ensures the reconstruction accuracy and the computation amounts don’t increase. By using the improved algorithm, ISAR imaging is more intensive with limited pulse numbers. Real data ISAR images obtained using the proposed method is competitive to the several popular methods.

This paper is organized as follows. Section 2 introduces necessary ISAR model and sparse learning imaging formation. In section 3, the proposed reconstruction algorithm is introduced in detail. Simulation and real data ISAR imaging results are presented in section 4. Finally, section 5 provides the conclusion and discussion.

 

2. ISAR Imaging Model Based On Sparse Learning

In order to facilitate analysis, it can be assumed thatthe translational motion of the target has been completely compensated via conventional methods. During the coherent processing interval (CPI), the radar transmits linear frequency modulation modulated signal can be defined as

where is the fast time, t is the slow time, Δt is the pulse repetition duration, fc is the carrier frequency, γ is the chirp rate, TP is the pulse width, rect(⋅) is the rectangle pulse function. Then the complex echo signal is

where c is the light speech, Ta is the CPI, A is the backward scattering amplitude which can be viewed stationary during the CPI. After the range compression, the received signal can be described as

where λ is the wavelength. At different dwell time t, the received signal has different time delay in the fast time After pulse compression by matched filtering and omitting the constant introduced, the received signal becomes

where f = 2xω/λ, β = 2xα/λ are the Doppler and Doppler rate respectivel. Assuming a distance unit includes K scatterer points, the signal in the range cell corresponding to τ = 2(R0+y)/c by omitting the constant phase term can be written as

where Ak and fk are the k th scattering centers’ reflecting amplitude and Doppler frequency, respectively. n is the additive noise. The time sequence is t = [1 : N]T⋅Δt, Δt = 1/fr, being the time interval, fk is the pulse repetition frequency. N = T/Δt is the number of pulses. Δfd is the Doppler frequency resolution, the sparse Doppler sequence is fd = [1 : Q]⋅Δfd, Q = fr/Δfd, Q is the number of Doppler unit corresponding to Δfd. Thus, the basis matrix can be constructed as Ψ = {φ1,φ2,⋯,φq,⋯,φQ}, φq(t) = exp(-j2πfd(q)t), 0 ≤ q ≤ Q.

Then the received discrete signal equation can be rewritten as

The nonzero components of θ in the sparse vector correspond to the amplitudes of the strong scatterers which are located in the grids. For compressive sensing, the optimization algorithms have been applied for real number. Equation (6) should be transformed into real number case. We divide the signal into the real and imaginary components as follows

where ℜ (⋅) and ℑ (⋅) express the real and imaginary part of the complex vector respectively. So the equation (6) becomes

To solve η, we can use the following sparse optimization strategy

where ε is a small positive number associated with z. p indicates the lp norm. The imaging quality largely depends on reconstruction algorithms, an improved SL0 algorithm is proposed and applied to ISAR imaging. We give a detailed description about the algorithm in the

 

3. The Improve SL0 Imaging Algorithm

To obtain an approximate l0 norm solution, a smoothed function was used to replace the l0 norm in [13]. When a parameter σ approaches zero, the function Gσ(η) approaches l0 norm. A two-layer method was proposed to solve the sparse signal recovery problem. In order to improve the approximation performance of the smoothed function, we propose a continuous sequence as follow

where σ is the variable parameter, ς is a small positive element which ensures the function is continuous and differentiable. It is obvious that

Then denote

where ||η||0 expresses the number of nonzero elements of vector η. According to the definition of l0 norm, we can obtain

A property of Gσ(η) is that when σ → ∞, N-Gσ(η) approaches l2 norm. However, for Fσ,ς(η) when σ → ∞, N-Fσ,ς(η) approaches l1 norm. When σ approximates zero, it approaches l0 norm. For l1 norm can describe sparsity, we can search for the sparse solution with high probability at the beginning of iteration.

Therefore sparse signal recovery algorithm based on function Fσ,ς(η) minimum can be described as

In the proposed algorithm, we use one loop layer to replace two loop layers in SL0 algorithm. For smoothed l0 norm algorithm presented in [13], two layer loop is used to obtain the minimum solution. Generally speaking, if the inner iterative number is large enough, the step size can be small. Actually, obtaining a precise solution in inner loop is not necessary. The aim of inner loop is to provide an initial value for the outer loop. Since the double loop does not need to find out the real point, we use single layer to replace two loop layers and increase the searching density of variable parameter σ at the same time which search a point approaches to the minimum solution in each iteration. The proposed algorithm called ISSL0. We add a step which compare the old cost function and new cost function. If Newfunction is greater than Oldfunction, the loop stops, otherwise, continues to the next loop. When the parameter σ approaches zero, Fσ approaches l0 norm. If New function is greater than Old function, the solution is the minimum point at this time. Then the loop stops which can save the computation amount. The ISSL0 algorithm ensures the reconstruction accuracy and the computation amount don’t increase compared with SL0 algorithm. The gradient projection method is used to project new iteration position to the feasible set. The total ISSL0 optimization algorithm in this paper can be summarized as follows:

Initialization:

1) Let be equal to the minimum l2 norm solution of y = Aη, obtained by

2) Choose a suitable decreasing sequence for {σ}, [σ1,⋯,σJ].

3) Set

4) Newfunction = N - sum(Fσ,ς(η))

Final answer is

In the above algorithm, some initial parameters should be chosen. is the minimum l2 norm solution. In [13], σ1 is chosen as In this paper, σ1 should be chosen as For l0 norm is not suited to express a vector with many small elements, the choice of σJ should not be too small. σJ can be estimated by selecting a few noise samples, selecting the maximum value of and taking the average value. We choose σJ For the choice of step size factor μ, at the beginning of search, we select a larger step size, when the searching point approaches the minimum solution, the step size should decrease. So in our algorithm, we choose step size as μ = β max|η|/10 with the increase of j (loop number), the adjust factor β decreases, then the step size decreases. max|η| term adjusts the step size to match the solution. The size of is M×N. The computational loads of the proposed algorithm are consisted of the step (c) to (d) in step 2) of each iteration. Aη needs MN multiplications in each iteration. So the computational complexity of the proposed method is O(MN).

 

4. Experimental Results

Simulation 1. One Dimensional Synthetic Signals Recovery

The signal model with noise is y = Aη+z, the size of A (M×N) is 128×256, it is constructed by selecting its components from N(0,1). η is the sparse signal, whose nonzero coefficients are uniform 1± random spikes signal. We consider SNR=15, 20,25,30dB conditions. For SL0 method, the numbers of outer loop and inner loop are 20 and 10 respectively. For ISSL0 algorithm, the loop number is 200. The parameter ς = 0.01. The MSE is defined as where η is the true solution and is the estimation value. The experiment was implemented 100 times (with the same parameters, but for different randomly generated sources and coefficient matrices). The computation time , reconstruction probability and MSE are averaged. Fig. 1 shows the average computational time for 15dB SNR case. For other SNR cases, the computational time is similar to this case. From Fig. 1, we can see the computation costs of OMP , SL0 and ISSL0 are less than Bayesian and l1-ls methods.The reconstruction probability and MSE of different methods with different K are shown in Fig. 2 and Fig. 3. The reconstruction probability of different methods decreases gradually with K increases. MSE of different methods increases gradually with K increases. We can see that with the increase of SNR, the performance of l1-ls and ISSL0 methods improve faster than OMP, SL0 and Bayesian methods. The performances of ISSL0 algorithm are competitive with other algorithms especially when SNR is high and K is large.

Fig. 1.Computation costs of different methods

Fig. 2.Correct position estimation for different K (a) SNR=15dB (b)SNR=20dB (c) SNR =25dB, (d) SNR = 30dB

Fig. 3.MSE for different K (a) SNR = 15dB, (b) SNR = 20 dB (c) SNR =25dB, (d) SNR = 30 dB

Simulation 2. ISAR imaging using real data

In this section, a set of real data of the Yak-42 plane is used to demonstrate the performance of the proposed ISAR imaging algorithm. The related parameters descriptions of the radar data are listed as follows: the carrier frequency is 10 GHz with signal bandwidth of 400 MHz, a range resolution is 0.375 m. The pulse repetition frequency is 50 Hz, i.e., 256 pulses are used in this experiment. Two different amounts of pulses (32-snapshot and 64-snapshot) are implemented. The ISAR images are reconstructed with 256 Doppler bins (that means the size of ISAR is 256 × 256) is shown as Fig. 4 (a). The experimental results are compared visually and quantitatively to those images obtained by some sparse signal recovery methods including OMP, Bayesian method with Laplace prior and SL0 methods. From Fig. 4 (b), (c), (d), (e),(f) and Fig. 5. It is noticeable that more amount of pulses generally lead to better imagery results. For 32 snapshots case, images using OMP method has many clutter points. Compared with the other four imaging methods, the proposed ISAR imaging framework generates a better visual quality and has competitive performance.We can see that the ISSL0 method generates a better visual quality and the ISAR imaging is more intensive. The noticeable advantage of the ISSL0 imaging method is that the strong scatterers of the target are extracted well along with fewer false points. The time of 32 snapshots is only one eighth of the original 256 snapshots acquirement time. It is possible to image maneuvering target in a short time duration using sparse signal recovery algorithms.

Fig. 4.(a) ISAR image using 256 samples by FFT method, Reconstructed images using 32 snapshots, (b) OMP (c) Bayesian method (d) l1-ls (e) SL0 (f) ISSL0

Fig. 5.Reconstructed images using 64 snapshots, (a) OMP (b) Bayesian method (c) l1-ls (d)SL0 (e) ISSL0

 

5. Conclusion

In this paper, one improved sparse signal recovery algorithm based on SL0 algorithm is demonstrated to improve ISAR imaging with limited pulse numbers. We propose one new continuous function as smoothed function sequence to approximate l0 norm, then single loop step is used to replace two loop layers in SL0 algorithm to ensure the reconstruction accuracy without increasing computation amounts. Simulation results show that the performance of ISSL0 algorithm is superior than OMP, Bayesian method with Laplace prior, l1-ls and SL0 methods. The real data experiments show the proposed algorithm can improve imaging quality.

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