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Disentangled Feature Learning for Real-Time Neural Speech Coding

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arxiv 2211.11960 v2 pith:YPHKFJC6 submitted 2022-11-22 cs.SD cs.LGeess.AS

Disentangled Feature Learning for Real-Time Neural Speech Coding

classification cs.SD cs.LGeess.AS
keywords codingfeaturesspeechneuralaudiodisentangledlearnedlearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently end-to-end neural audio/speech coding has shown its great potential to outperform traditional signal analysis based audio codecs. This is mostly achieved by following the VQ-VAE paradigm where blind features are learned, vector-quantized and coded. In this paper, instead of blind end-to-end learning, we propose to learn disentangled features for real-time neural speech coding. Specifically, more global-like speaker identity and local content features are learned with disentanglement to represent speech. Such a compact feature decomposition not only achieves better coding efficiency by exploiting bit allocation among different features but also provides the flexibility to do audio editing in embedding space, such as voice conversion in real-time communications. Both subjective and objective results demonstrate its coding efficiency and we find that the learned disentangled features show comparable performance on any-to-any voice conversion with modern self-supervised speech representation learning models with far less parameters and low latency, showing the potential of our neural coding framework.

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