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An improved estimation algorithm of the source number with fewer sensors than sources

机译:传感器少于源的源数估计算法的改进

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The estimation of the source number is the foundation and the prerequisite for blind source separation. Most source number estimation algorithms assume that the number of the observed signals is more than that of the source signals. However, these methods are always failed when there are more source signals than observed signals. Traditional blind signal estimation methods for this problem do not have a good accuracy and a strong anti-noise property. This paper considers the problem of mixing matrix estimation in underdetermined blind source separation (UBSS). The application background of the algorithm is the underdetermined speech signal. We propose an improved estimation algorithm for source number based on the potential function clustering. First, short-time Fourier transform is performed to obtain sparser signals. It can remove some noises and redundancy information through the method. Then, we use the algorithm to detect the time-frequency (TF) points occupied by a single source for each source. Finally, we estimate the number of the source signals by designing an improved potential function clustering algorithm to obtain a better accuracy. It estimates the number of the source signals through estimating the local maximum. And the local maximum is estimated by clustering algorithm. Simulation results show that this paper can accurately estimate the source number when there are more source signals than observed signals. And the accuracy can improve evidently under the low signal-to-noise ratio (SNR). Further, the improved potential function clustering algorithm enhances the anti-noise performance and the stability to a certain extent and owns future prospects.
机译:信源数量的估计是盲信源分离的基础和前提。大多数源数目估计算法都假定观测信号的数目大于源信号的数目。但是,当源信号多于观察到的信号时,这些方法总是会失败。针对该问题的传统盲信号估计方法不具有良好的准确性和强的抗噪声特性。本文考虑了欠定盲源分离(UBSS)中混合矩阵估计的问题。该算法的应用背景是不确定的语音信号。我们提出了一种基于势函数聚类的改进的源数估计算法。首先,执行短时傅立叶变换以获得稀疏信号。通过该方法可以消除一些噪声和冗余信息。然后,我们使用该算法来检测单个源对每个源所占用的时频(TF)点。最后,我们通过设计一种改进的势函数聚类算法来估计源信号的数量以获得更好的精度。它通过估计局部最大值来估计源信号的数量。并通过聚类算法估计局部最大值。仿真结果表明,当源信号多于观测信号时,本文可以准确地估计源数目。在低信噪比(SNR)下,精度可以明显提高。进一步,改进的势函数聚类算法在一定程度上提高了抗噪性能和稳定性,具有广阔的应用前景。

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