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Digital signal processing / Code-excited linear prediction / Digital media / Audio codecs / Signal processing / Data compression / Algebraic code-excited linear prediction / Linear predictive coding / Ratedistortion theory / Speech coding / Filter bank / Weighting filter
Date: 2012-04-02 19:01:54
Digital signal processing
Code-excited linear prediction
Digital media
Audio codecs
Signal processing
Data compression
Algebraic code-excited linear prediction
Linear predictive coding
Ratedistortion theory
Speech coding
Filter bank
Weighting filter

IEEE COMSOC MMTC E-Letter Synthesis Filter/Decoder Structures in Speech Codecs Jerry D. Gibson, Electrical & Computer Engineering, UC Santa Barbara, CA, USA Abstract Using the Shannon backward channel

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