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A Mixing Matrix Estimation Algorithm for the Time-Delayed Mixing Model of the Underdetermined Blind Source Separation Problem

机译:未确定的盲源分离问题时延混合模型的混合矩阵估计算法

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摘要

Considering the time-delayed mixing model of the underdetermined blind source separation problem, we propose a novel mixing matrix estimation algorithm in this paper. First, we introduce the short-time Fourier transform (STFT) to transform the mixed signals from the time domain to the time-frequency domain. Second, a neoteric transformation matrix is addressed to construct the linear clustering property of STFT coefficients. Then, a preeminent detection algorithm is raised to identify the single source points. After eliminating the low-energy points and outliers in the time-frequency domain, a potential function of clustering approach is put forward to cluster the single source points and obtain the clustering centers. Finally, the mixing matrix can be estimated through the derivation and calculation. The experimental results validate that the proposed algorithm not only accurately estimates the mixing matrix for the time-delayed mixing model of the underdetermined blind source separation problem but also has certain universality for different array structures. Therefore, both the effectiveness and superiority of the proposed algorithm have been verified.
机译:考虑到不确定的盲源分离问题的时滞混合模型,提出了一种新颖的混合矩阵估计算法。首先,我们引入了短时傅立叶变换(STFT),将混合信号从时域转换到时频域。其次,解决了现代变换矩阵,以构造STFT系数的线性聚类特性。然后,提出了一种卓越的检测算法来识别单个源点。在消除了时频域中的低能量点和离群点之后,提出了一种潜在的聚类方法,对单个源点进行聚类,得到聚类中心。最后,可以通过推导和计算来估计混合矩阵。实验结果证明,该算法不仅可以准确地估计欠定盲源分离问题的时滞混合模型的混合矩阵,而且对于不同的阵列结构具有一定的通用性。因此,已验证了该算法的有效性和优越性。

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