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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Unambiguous Sparse Recovery of Migrating Targets With a Robustified Bayesian Model
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Unambiguous Sparse Recovery of Migrating Targets With a Robustified Bayesian Model

机译:鲁棒贝叶斯模型对迁移目标的明确稀疏恢复

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摘要

The problem considered is that of estimating unambiguously migrating targets observed with a wideband radar. We extend a previously described sparse Bayesian algorithm to the presence of diffuse clutter and off-grid targets. A hybrid-Gibbs sampler is formulated to jointly estimate the sparse target amplitude vector, the grid mismatch, and the (assumed) autoregressive noise. Results on synthetic and fully experimental data show that targets can be actually unambiguously estimated even if located in blind speeds.
机译:所考虑的问题是估算宽带雷达观测到的明确目标的问题。我们将先前描述的稀疏贝叶斯算法扩展到存在散射杂波和离网目标。制定了混合型Gibbs采样器,以共同估算稀疏目标幅度矢量,网格不匹配和(假定的)自回归噪声。综合和全面实验数据的结果表明,即使位于盲目速度下,也可以准确地估计目标。

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