Revisiting The Linear Prediction Analysis-By-Synthesis Speech Coding Pa Digm Using Real-Time Convex Optimization

ACSSC(2018)

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摘要
In this work, we propose a novel approach to speech coding by rewriting the nonlinear analysis-by-synthesis linear prediction scheme as a convex problem. This allows for detennining trade-offs between, on one hand, the reconstruction error and, on the other, the sparsity of the predictor and the residual used to parametrize the speech signal. Differently from traditional coding schemes where the parameters are chosen throughout multiple optimization stages, our scheme produces a one-shot parametrization of a speech segment that intrinsically takes into consideration the voiced or unvoiced nature of a speech segment providing a better balance between residual and predictor and, consequently, a more appropriate bit allocation.
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关键词
Sparse linear prediction,convex optimization,real-time implementation,speech coding
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