The fundamental multidimensional line spectral estimation problem is addressed utilizing the Bayesian methods. Motivated by the recently proposed variational line spectral estimation (VALSE) algorithm, multidimensional VALSE (MDVALSE) is developed. MDVALSE inherits the advantages of VALSE such as automatically estimating the model order, noise variance and providing uncertain degrees of frequency estimates. Compared to VALSE, the multidimensional frequencies of a single component is treated as a whole, and the probability density function is projected as independent univariate von Mises distribution to perform tractable inference. Besides, for the initialization, efficient fast Fourier transform (FFT) is adopted to significantly reduce the computation complexity of MDVALSE. Numerical results demonstrate the effectiveness of the MDVALSE, compared to state-of-art methods.
翻译:利用Bayesian方法解决了基本的多维线谱估计问题,以最近提议的变异线光谱估计算法为动力,开发了多维VALSE(MDVALSE),MDEVESE继承了VALSE的优点,例如自动估计模型顺序、噪音差异和提供不确定的频率估计。与VALSE相比,单个元件的多维频率被作为一个整体处理,概率密度函数被预测为独立的单流盘 von Mises分布,以进行可移动的推论。此外,在初始化方面,还采用了高效快速的四级变换(FFT),以大幅降低MVALSE的计算复杂性。数字结果表明MVALSE的功效与最新方法相比是有效的。