ISAR sparse frequency band imaging method based on variation Bayesian learning algorithm

A variational Bayesian, imaging method technology, applied in the field of radar, can solve the problems of noise sensitivity, algorithm performance depends on accuracy, difficult to accurately estimate the model order, etc., to improve imaging resolution, avoid high computational complexity, The effect of improving computational efficiency

Active Publication Date: 2017-09-05
XIDIAN UNIV
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Problems solved by technology

However, this method uses the traditional spectral estimation method, which is sensitive to noise, and the performance of the algorithm depends on the accuracy of the model order estimation, and the model order is difficult to estimate accurately

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  • ISAR sparse frequency band imaging method based on variation Bayesian learning algorithm
  • ISAR sparse frequency band imaging method based on variation Bayesian learning algorithm
  • ISAR sparse frequency band imaging method based on variation Bayesian learning algorithm

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Embodiment Construction

[0034] refer to figure 1 , the implementation steps of the present invention are as follows:

[0035] Step 1, Inverse SAR captures the low-frequency band echo S of the target 1 and high frequency band echo S 2 .

[0036] The low-frequency band and high-frequency band echo of the target recorded by the inverse synthetic aperture radar refers to the reflection of the target on the electromagnetic wave after the electromagnetic waves emitted by the two inverse synthetic aperture radars operating in different frequency bands encounter the target during the propagation process, and the reflected The echo is received by the radar receiver, and the low frequency band echo S of the target is displayed on the radar display 1 and high frequency band echo S 2 .

[0037] Step 2, preprocessing the echoes of the low frequency band and the echoes of the high frequency band, and obtaining the signals after the azimuth pulse pressure of the low frequency band and the high band.

[0038] ...

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Abstract

The invention discloses an ISAR sparse frequency band imaging method based on a variation Bayesian learning algorithm. The ISAR sparse frequency band imaging method based on the variation Bayesian learning algorithm can mainly solve a problem of accurately solving the Bayesian model and realizes high definition imaging of an object under a low signal to noise ratio condition. The ISAR sparse frequency band imaging method comprises steps of 1) receiving ISAR echoes of high and low sub-frequency-bands and performing pre-processing, 2) performing azimuth compression and combination on a signal after pre-processing to obtain observation data, 3) generating a dictionary matrix corresponding to the observation data and using high and low sub-frequency-band distance Doppler images to perform pruning on the dictionary matrix, 4) solving a coefficient vector of an azimuth unit having the echo according to the observation data and the pruned dictionary matrix and reconstructing a full-frequency echo, and 5) performing distance compression on a reconstructed full-frequency-band echo to realize a high definition distance Doppler image. The ISAR sparse frequency band imaging method of the invention realizes high definition two-dimensional ISAR imaging which is good in focusing while reducing imaging complexity, and can be applied to feature extraction and identification of an object.

Description

technical field [0001] The invention belongs to the technical field of radar, and further relates to a sparse frequency band high-resolution two-dimensional ISAR imaging method, which can be used for object shape feature extraction and recognition. Background technique [0002] With the rapid development of Inverse Synthetic Aperture Radar (ISAR), although existing imaging radars can provide higher range resolution, higher resolution is required when observing space objects such as space debris, small satellites, and spacecraft. 2D radar imagery to accurately describe its features. Target Range - The range resolution of the Doppler image is determined by the bandwidth of the transmitted signal. There are two ways to obtain high-range resolution: one is to use ultra-wideband radar, but it has high requirements for hardware systems and requires high cost; the other is to use existing multiple radars in different frequency bands to detect The target is observed at the same ti...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01S13/90
CPCG01S13/904G01S13/9064
Inventor 白雪茹黄萍周峰王格
Owner XIDIAN UNIV
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