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For efficient coding of speech, it is desirable to separate the slowly and rapidly evolving spectral components to take advantage of their different perceptual qualities. Existing decomposition methods are too inflexible to model transient changes in the speech signals, require high delay or produce a large parameter set that is not scalable to low rates. In this paper, we present a low complexity decomposition method, based on SVD, applied to Waveform Interpolation (WI) coding. This scheme reduced the computational complexity of common SVD method in WI by exploiting the properties of human auditory perception to lower the dimensions of decomposition matrix. This method requires only a single frame of speech and overcomes the substantial delay problems. The quantization solution involves the use of vector quantization on separately decomposed the singular matrix U V and the diagonal matrix of singular values S. The quality of reconstruction speech can be varied according to the scalable decomposition and the bit rate available. ©2004 IEEE.
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Year: 2004
Page: 145-148
Language: English
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 14
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