Result Details
Factorized RVQ-GAN For Disentangled Speech Tokenization
Klement Dominik, Ing., FIT (FIT), DCGM (FIT)
Laurent Antoine
Bobos Dominik
Novosad Juraj
Gazdik Peter
Zhang Ellen
Huang Zili
Hussein Amir
Marxer Ricard
Masuyama Yoshiki
Aihara Ryo
Hori Chiori
Germain François G.
Wichern Gordon
Le Roux Jonathan
We propose Hierarchical Audio Codec (HAC), a unified neural speech codec that factorizes its bottleneck into three linguistic levels-acoustic, phonetic, and lexical-within a single model. HAC leverages two knowledge distillation objectives: one from a pre-trained speech encoder (HuBERT) for phoneme-level structure, and another from a text-based encoder (LaBSE) for lexical cues. Experiments on English and multilingual data show that HAC's factorized bottleneck yields disentangled token sets: one aligns with phonemes, while another captures word-level semantics. Quantitative evaluations confirm that HAC tokens preserve naturalness and provide interpretable linguistic information, outperforming single-level baselines in both disentanglement and reconstruction quality. These findings underscore HAC's potential as a unified discrete speech representation, bridging acoustic detail and lexical meaning for downstream speech generation and understanding tasks.
Audio Codec | GAN | RVQ | Speech Tokenization
@inproceedings{BUT199387,
author="{} and Dominik {Klement} and {} and {} and {} and {} and {} and {} and {} and {} and {} and {} and {} and {} and {} and {}",
title="Factorized RVQ-GAN For Disentangled Speech Tokenization",
booktitle="Proceedings of the Annual Conference of the International Speech Communication Association Interspeech",
year="2025",
journal="Interspeech",
pages="3514--3518",
publisher="International Speech Communication Association",
address="Rotterdam, The Netherlands",
doi="10.21437/Interspeech.2025-2612",
url="https://www.isca-archive.org/interspeech_2025/khurana25_interspeech.pdf"
}
Practical verification of the possibility of integrating artificial intelligence for receiving emergency calls using a voice chatbot, developed within the research project BV No. VI20192022169, with technology for receiving emergency communications, MV, 1 VS OPSEC, VK01020132, start: 2023-01-06, end: 2025-10-31, completed