Publication | Closed Access
Efficient and Scalable Neural Residual Waveform Coding with Collaborative Quantization
21
Citations
22
References
2020
Year
Unknown Venue
EngineeringMachine LearningNeural NetworkSpeech RecognitionDistributed Source CodingSpeech CodingData ScienceJoint Source-channel CodingRobust Speech RecognitionCoding TheoryHealth SciencesCollaborative QuantizationComputer EngineeringComputer ScienceDeep LearningDistant Speech RecognitionSignal ProcessingQuantization (Signal Processing)Model CompressionShoehorn LpcSpeech Processing
Scalability and efficiency are desired in neural speech codecs, which supports a wide range of bitrates for applications on various devices. We propose a collaborative quantization (CQ) scheme to jointly learn the codebook of LPC coefficients and the corresponding residuals. CQ does not simply shoehorn LPC to a neural network, but bridges the computational capacity of advanced neural network models and traditional, yet efficient and domain-specific digital signal processing methods in an integrated manner. We demonstrate that CQ achieves much higher quality than its predecessor at 9 kbps with even lower model complexity. We also show that CQ can scale up to 24 kbps where it outperforms AMR-WB and Opus. As a neural waveform codec, CQ models are with less than 1 million parameters, significantly less than many other generative models.
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