A Mixing Matrix Estimation Algorithm for Speech Signals under the Under-Determined Blind Source Separation Model

The separation of speech signals has become a research hotspot in the field of signal processing in recent years. It has many applications and influences in teleconferencing, hearing aids, speech recognition of machines and so on. The sounds received are usually noisy. The issue of identifying the sounds of interest and obtaining clear sounds in such an environment becomes a problem worth exploring, that is, the problem of blind source separation. This paper focuses on the under-determined blind source separation (UBSS). Sparse component analysis is generally used for the problem of under-determined blind source separation. The method is mainly divided into two parts. Firstly, the clustering algorithm is used to estimate the mixing matrix according to the observed signals. Then the signal is separated based on the known mixing matrix. In this paper, the problem of mixing matrix estimation is studied. This paper proposes an improved algorithm to estimate the mixing matrix for speech signals in the UBSS model. The traditional potential algorithm is not accurate for the mixing matrix estimation, especially for low signal-to noise ratio (SNR).In response to this problem, this paper considers the idea of an improved potential function method to estimate the mixing matrix. The algorithm not only avoids the inuence of insufficient prior information in traditional clustering algorithm, but also improves the estimation accuracy of mixing matrix. This paper takes the mixing of four speech signals into two channels as an example. The results of simulations show that the approach in this paper not only improves the accuracy of estimation, but also applies to any mixing matrix. Keywords—Clustering algorithm, potential function, speech signal, the UBSS model.

[1]  Terrence J. Sejnowski,et al.  Learning Nonlinear Overcomplete Representations for Efficient Coding , 1997, NIPS.

[2]  Yuanqing Li,et al.  Analysis of Sparse Representation and Blind Source Separation , 2004, Neural Computation.

[3]  DeLiang Wang,et al.  Two-Microphone Separation of Speech Mixtures , 2008, IEEE Transactions on Neural Networks.

[4]  Qiang Guo,et al.  A Time-Frequency Domain Underdetermined Blind Source Separation Algorithm for MIMO Radar Signals , 2017, Symmetry.

[5]  Ying-Ke Lei,et al.  An algorithm for underdetermined mixing matrix estimation , 2013, Neurocomputing.

[6]  Xiang Wang,et al.  Semi-Blind Signal Extraction for Communication Signals by Combining Independent Component Analysis and Spatial Constraints , 2012, Sensors.

[7]  Gang Tang,et al.  A Compound Fault Diagnosis for Rolling Bearings Method Based on Blind Source Separation and Ensemble Empirical Mode Decomposition , 2014, PloS one.

[8]  Qian Sun,et al.  Cooperative Localization Algorithm Based on Hybrid Topology Architecture for Multiple Mobile Robot System , 2018, IEEE Internet of Things Journal.

[9]  Mohamed Abd El Aziz,et al.  Nonnegative matrix factorization based on projected hybrid conjugate gradient algorithm , 2015, Signal Image Video Process..

[10]  Shengnan Yan,et al.  Novel mixing matrix estimation approach in underdetermined blind source separation , 2016, Neurocomputing.

[11]  Fang Ye,et al.  A complex mixing matrix estimation algorithm in under-determined blind source separation problems , 2017, Signal Image Video Process..

[12]  Saeid Sanei,et al.  Fast and incoherent dictionary learning algorithms with application to fMRI , 2015, Signal Image Video Process..

[13]  Li Yi-bing A new algorithm for spectrum detection in cognitive radio system , 2011 .

[14]  Tao Jiang,et al.  Conflicting Information Fusion Based on an Improved DS Combination Method , 2017, Symmetry.