Improved Variational Bayes for Space-Time Adaptive Processing.

IF 2.1 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
Entropy Pub Date : 2025-02-26 DOI:10.3390/e27030242
Kun Li, Jinyang Luo, Peng Li, Guisheng Liao, Zhixiang Huang, Lixia Yang
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引用次数: 0

Abstract

To tackle the challenge of enhancing moving target detection performance in environments characterized by small sample sizes and non-uniformity, methods rooted in sparse signal reconstruction have been incorporated into Space-Time Adaptive Processing (STAP) algorithms. Given the prominent sparse nature of clutter spectra in the angle-Doppler domain, adopting sparse recovery algorithms has proven to be a feasible approach for accurately estimating high-resolution spatio-temporal two-dimensional clutter spectra. Sparse Bayesian Learning (SBL) is a pivotal tool in sparse signal reconstruction and has been previously utilized, yet it has demonstrated limited success in enhancing sparsity, resulting in insufficient robustness in local fitting. To significantly improve sparsity, this paper introduces a hierarchical Bayesian prior framework and derives iterative parameter update formulas through variational inference techniques. However, this algorithm encounters significant computational hurdles during the parameter update process. To overcome this obstacle, the paper proposes an enhanced Variational Bayesian Inference (VBI) method that leverages prior information on the rank of the temporal clutter covariance matrix to refine the parameter update formulas, thereby significantly reducing computational complexity. Furthermore, this method fully exploits the joint sparsity of the Multiple Measurement Vector (MMV) model to achieve greater sparsity without compromising accuracy, and employs a first-order Taylor expansion to eliminate grid mismatch in the dictionary. The research presented in this paper enhances the moving target detection capabilities of STAP algorithms in complex environments and provides new perspectives and methodologies for the application of sparse signal reconstruction in related fields.

为了应对在样本量小和不均匀的环境中提高移动目标探测性能的挑战,人们在时空自适应处理(STAP)算法中采用了以稀疏信号重建为基础的方法。鉴于角度-多普勒域中杂波频谱的显著稀疏性,采用稀疏恢复算法已被证明是准确估计高分辨率时空二维杂波频谱的可行方法。稀疏贝叶斯学习(SBL)是稀疏信号重构的重要工具,以前也曾使用过,但它在增强稀疏性方面的成功率有限,导致局部拟合的鲁棒性不足。为了显著改善稀疏性,本文引入了分层贝叶斯先验框架,并通过变分推理技术推导出迭代参数更新公式。然而,这种算法在参数更新过程中会遇到很大的计算障碍。为了克服这一障碍,本文提出了一种增强型变异贝叶斯推理(VBI)方法,该方法利用时间杂波协方差矩阵秩的先验信息来完善参数更新公式,从而大大降低了计算复杂度。此外,该方法充分利用了多测量矢量(MMV)模型的联合稀疏性,在不影响精度的情况下实现了更高的稀疏性,并采用一阶泰勒扩展消除了字典中的网格不匹配。本文介绍的研究增强了 STAP 算法在复杂环境中的移动目标检测能力,并为稀疏信号重建在相关领域的应用提供了新的视角和方法。
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来源期刊
Entropy
Entropy PHYSICS, MULTIDISCIPLINARY-
CiteScore
4.90
自引率
11.10%
发文量
1580
审稿时长
21.05 days
期刊介绍: Entropy (ISSN 1099-4300), an international and interdisciplinary journal of entropy and information studies, publishes reviews, regular research papers and short notes. Our aim is to encourage scientists to publish as much as possible their theoretical and experimental details. There is no restriction on the length of the papers. If there are computation and the experiment, the details must be provided so that the results can be reproduced.
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