Acoustic Science and Technology Laboratory, Harbin Engineering University, Harbin 150001, China.
Key Laboratory of Marine Information Acquisition and Security (Harbin Engineering University), Ministry of Industry and Information Technology, Harbin 150001, China.
Sensors (Basel). 2019 Dec 26;20(1):163. doi: 10.3390/s20010163.
Direction of arrival (DOA) estimation via sensor array is a crucial component of any passive sonar signal processing technology. In certain practical applications, however, the interested far-field targets are frequently affected by near-field interference, which may result in degradation of DOA estimation. Aiming at the direction estimation problems of far-field targets under strong near-field interference, a unified sparse representation model of far-field and near-field hybrid sources is constructed according to the various correlations in steering vectors between the planar wave and spherical wave in this paper. A high-resolution spatial spectrum reconstruction algorithm based on a sparse Bayesian framework is then exploited to constrain the energy of near-field interference in the preset near-field steering vector over-complete dictionary, thus ensuring the accurate detection and estimation of far-field targets. An expectation-maximization (EM) algorithm approach is introduced to estimate the number of sources and noise power iteratively, which will reduce the dependence of the algorithm on such prior information. Several state-of-art algorithms are mentioned and discussed (Minimum Variance Distortionless Response (MVDR) method, Multiple Signal Classification (MUSIC) algorithm and conventional beamforming (CBF) algorithm) to compare with the one proposed in this manuscript that achieves higher accuracy of estimation and resolution under low SNR level with limited samples, which is verified by simulation and for the results obtained in an experimental case study.
基于传感器阵列的到达方向(DOA)估计是任何被动声纳信号处理技术的关键组成部分。然而,在某些实际应用中,感兴趣的远场目标经常受到近场干扰的影响,这可能导致 DOA 估计的恶化。针对强近场干扰下远场目标的方向估计问题,本文根据平面波和球面波在导向矢量之间的各种相关性,构建了远场和近场混合源的统一稀疏表示模型。然后,利用基于稀疏贝叶斯框架的高分辨率空间谱重构算法,在预设近场导向矢量过完备字典中约束近场干扰的能量,从而确保远场目标的准确检测和估计。引入期望最大化(EM)算法来迭代估计源数和噪声功率,从而减少算法对这些先验信息的依赖。还提到并讨论了几种最先进的算法(最小方差无失真响应(MVDR)方法、多重信号分类(MUSIC)算法和常规波束形成(CBF)算法),与本文提出的算法进行了比较,该算法在有限样本和低 SNR 水平下实现了更高的估计和分辨率精度,这通过仿真和实验案例研究的结果得到了验证。