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Coherent Processing and Superresolution Technique of Multi-Band Radar Data Based on Fast Sparse Bayesian Learning Algorithm

机译:基于快速稀疏贝叶斯学习算法的多波段雷达数据相干处理和超分辨率技术

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摘要

The coherent processing and superresolution of multi-band radar data from multiple spatially collocated radars is addressed by utilizing a sparse representation technique in this paper. Firstly a parametric model based on geometrical theory of diffraction (GTD) is adopted to construct a redundant dictionary and provide a good match to the scattering mechanism. Then weights of dictionary atoms are computed by using a fast sparse Bayesian learning algorithm. Meanwhile, a multilevel dynamic dictionary is proposed to improve the accuracy and avoid a vast number of computations due to a large dictionary matrix. The final weights and dictionary atoms are adopted to interpolate between and extrapolate outside of the measurement subbands. Furthermore, a procedure for coherent processing is presented to compensate for the lack of mutual coherence among multiband data from multiple spatially collocated radars. The capability and robustness of the proposed method are validated by applying it to the analytical, simulated and static-range data.
机译:利用稀疏表示技术解决了来自多个空间并置雷达的多波段雷达数据的相干处理和超分辨率问题。首先,采用基于衍射几何理论(GTD)的参数模型来构造冗余字典,并与散射机制提供良好的匹配。然后使用快速稀疏贝叶斯学习算法计算字典原子的权重。同时,提出了一种多级动态字典,以提高准确性并避免由于字典矩阵大而导致的大量计算。采用最终权重和字典原子在测量子带之间进行内插和外推。此外,提出了一种相干处理的程序,以补偿来自多个空间并置雷达的多频带数据之间缺乏相互相干性。通过将其应用于分析,模拟和静态范围数据,验证了该方法的功能和鲁棒性。

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