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NESC: Robust Neural End-2-End Speech Coding with GANs

Nicola Pia, Kishan Chand Gupta, Srikanth Korse, Markus Multrus, Guillaume Fuchs

2022Interspeech 202215 citationsDOI

Abstract

Neural networks have proven to be a formidable tool to tackle the problem of speech coding at very low bit rates. However, the design of a neural coder that can be operated robustly under real-world conditions remains a major challenge. Therefore, we present Neural End-2-End Speech Codec (NESC) a robust, scalable end-to-end neural speech codec for high-quality wideband speech coding at 3 kbps. The encoder uses a new architecture configuration, which relies on our proposed Dual-PathConvRNN (DPCRNN) layer, while the decoder architecture is based on our previous work Streamwise-StyleMelGAN. Our subjective listening tests on clean and noisy speech show that NESC is particularly robust to unseen conditions and signal perturbations.

Topics & Concepts

Computer scienceCodecEncoderAdaptive Multi-Rate audio codecSpeech recognitionWideband audioSpeech codingEnd-to-end principleRobustness (evolution)Artificial neural networkCodec2Coding (social sciences)Voice activity detectionLinear predictive codingSpeech processingArtificial intelligenceAudio signalComputer hardwareMathematicsOperating systemChemistryBiochemistryGeneDigital audioStatisticsSpeech Recognition and SynthesisSpeech and Audio ProcessingNeural Networks and Applications
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