IEEE Trans Neural Netw Learn Syst. 2012 Feb;23(2):306-16. doi: 10.1109/TNNLS.2011.2177475.
This paper presents a new time-frequency (TF) underdetermined blind source separation approach based on Wigner-Ville distribution (WVD) and Khatri-Rao product to separate N non-stationary sources from M(M <; N) mixtures. First, an improved method is proposed for estimating the mixing matrix, where the negative value of the auto WVD of the sources is fully considered. Then after extracting all the auto-term TF points, the auto WVD value of the sources at every auto-term TF point can be found out exactly with the proposed approach no matter how many active sources there are as long as N ≤ 2M-1. Further discussion about the extraction of auto-term TF points is made and finally the numerical simulation results are presented to show the superiority of the proposed algorithm by comparing it with the existing ones.
本文提出了一种新的基于维格纳-维尔分布(WVD)和 Khatri-Rao 积的欠定时频(TF)盲源分离方法,用于从 M(M < N)个混合物中分离 N 个非平稳源。首先,提出了一种改进的混合矩阵估计方法,充分考虑了源的自 WVD 的负值。然后,在提取所有自项 TF 点后,无论有多少个活动源,只要 N ≤ 2M-1,就可以使用提出的方法准确地找到源在每个自项 TF 点的自 WVD 值。进一步讨论了自项 TF 点的提取,最后通过与现有算法进行比较,给出了数值模拟结果,以显示所提出算法的优越性。