Publication | Closed Access
Speech compression based on exact modeling and structured total least norm optimization
20
Citations
12
References
2002
Year
Unknown Venue
Exact ModelingEngineeringNew SpeechSpeech EnhancementSpeech RecognitionSpeech CodingRobust Speech RecognitionVoice RecognitionLossless CompressionHealth SciencesSpeech OutputComputer ScienceSpeech CompressionData CompressionDistant Speech RecognitionSpeech SignalSignal ProcessingAll-pole ModelSpeech CommunicationSpeech ProcessingSpeech Perception
We present a new speech coding algorithm, based on an all-pole model of the vocal tract. Whereas current autoregressive (AR) based modeling techniques (e.g. CELP, LPC-10) minimize a prediction error, which is considered to be the input to the all-pole model, our approach determines the closest (in L/sub 2/ norm) signal, which exactly satisfies an all-pole model. Each frame is then encoded by storing the parameters of the complex damped exponentials deduced from the all-pole model and its initial conditions. Decoding is performed by adding the complex damped exponentials based on the transmitted parameters. The new algorithm is demonstrated on a speech signal. The quality is compared with that of a standard coding algorithm at comparable compression ratios, by using the segmental signal-to-noise ratio (SNR).
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