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Weierstrass approach to blind source separation of multiple nonlinearly mixed signals

Weierstrass approach to blind source separation of multiple nonlinearly mixed signals

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This authors develop a novel technique for blind source separation (BSS) of nonlinearly mixed signals. A new type of nonlinear mixture is derived where a linear mixing matrix is slotted between two layers of multiple mutually inverse nonlinearities. The paper discusses the separability of this new mixing model within the BSS context. This model further culminates to a framework where the separation solution integrates the theory of series reversion with the Weierstrass neural network and the hidden neurons are spanned by a set of mutually inversed activation functions. Simulations have been undertaken to support the theory of the developed scheme and the results indicate promising performance. The proposed method outperforms other tested algorithms in recovering both synthetic and the real-life recorded signals. The method of selecting the optimum order of the Weierstrass series has also been derived and implemented to balance the computational complexity and the accuracy of signal separation.

References

    1. 1)
    2. 2)
      • A. Hyv̈arinen , J. Harhunen , E. Oja . (2001) Independent component analysis.
    3. 3)
    4. 4)
      • A. Hyvarinen , P. Pajunen . Nonlinear independent component analysis: Existence and uniqueness results. Neural Netw. , 3 , 429 - 439
    5. 5)
    6. 6)
      • S. Haykin . Neural networks: a comprehensive foundation.
    7. 7)
    8. 8)
      • Frank, W., Reger, R., Appel, U.U.: `Loudspeaker nonlinearities – analysis and compensation', Proc. Int. Asilomar on Signals, Systems and Computers, 1992, Pacific Grove, California, USA, p. 756–760.
    9. 9)
    10. 10)
    11. 11)
    12. 12)
    13. 13)
      • http://sound.media.mit.edu/ica-bench/.
    14. 14)
      • Solazzi, M., Parisi, R., Uncini, A.: `Blind source separation in nonlinear mixtures by adaptive spline neural network', Proc. Int. Conf. on ICA and Signal Separation, 2001, San Diego, USA, p. 254–259.
    15. 15)
    16. 16)
      • P. Pajunen , A. Hyvarinen , J. Karhunen . Nonlinear blind source separation by self-organising maps. Prog. Neural Inf. Process. , 1207 - 1210
    17. 17)
    18. 18)
    19. 19)
    20. 20)
      • P.M. Morse , H. Feshbach . (1953) Methods of theoretical physics.
    21. 21)
      • I. Stewart . (1989) Galois theory.
    22. 22)
      • W.L. Woo , S.S. Dlay . Neural network approach to blind separation of mono-nonlinearly mixed sources. IEEE Trans. Circuits Syst. 1 Fundam. Theory Appl. , 6 , 1236 - 1247
    23. 23)
    24. 24)
    25. 25)
      • W.L. Woo , S.S. Dlay . Blind separation of nonlinearly mixed signals using maximum likelihood neural network. WSEAS Trans. Syst. , 3 , 675 - 681
    26. 26)
      • Pajunen, P., Karhunen, J.: `A Maximum likelihood approach to nonlinear blind separation', Artificial Neural Networks, Oct. 1997, Lausanne, Switzerland, p. 541–546.
    27. 27)
      • C.D. Cantrell . (2000) Modern mathematical methods for physicists and engineers.
    28. 28)
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