--- license: apache-2.0 library_name: onnx tags: - audio - audio-tokenizer - neural-codec - moss-tts-family - MOSS Audio Tokenizer - speech-tokenizer - onnx - tensorrt --- # MOSS-Audio-Tokenizer-ONNX This repository provides the **ONNX exports** of [MOSS-Audio-Tokenizer](https://huggingface.co/OpenMOSS-Team/MOSS-Audio-Tokenizer) (encoder & decoder), enabling **torch-free** audio encoding/decoding for the [MOSS-TTS](https://github.com/OpenMOSS/MOSS-TTS) family. ## Overview **MOSS-Audio-Tokenizer** is the unified discrete audio interface for the entire MOSS-TTS Family, based on the **Cat** (**C**ausal **A**udio **T**okenizer with **T**ransformer) architecture — a 1.6B-parameter, pure Causal Transformer audio tokenizer trained on 3M hours of diverse audio. This ONNX repository is designed for **lightweight, torch-free deployment** scenarios. It serves as the audio tokenizer component in the [MOSS-TTS llama.cpp inference backend](https://github.com/OpenMOSS/MOSS-TTS/blob/main/moss_tts_delay/llama_cpp/README.md), which combines [llama.cpp](https://github.com/ggerganov/llama.cpp) (for the Qwen3 backbone) with ONNX Runtime or TensorRT (for the audio tokenizer) to achieve fully **PyTorch-free** TTS inference. ### Supported Backends | Backend | Runtime | Use Case | |---------|---------|----------| | **ONNX Runtime (GPU)** | `onnxruntime-gpu` | Recommended starting point | | **ONNX Runtime (CPU)** | `onnxruntime` | CPU-only / no CUDA | | **TensorRT** | Build from ONNX | Maximum throughput (user-built engines) | > **Note:** We do **not** provide pre-built TensorRT engines, as they are tied to your specific GPU architecture and TensorRT version. To use TRT, build engines from the ONNX models yourself — see `moss_audio_tokenizer/trt/build_engine.sh` in the main repository. ## Repository Contents | File | Description | |------|-------------| | `encoder.onnx` | ONNX model for audio encoding (waveform → discrete codes) | | `decoder.onnx` | ONNX model for audio decoding (discrete codes → waveform) | ## Quick Start ```bash # Download huggingface-cli download OpenMOSS-Team/MOSS-Audio-Tokenizer-ONNX \ --local-dir weights/MOSS-Audio-Tokenizer-ONNX ``` This is typically used together with [MOSS-TTS-GGUF](https://huggingface.co/OpenMOSS-Team/MOSS-TTS-GGUF) for the llama.cpp inference pipeline. See the [llama.cpp Backend documentation](https://github.com/OpenMOSS/MOSS-TTS/blob/main/moss_tts_delay/llama_cpp/README.md) for the full end-to-end setup. ## Main Repositories | Repository | Description | |------------|-------------| | [OpenMOSS/MOSS-TTS](https://github.com/OpenMOSS/MOSS-TTS) | MOSS-TTS Family main repository (includes llama.cpp backend, PyTorch inference, and all models) | | [OpenMOSS/MOSS-Audio-Tokenizer](https://github.com/OpenMOSS/MOSS-Audio-Tokenizer) | MOSS-Audio-Tokenizer source code, PyTorch weights, ONNX/TRT export scripts, and evaluation | | [OpenMOSS-Team/MOSS-Audio-Tokenizer](https://huggingface.co/OpenMOSS-Team/MOSS-Audio-Tokenizer) | PyTorch weights on Hugging Face (for `trust_remote_code=True` usage) | | [OpenMOSS-Team/MOSS-TTS-GGUF](https://huggingface.co/OpenMOSS-Team/MOSS-TTS-GGUF) | Pre-quantized GGUF backbone weights (companion to this ONNX repo) | ## About MOSS-Audio-Tokenizer **MOSS-Audio-Tokenizer** compresses 24kHz raw audio into a 12.5Hz frame rate using a 32-layer Residual Vector Quantizer (RVQ), supporting high-fidelity reconstruction from 0.125kbps to 4kbps. It is trained from scratch on 3 million hours of speech, sound effects, and music, achieving state-of-the-art reconstruction quality among open-source audio tokenizers. For the full model description, architecture details, and evaluation metrics, please refer to: - [MOSS-Audio-Tokenizer GitHub Repository](https://github.com/OpenMOSS/MOSS-Audio-Tokenizer) - [MOSS-TTS README — Audio Tokenizer Section](https://github.com/OpenMOSS/MOSS-TTS#moss-audio-tokenizer) ## Evaluation Metrics The table below compares the reconstruction quality of open-source audio tokenizers with MossAudioTokenizer on speech and audio/music data. - Speech metrics are evaluated on LibriSpeech test-clean (English) and AISHELL-2 (Chinese), reported as EN/ZH. - Audio metrics are evaluated on the AudioSet evaluation subset, while music metrics are evaluated on MUSDB, reported as audio/music. - STFT-Dist. denotes the STFT distance. - Higher is better for speech metrics, while lower is better for audio/music metrics (Mel-Loss, STFT-Dist.). - Nq denotes the number of quantizers. | Model | bps | Frame rate | Nq | Speech: SIM ↑ (EN/ZH) | Speech: STOI ↑ (EN/ZH) | Speech: PESQ-NB ↑ (EN/ZH) | Speech: PESQ-WB ↑ (EN/ZH) | Audio/Music: Mel-Loss ↓ | Audio/Music: STFT-Dist. ↓ | | :---: | :---: | :---: | :---: | :---: | :---: | :---: | :---: | :---: | :---: | | **XCodec2.0** | 800 | 50 | 1 | 0.82 / 0.74 | 0.92 / 0.86 | 3.04 / 2.46 | 2.43 / 1.96 | -- / -- | -- / -- | | **MiMo Audio Tokenizer** | 850 | 25 | 4 | 0.80 / 0.74 | 0.91 / 0.87 | 2.94 / 2.62 | 2.39 / 2.14 | **0.82** / 0.81 | 2.33 / 2.23 | | **Higgs Audio Tokenizer** | 1000 | 25 | 4 | 0.77 / 0.68 | 0.83 / 0.82 | 3.03 / 2.61 | 2.48 / 2.14 | 0.83 / **0.80** | 2.20 / 2.05 | | **SpeechTokenizer** | 1000 | 50 | 2 | 0.36 / 0.25 | 0.77 / 0.68 | 1.59 / 1.38 | 1.25 / 1.17 | -- / -- | -- / -- | | **XY-Tokenizer** | 1000 | 12.5 | 8 | 0.85 / 0.79 | 0.92 / 0.87 | 3.10 / 2.63 | 2.50 / 2.12 | -- / -- | -- / -- | | **BigCodec** | 1040 | 80 | 1 | 0.84 / 0.69 | 0.93 / 0.88 | 3.27 / 2.55 | 2.68 / 2.06 | -- / -- | -- / -- | | **Mimi** | 1100 | 12.5 | 8 | 0.74 / 0.59 | 0.91 / 0.85 | 2.80 / 2.24 | 2.25 / 1.78 | 1.24 / 1.19 | 2.62 / 2.49 | | **MOSS Audio Tokenizer (Ours)** | 750 | 12.5 | 6 | 0.82 / 0.75 | 0.93 / 0.89 | 3.14 / 2.73 | 2.60 / 2.22 | 0.86 / 0.85 | 2.21 / 2.10 | | **MOSS Audio Tokenizer (Ours)** | 1000 | 12.5 | 8 | **0.88** / **0.81** | **0.94** / **0.91** | **3.38** / **2.96** | **2.87** / **2.43** | **0.82** / **0.80** | **2.16** / **2.04** | | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | | **DAC** | 1500 | 75 | 2 | 0.48 / 0.41 | 0.83 / 0.79 | 1.87 / 1.67 | 1.48 / 1.37 | -- / -- | -- / -- | | **Encodec** | 1500 | 75 | 2 | 0.60 / 0.45 | 0.85 / 0.81 | 1.94 / 1.80 | 1.56 / 1.48 | 1.12 / 1.04 | 2.60 / 2.42 | | **Higgs Audio Tokenizer** | 2000 | 25 | 8 | 0.90 / 0.83 | 0.85 / 0.85 | 3.59 / 3.22 | 3.11 / 2.73 | 0.74 / 0.70 | 2.07 / 1.92 | | **SpeechTokenizer** | 2000 | 50 | 4 | 0.66 / 0.50 | 0.88 / 0.80 | 2.38 / 1.79 | 1.92 / 1.49 | -- / -- | -- / -- | | **Qwen3 TTS Tokenizer** | 2200 | 12.5 | 16 | **0.95** / 0.88 | **0.96** / 0.93 | 3.66 / 3.10 | 3.19 / 2.62 | -- / -- | -- / -- | | **MiMo Audio Tokenizer** | 2250 | 25 | 12 | 0.89 / 0.83 | 0.95 / 0.92 | 3.57 / 3.25 | 3.05 / 2.71 | **0.70** / **0.68** | 2.21 / 2.10 | | **Mimi** | 2475 | 12.5 | 18 | 0.89 / 0.76 | 0.94 / 0.91 | 3.49 / 2.90 | 2.97 / 2.35 | 1.10 / 1.06 | 2.45 / 2.32 | | **MOSS Audio Tokenizer (Ours)** | 1500 | 12.5 | 12 | 0.92 / 0.86 | 0.95 / 0.93 | 3.64 / 3.27 | 3.20 / 2.74 | 0.77 / 0.74 | 2.08 / 1.96 | | **MOSS Audio Tokenizer (Ours)** | 2000 | 12.5 | 16 | **0.95** / **0.89** | **0.96** / **0.94** | **3.78** / **3.46** | **3.41** / **2.96** | 0.73 / 0.70 | **2.03** / **1.90** | | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | **—** | | **DAC** | 3000 | 75 | 4 | 0.74 / 0.67 | 0.90 / 0.88 | 2.76 / 2.47 | 2.31 / 2.07 | 0.86 / 0.83 | 2.23 / 2.10 | | **MiMo Audio Tokenizer** | 3650 | 25 | 20 | 0.91 / 0.85 | 0.95 / 0.93 | 3.73 / 3.44 | 3.25 / 2.89 | 0.66 / 0.65 | 2.17 / 2.06 | | **SpeechTokenizer** | 4000 | 50 | 8 | 0.85 / 0.69 | 0.92 / 0.85 | 3.05 / 2.20 | 2.60 / 1.87 | -- / -- | -- / -- | | **Mimi** | 4400 | 12.5 | 32 | 0.94 / 0.83 | 0.96 / 0.94 | 3.80 / 3.31 | 3.43 / 2.78 | 1.02 / 0.98 | 2.34 / 2.21 | | **Encodec** | 4500 | 75 | 6 | 0.86 / 0.75 | 0.92 / 0.91 | 2.91 / 2.63 | 2.46 / 2.15 | 0.91 / 0.84 | 2.33 / 2.17 | | **DAC** | 6000 | 75 | 8 | 0.89 / 0.84 | 0.95 / 0.94 | 3.75 / 3.57 | 3.41 / 3.20 | **0.65** / **0.63** | 1.97 / 1.87 | | **MOSS Audio Tokenizer (Ours)** | 3000 | 12.5 | 24 | 0.96 / 0.92 | **0.97** / **0.96** | 3.90 / 3.64 | 3.61 / 3.20 | 0.69 / 0.66 | 1.98 / 1.84 | | **MOSS Audio Tokenizer (Ours)** | 4000 | 12.5 | 32 | **0.97** / **0.93** | **0.97** / **0.96** | **3.95** / **3.71** | **3.69** / **3.30** | 0.68 / 0.64 | **1.96** / **1.82** | ### LibriSpeech Speech Metrics (MOSS Audio Tokenizer vs. Open-source Tokenizers) The plots below compare our MOSS Audio Tokenizer model with other open-source speech tokenizers on the LibriSpeech dataset, evaluated with SIM, STOI, PESQ-NB, and PESQ-WB (higher is better). We control the bps of the same model by adjusting the number of RVQ codebooks used during inference.
SIM
STOI
PESQ-NB
PESQ-WB
## Citation If you use this code or result in your paper, please cite our work as: ```tex ```