A new approach for blind source separation using time frequencydistributions

نویسنده

  • Adel Belouchrani
چکیده

This paper deals with the problem of blind source separation which consists of recovering a set of signals from instantaneous linear mixtures of them. So far, this problem has been solved using statistical information available on the source signals. Here, we propose an approach for blind source separation based on time-frequency (t-f) signal representations. This approach is based on a `joint diagonalization' of a combined set of time frequency distribution matrices which correspond to diierent t-f points. It relies on the diierence in the t-f signatures of the sources to be separated. In contrast to existing techniques, the proposed approach allows the separation of Gaussian sources with identical spectra shape. Because of changes incurred in the t-f signal structures due to time-delay, the new approach can be employed to separate multipath signals received by multi-sensor array. Moreover, the eeects of spreading the noise power while localizing the source energy in the time frequency domain amounts to increasing the signal to noise ratio (SNR) and hence improved performance. Numerical examples are provided to illustrate the eeectiveness of our method.

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References in Blind Separtion & Identification, and Control Theory

A linear prediction-like algorithm for passive localization of near-field sources, [5] K. Abed Meraim and Y. Hua, " Blind identification of multi-input multi-output system using minimum noise subspace, " IEEE Trans. On subspace methods for blind identification of single-input multiple-output FIR systems, " IEEE Trans. Blind source separation using second order cyclostationary statistics, " IEEE...

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تاریخ انتشار 2007