Litcius/Paper detail

HILCodec: High-Fidelity and Lightweight Neural Audio Codec

Sunghwan Ahn, Beom Jun Woo, Min Hyun Han, Chanyeong Moon, Nam Soo Kim

2024IEEE Journal of Selected Topics in Signal Processing13 citationsDOI

Abstract

The recent advancement of end-to-end neural audio codecs enables compressing audio at very low bitrates while reconstructing the output audio with high fidelity. Nonetheless, such improvements often come at the cost of increased model complexity. In this paper, we identify and address the problems of existing neural audio codecs. We show that the performance of the SEANet-based codec does not increase consistently as the network depth increases. We analyze the root cause of such a phenomenon and suggest a variance-constrained design. Also, we reveal various distortions in previous waveform domain discriminators and propose a novel distortion-free discriminator. The resulting model, <italic xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">HILCodec</i>, is a real-time streaming audio codec that demonstrates state-of-the-art quality across various bitrates and audio types.

Topics & Concepts

CodecComputer scienceSpeech recognitionHigh fidelityFidelityAdaptive Multi-Rate audio codecSpeech codingArtificial intelligenceMultimediaSpeech processingTelecommunicationsVoice activity detectionAcousticsPhysicsSpeech and Audio ProcessingAdvanced Data Compression TechniquesMusic and Audio Processing