| Literature DB >> 30347854 |
Zekun Jiao1,2,3, Chibiao Ding4,5,6, Longyong Chen7,8,9, Fubo Zhang10,11,12.
Abstract
The problem of synthesis scatterers in inverse synthetic aperture radar (ISAR) make it difficult to realize high-resolution three-dimensional (3D) imaging. Radar array provides an available solution to this problem, but the resolution is restricted by limited aperture size and number of antennas, leading to deterioration of the 3D imaging performance. To solve these problems, we propose a novel 3D imaging method with an array ISAR system based on sparse Bayesian inference. First, the 3D imaging model using a sparse linear array is introduced. Then the elastic net estimation and Bayesian information criterion are introduced to fulfill model order selection automatically. Finally, the sparse Bayesian inference is adopted to realize super-resolution imaging and to get the 3D image of target of interest. The proposed method is used to process real radar data of a Ku band array ISAR system. The results show that the proposed method can effectively solve the problem of synthesis scatterers and realize super-resolution 3D imaging, which verify the practicality of our proposed method.Entities:
Keywords: array ISAR; elastic net regression; sparse Bayesian inference; synthesis scatterers; three-dimensional imaging
Year: 2018 PMID: 30347854 PMCID: PMC6210756 DOI: 10.3390/s18103563
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The 3D imaging geometry of array ISAR. (a) Overview of the ISAR imaging geometry; (b) the imaging model in the range-elevation plane.
Figure 2Flowchart of proposed array ISAR 3D imaging method.
Array ISAR system configuration.
| Parameter | Symbol | Value |
|---|---|---|
| Carrier frequency |
| 15 GHz |
| Bandwidth |
| 500 MHz |
| Pulse repetition frequency |
| 1 KHz |
| Velocity of plane |
| 63.5 m/s |
| Reference range |
| 836.4 m |
| Number of APCs |
| 8 |
| Maximum baseline |
| 1.31 m |
Figure 3Array ISAR system configuration and ISAR images. (a) array ISAR system; (b) observed airplane; (c) distribution of APCs; (d) ISAR image by one of the channel.
Figure 4Model order selection results. (a) Initial result of the elastic net regression; (b) relations between model order K and the objective function; (c) optimized result after using BIC criterion.
Figure 5Super-resolution factor versus different .
Figure 6Super-resolution factor versus different kind of error (a) SR factor with respect to different phase error; (b) SR factor with respect to different amplitude error.
Polynomial approximation of the SR factors as a function of P*SNR, phase error and amplitude error.
| Zero-Order | 1st Order | 2nd Order | 3rd Order | 4th Order | 5th Order | |
|---|---|---|---|---|---|---|
| −10.091 | 1.0498 | 0.099758 | −0.011345 | 2.8687 × 10−4 | 0 | |
| Phase error | 25.083 | −14.242 | 3.797 | −0.17337 | −0.097998 | 0.012569 |
| Amplitude error | 31.017 | −35.754 | 13.942 | −0.55709 | −0.71587 | 0.10677 |
Figure 7Comparison of reconstructed reflectivity profiles in elevation direction between proposed method and SVD-Wiener. (a) Scatterers’ distance 3 m, SNR = 10 dB, BCRB = 0.1875 m; (b) Scatterers’ distance 0.63 m, SNR = 20 dB, BCRB = 0.0593 m.
Figure 8Comparison between RMSE and BCRB under different SNRs.
Figure 93D point cloud by proposed method. (a) Result without point cloud filtering; (b) Result after point cloud filtering based on k-nearest neighbor.
Figure 103D reconstruction results of airplane with Ku band array ISAR system.