Low Bit-Rate Speech Coding with VQ-VAE and a WaveNet Decoder
Gârbacea, Cristina, Oord, Aäron van den, Li, Yazhe, Lim, Felicia S C, Luebs, Alejandro, Vinyals, Oriol, Walters, Thomas C
Personal use of this material is permitted. ABSTRACT In order to efficiently transmit and store speech signals, speech codecs create a minimally redundant representation of the input signal which is then decoded at the receiver with the best possible perceptual quality. In this work we demonstrate that a neural network architecture based on VQ-V AE with a WaveNet decoder can be used to perform very low bit-rate speech coding with high reconstruction quality. A prosody-transparent and speaker-independent model trained on the LibriSpeech corpus coding audio at 1.6 kbps exhibits perceptual quality which is around halfway between the MELP codec at 2.4 kbps and AMR-WB codec at 23.05 kbps. In addition, when training on high-quality recorded speech with the test speaker included in the training set, a model coding speech at 1.6 kbps produces output of similar perceptual quality to that generated by AMR-WB at 23.05 kbps.
Oct-14-2019
- Country:
- North America > United States
- Michigan > Washtenaw County
- Ann Arbor (0.04)
- California > San Francisco County
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- Michigan > Washtenaw County
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- Research Report > New Finding (0.46)
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