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Block Sparse Bayesian Learning Using Weighted Laplace Prior for Super-Resolution Estimation of Multi-Path Parameters

机译:在多路径参数的超分辨率估计之前,在使用加权拉普拉斯的速度稀疏贝叶斯学习

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In order to overcome the conventional methods of time delay estimation suffering from low resolution in a multi-path environment, in this paper, we propose block sparse Bayesian learning using weighted Laplace prior (WL-BSBL). We impose the weighted Laplace prior on the TOA. And a greedy iterative strategy is proposed to solve the WL-BSBL model. Furthermore, to improve the computation efficiency, we incorporate block idea into the WL-BSBL model by dividing the potential TOA time domain into connected blocks based on the first few iterations result. WL-BSBL model can take advantage of the active sonar receiving data to estimate the number, time delay, and amplitude of multi-path accurately. The advantages of WL-BSBL include low computation complexity, super-resolution. The simulation results show that WL-BSBL runs fast and retains good performance in low signal-to-noise ratio (SNR) environment.
机译:为了克服多径环境中遭受低分辨率的常规时间延迟估计,在本文中,我们提出了使用加权拉普拉斯(WL-BSBL)的阻止稀疏贝叶斯学习。我们在TOA上施加加权拉普拉斯。提出了一种贪婪的迭代策略来解决WL-BSBL模型。此外,为了提高计算效率,我们通过将潜在的TOA时域划分为基于所连接的块来将块思想与WL-BSBL模型划分为基于第一个迭代结果。 WL-BSBL模型可以利用主动声纳接收数据来准确地估计多路径的数量,时间延迟和幅度。 WL-BSBL的优点包括低计算复杂性,超级分辨率。仿真结果表明,WL-BSBL在低信噪比(SNR)环境中运行快速并保持良好的性能。

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