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Switched Multistage Vector Quantizer
M Satya Sai Ram, Dr.P.Siddaiah, Dr.M.Madhavi Latha
Pages - 172 - 179 | Revised - 30-12-2009 | Published - 31-01-2010
Published in Signal Processing: An International Journal (SPIJ)
MORE INFORMATION
KEYWORDS
Linear Predictive Coding, Hybrid Vector Quantizers, Product Code Vector Quantizers, Code Book Generation
ABSTRACT
This paper investigates the use of a new hybrid vector quantizer called Switched Multi stage vector quantization (SWMSVQ) technique using hard and soft decision schemes, for coding of narrow band speech signals. This technique is a hybrid of Switch vector quantization technique and Multi stage vector quantization technique. SWMSVQ quantizes the linear predictive coefficients (LPC) in terms of the line spectral frequencies (LSF). The spectral distortion performance, computational complexity and memory requirements of SWMSVQ using hard and soft decision schemes are compared with Split vector quantization (SVQ) technique, Multi stage vector quantization (MSVQ) technique, Switched Split vector quantization (SSVQ) technique using hard decision scheme, and Multi Switched Split Vector quantization (MSSVQ) technique using hard decision scheme. From results it is proved that SWMSVQ using soft decision scheme is having less spectral distortion, computational complexity and memory requirements when compared to SVQ, MSVQ, SSVQ and SWMSVQ using hard decision scheme, but high when compared to MSSVQ using hard decision scheme. So from results it is proved that SWMSVQ using soft decision scheme is better when compared to SVQ, MSVQ, SSVQ and SWMSVQ using hard decision schemes in terms of spectral distortion, computational complexity and memory requirements but is having greater spectral distortion, computational complexity and memory requirements when compared to MSSVQ using hard decision.
1 | Manchikalapudi, S. (2011). Hybrid vector quantizers for low bit rate speech coding applications. |
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Atal, B.S, “The history of linear prediction”, IEEE Signal Processing Magazine, Vol. 23, pp.154-161, March 2006. | |
Bastiaan Kleijn., W. Fellow, IEEE, Tom Backstrom., & Paavo Alku, “On Line Spectral Frequencies”, IEEE Signal Processing Letters, Vol.10, no.3, 2003. | |
Gray,R.M., Neuhoff, D.L.. “Quantization”, IEEE Trans. Inform. Theory, pp.2325-2383, 1998. | |
Harma, A. “Linear predictive coding with modified filter structures”, IEEE Trans. Speech Audio Process, Vol. 9, pp.769-777, Nov 2001. | |
Linde ,Y., Buzo , A., & Gray, R.M, “An Algorithm for Vector Quantizer Design”, IEEE Trans.Commun, Vol 28, pp. 84-95, Jan.1980. | |
M.Satya Sai Ram, P. Siddaiah, and M.Madhavi Latha, “Usefullness of Speech Coding in Voice Banking,” Signal Processing: An International Journal, CSC Journals, Vol 3, Issue 4, pp 37- 40, pp. 42-54, Oct 2009. | |
M.Satya Sai Ram., P.Siddaiah., M.MadhaviLatha, “Multi Switched Split Vector Quantization of Narrow Band Speech Signals”, Proceedings World Academy of Science, Engineering and Technology, WASET, Vol.27, pp.236-239, February 2008. | |
M.Satya Sai Ram., P.Siddaiah., M.MadhaviLatha, “Multi Switched Split Vector Quantizer ”, International Journal of Computer, Information, and Systems science, and Engineering, IJCISSE, WASET, Vol.2, no.1, pp.1-6, May 2008. | |
M.Satya Sai Ram., P.Siddaiah., M.MadhaviLatha, “Switched Multi Stage Vector Quantization Using Soft Decision Scheme”, IPCV 2008, World Comp 2008, Las vegas, Nevada, USA, July 2008. | |
P.Kabal and P. Rama Chandran, “The Computation of Line Spectral Frequencies Using Chebyshev polynomials” - IEEE Trans. On Acoustics, Speech Signal Processing, vol 34, no.6, pp. 1419-1426, 1986. | |
Paliwal., K.K, Atal, B.S, “Efficient vector quantization of LPC Parameters at 24 bits/frame”, IEEE Trans. Speech Audio Process, pp.3-14, 1993. | |
Sara Grassi., “Optimized Implementation of Speech Processing Algorithms”, Electronics and Signal Processing Laboratory, Institute of Micro Technology, University of Neuchatel, Breguet2,CH2000 Neuchatel, Switzerland, 1988. | |
Soong, F., & Juang, B, “Line spectrum pair (LSP) and speech data compression”, IEEE International Conference on ICASSP, Vol 9, pp 37- 40, 1984. | |
Stephen, So., & Paliwal, K. K, “Efficient product code vector quantization using switched split vector quantiser”, Digital Signal Processing journal, Elsevier, Vol 17, pp.138-171, Jan 2007. | |
Associate Professor M Satya Sai Ram
CIT - India
m_satyasairam@yahoo.co.in
Professor Dr.P.Siddaiah
KL University - India
Professor Dr.M.Madhavi Latha
JNTU Hyderabad - India
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