Unambiguous ISAR Imaging Method for Complex Maneuvering Group Targets
Abstract
:1. Introduction
- It results in the difficulty of correcting migration through resolution cell (MTRC) [1] for accurate target rotation parameters estimation. Without the Doppler ambiguity, MTRC can be compensated for by methods such as Keystone [1], and only the Doppler diffusion caused by the higher-order phase is considered. In general, the echo of maneuvering targets can be seen as multi-component linear frequency modulation (LFM) signals in the slow-time domain [2]. ISAR imaging methods for LFM signals can be categorized into two types: time–frequency analysis methods, such as Wigner–Ville distribution [2,3,4], Radon–Wigner transform [5,6], and LV’s distribution (LVD) [7,8], and parameter estimation methods, such as matched Fourier transform (MFT) [9,10] and Chirp–Fourier transform [11,12]. With improvement in the maneuverability of the air targets, the echo can be further modeled as m-CPS [13,14]. Most ISAR imaging methods for m-CPS are based on parameter estimation, including cubic phase function (CPF) [15,16,17,18], high-order ambiguity function (HAF) [19,20,21,22,23], and discrete polynomial phase transformation (DPT) [24]. In recent years, some scholars proposed novel methods based on other well-performing time–frequency distributions [25,26,27]. With the Doppler ambiguity, however, MTRCs can no longer be effectively compensated for by the aforementioned methods. This will further cause difficulty in estimating the echo parameters to compensate rotational motion of targets. Therefore, it is of critical value to design an effective parameter estimation algorithm without corrected MTRC.
- Scattering centers with Doppler ambiguity will appear in an incorrect position [28,29], which highlights the necessity of removing the Doppler ambiguity. To our best knowledge, however, few studies focus on dealing with this issue. Dr. Huang and Dr. Zhang [30] presented a hypothesis that Doppler ambiguity removal can be carried out by sparse reconstruction. However, their proposed method has limited effectiveness for the m-CPS model.
2. Materials and Methods
2.1. Signal Model
2.2. Parameters Estimation Based on HIAF–GSCFT
2.3. Doppler Ambiguity Removal Based on MWC
2.4. ISAR Imaging Method Based on HIAF–GSCFT and Doppler Ambiguity Removal
- Step 1
- Obtain by processing the original echo signal using stretch processing;
- Step 2
- Estimate and using HIAF–GSCFT;
- Step 3
- Estimate and with PS, GSCFT, inverse Fourier transform, and the compensation function constructed by the estimated echo parameters;
- Step 4
- Remove the Doppler ambiguity by using the MWC and determine the actual Doppler frequency of the dominant scattering center;
- Step 5
- Estimate the amplitude of the dominant scattering center by the least-squares method as
- Step 6
- Delete the echo of the dominant scattering center from as
- Step 7
- Repeat steps (2)–(6) till the residual energy of the echo reach the energy threshold;
- Step 8
- Reconstruct the echo by
3. Results
3.1. Validation of the Parameters Estimation Method Based on HIAF–GSCFT
3.2. Validation of the Capability of Single Target Imaging
3.3. Validation of Imaging for Complex Maneuvering Group Targets
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
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Frequency | 9.6 GHz |
Bandwidth | 2 GHz |
PRF | 200 Hz |
Pulse width | 60 μs |
Sampling rate | 13 MHz |
Sampling number | 512 |
Target Code | Target 1, 5 | Target 2, 3, 4 |
---|---|---|
Velocity/m/s | 453.78 | 471.24 |
A = Acceleration/m/s2 | 69.81 | 74.17 |
Jerk/ m/s3 | 43.63 | 47.99 |
Rotation angle/◦ | 5.77 | 6.04 |
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Liu, F.; Huang, D.; Guo, X.; Feng, C. Unambiguous ISAR Imaging Method for Complex Maneuvering Group Targets. Remote Sens. 2022, 14, 2554. https://doi.org/10.3390/rs14112554
Liu F, Huang D, Guo X, Feng C. Unambiguous ISAR Imaging Method for Complex Maneuvering Group Targets. Remote Sensing. 2022; 14(11):2554. https://doi.org/10.3390/rs14112554
Chicago/Turabian StyleLiu, Fengkai, Darong Huang, Xinrong Guo, and Cunqian Feng. 2022. "Unambiguous ISAR Imaging Method for Complex Maneuvering Group Targets" Remote Sensing 14, no. 11: 2554. https://doi.org/10.3390/rs14112554
APA StyleLiu, F., Huang, D., Guo, X., & Feng, C. (2022). Unambiguous ISAR Imaging Method for Complex Maneuvering Group Targets. Remote Sensing, 14(11), 2554. https://doi.org/10.3390/rs14112554