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LongCat-Audio-Codec: An Audio Tokenizer and Detokenizer Solution Designed for Speech Large Language Models

17 October 2025
Xiaohan Zhao
Hongyu Xiang
Shengze Ye
Song Li
Zhengkun Tian
Guanyu Chen
Ke Ding
Guanglu Wan
    AuLLM
ArXiv (abs)PDFHTMLGithub (151★)
Main:13 Pages
7 Figures
Bibliography:2 Pages
7 Tables
Appendix:1 Pages
Abstract

This paper presents LongCat-Audio-Codec, an audio tokenizer and detokenizer solution designed for industrial grade end-to-end speech large language models. By leveraging a decoupled model architecture and a multistage training strategy, LongCat-Audio-Codec exhibits robust semantic modeling capabilities, flexible acoustic feature extraction capabilities, and low-latency streaming synthesis capabilities. It encodes speech at an ultra-low frame rate of 16.67 Hz, with a minimum bitrate of 0.43 kbps and a maximum bitrate of 0.87 kbps. Evaluation results demonstrate that LongCat-Audio-Codec achieves strong speech intelligibility and is capable of synthesizing highquality speech at low bitrate, thus effectively balancing coding efficiency and decoding quality. The inference code and model checkpoints of LongCat-Audio-Codec are available at:this https URL.

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