In this paper, the line spectral estimation (LSE) problem with multiple measurement vectors (MMVs) is studied utilizing the Bayesian methods. Motivated by the recently proposed variational line spectral estimation (VALSE) method, we develop the multisnapshot VALSE (MVALSE) for multi snapshot scenarios, which is especially important in array signal processing. The MVALSE shares the advantages of the VALSE method, such as automatically estimating the model order, noise variance, weight variance, and providing the uncertain degrees of the frequency estimates. It is shown that the MVALSE can be viewed as applying the VALSE with single measurement vector (SMV) to each snapshot, and combining the intermediate data appropriately. Furthermore, the Seq-MVALSE is developed to perform sequential estimation. Finally, numerical results are conducted to demonstrate the effectiveness of the MVALSE method, compared to the state-of-the-art methods in the MMVs setting.
翻译:在本文中,利用巴伊西亚方法研究了多测量矢量的线光谱估计问题。根据最近提出的变换线光谱估计方法,我们为多快照情景开发了多光谱VALSE(MIVESE)多射线光谱估计(VALSE),这对阵列信号处理尤其重要。中等光谱估计方法分享了VALSE方法的优点,例如自动估计模型顺序、噪音差异、重量差异和提供频率估计的不确定度。显示可以将最低光谱系统视为对每幅光谱应用VALSE和单一测量矢量(SMV),并适当地将中间数据合并。此外,Seq-MAVALSE是用来进行连续估计的。最后,进行数字结果是为了表明MIVSE方法相对于MVSE设置中的最新方法的有效性。