| | --- |
| | pipeline_tag: text-to-speech |
| | datasets: |
| | - facebook/multilingual_librispeech |
| | language: |
| | - en |
| | --- |
| | # FlexiCodec: A Dynamic Neural Audio Codec for Low Frame Rates |
| |
|
| | [](https://flexicodec.github.io/) |
| | [](https://arxiv.org/abs/2510.00981) |
| |
|
| |
|
| | ## Abstract |
| | Neural audio codecs are foundational to speech language models. It is expected to have a low frame rate and decoupled semantic and acoustic information. A lower frame rate codec can reduce the computational cost of speech language models by shortening the sequence length. Recent studies have developed 12.5Hz low-frame-rate audio codecs, but even lower frame rate codecs remain underexplored. We find that a major challenge for very low frame rate tokens is missing semantic information. This paper introduces FlexiCodec to address this limitation. FlexiCodec improves semantic preservation with a dynamic frame rate approach and introduces a novel architecture featuring an ASR feature-assisted dual stream encoding and Transformer bottlenecks. With dynamic frame rates, it uses less frames at information-sparse regions through adaptively merging semantically similar frames. A dynamic frame rate also allows FlexiCodec to support inference-time controllable frame rates between 3Hz and 12.5Hz. Experiments on 6.25Hz, 8.3Hz and 12.5Hz average frame rates confirm that FlexiCodec excels over baseline systems in semantic information preservation and delivers a high audio reconstruction quality. We also validate the effectiveness of FlexiCodec in language model-based TTS. |
| |  |
| |
|
| | ## Installation |
| | ```bash |
| | git clone https://github.com/amphionspace/FlexiCodec.git |
| | cd FlexiCodec |
| | pip install -r requirements.txt |
| | ``` |
| | <!-- # pip install -e . --> |
| |
|
| | ## FlexiCodec |
| | Code is available under [`flexicodec/modeling_flexicodec.py`](flexicodec/modeling_flexicodec.py). |
| |
|
| | To run inference (automatically downloads checkpoint from huggingface): |
| | ```python |
| | import torch |
| | import torchaudio |
| | from flexicodec.infer import prepare_model, encode_flexicodec |
| | |
| | model_dict = prepare_model() |
| | |
| | # Load a real audio file |
| | audio_path = "YOUR_WAV.wav" |
| | audio, sample_rate = torchaudio.load(audio_path) |
| | with torch.no_grad(): |
| | encoded_output = encode_flexicodec(audio, model_dict, sample_rate, num_quantizers=8, merging_threshold=0.91) |
| | |
| | reconstructed_audio = model_dict['model'].decode_from_codes( |
| | semantic_codes=encoded_output['semantic_codes'], |
| | acoustic_codes=encoded_output['acoustic_codes'], |
| | token_lengths=encoded_output['token_lengths'], |
| | ) |
| | |
| | duration = audio.shape[-1] / sample_rate |
| | output_path = 'decoded_audio.wav' |
| | torchaudio.save(output_path, reconstructed_audio.cpu().squeeze(1), 16000) |
| | |
| | print(f"Saved decoded audio to {output_path}") |
| | print(f"This sample avg frame rate: {encoded_output['token_lengths'].shape[-1] / duration:.4f} frames/sec") |
| | ``` |
| |
|
| | Notes: |
| | - You may tune the `num_quantizers=xxx` (maximum 24), `merging_threshold=xxx` (maximum 1.0) parameters. If you set `merging_threshold=1.0`, it will be a standard 12.5Hz neural audio codec. All of its `token_lengths` items will be 1. |
| |
|
| | - For mainland China users, you might need to execute `export HF_ENDPOINT=https://hf-mirror.com` in terminal, before running the code. If you don't want to automatically download from huggingface, you can manually specify your downloaded checkpoint paths [](https://huggingface.co/jiaqili3/flexicodec/tree/main) in `prepare_model`. |
| |
|
| |
|
| | - Batched input is supported. You can directly pass audios shaped [B,T] to the script above, but the audio length information will be unavailable. |
| | To resolve this, you can additionally pass an `audio_lens` parameter to `encode_flexicodec`, and you can crop the output for each audio in `encoded_output[speech_token_len]`. |
| |
|
| | - If you want to use the above code elsewhere, you might want to add `sys.path.append('/path/to/FlexiCodec')` to find the code. |
| |
|
| | - To extract continuous features from the semantic tokens, use: |
| | ```python |
| | feat = model_dict['model'].get_semantic_feature(encoded_output['semantic_codes']) |
| | ``` |
| |
|
| | ## FlexiCodec-TTS |
| | First, install additional dependencies: |
| | ```bash |
| | sudo apt install espeak-ng |
| | pip install cached_path phonemizer openai-whisper |
| | ``` |
| |
|
| | ### FlexiCodec-based Voicebox NAR Inference |
| | The VoiceBox NAR system can decode FlexiCodec's RVQ-1 tokens into speech. It is used as the second stage in FlexiCodec-TTS, but can also be used standalone. |
| | To run NAR TTS inference using FlexiCodec-Voicebox: |
| |
|
| | ```python |
| | import torch |
| | import torchaudio |
| | from flexicodec.nar_tts.inference_voicebox import ( |
| | prepare_voicebox_model, |
| | infer_voicebox_tts |
| | ) |
| | import cached_path |
| | # Prepare model (loads model and vocoder) |
| | checkpoint_path = cached_path('hf://jiaqili3/flexicodec/nartts.safetensors') |
| | model_dict = prepare_voicebox_model(checkpoint_path) |
| | |
| | # Option 1: Inference with audio file paths |
| | gt_audio_path = "audio_examples/61-70968-0000_gt.wav" # Target content. Example GT audio |
| | ref_audio_path = "audio_examples/61-70968-0000_ref.wav" # Reference voice/style. |
| | |
| | output_audio, output_sr = infer_voicebox_tts( |
| | model_dict=model_dict, |
| | gt_audio_path=gt_audio_path, |
| | ref_audio_path=ref_audio_path, |
| | n_timesteps=15, # Number of diffusion steps (default: 15) |
| | cfg=2.0, # Classifier-free guidance scale (default: 2.0) |
| | rescale_cfg=0.75, # CFG rescaling factor (default: 0.75) |
| | merging_threshold=1.0 # Merging threshold for frame rate control (default: 1.0, max: 1.0) |
| | ) |
| | |
| | # Save output |
| | torchaudio.save("output.wav", output_audio.unsqueeze(0) if output_audio.dim() == 1 else output_audio, output_sr) |
| | |
| | # Option 2: Inference with audio tensors |
| | gt_audio, gt_sr = torchaudio.load("path/to/ground_truth.wav") |
| | ref_audio, ref_sr = torchaudio.load("path/to/reference.wav") |
| | |
| | output_audio, output_sr = infer_voicebox_tts( |
| | model_dict=model_dict, |
| | gt_audio=gt_audio, |
| | ref_audio=ref_audio, |
| | gt_sample_rate=gt_sr, |
| | ref_sample_rate=ref_sr, |
| | n_timesteps=15, |
| | cfg=2.0, |
| | rescale_cfg=0.75, |
| | merging_threshold=1.0 |
| | ) |
| | ``` |
| |
|
| | **Notes:** |
| | - The model automatically detects and uses CUDA, MPS (Apple Silicon), or CPU devices |
| | - Ground truth audio (`gt_audio`) determines the semantic content of the output |
| | - Reference audio (`ref_audio`) determines the voice/style characteristics |
| | - Output sample rate is typically 16000 Hz or 24000 Hz depending on the model configuration |
| | - You can reuse `model_dict` for multiple inference calls to avoid reloading the model |
| | - `merging_threshold` controls FlexiCodec's dynamic frame rate: lower values (e.g., 0.87, 0.91) enable merging for lower average frame rates, while 1.0 disables merging (standard 12.5Hz) |
| |
|
| | ### FlexiCodec-based AR+NAR TTS Inference |
| | The AR+NAR TTS system generates speech tokens from text using an autoregressive transformer model, and then uses the Voicebox NAR system to decode the tokens into audio. |
| |
|
| | To perform complete text-to-speech with both AR generation and NAR decoding: |
| |
|
| | ```python |
| | import torch |
| | import torchaudio |
| | from flexicodec.ar_tts.inference_tts import tts_synthesize |
| | from flexicodec.ar_tts.modeling_artts import prepare_artts_model |
| | from flexicodec.nar_tts.inference_voicebox import prepare_voicebox_model |
| | import cached_path |
| | |
| | # Prepare both AR and NAR models |
| | ar_checkpoint = cached_path('hf://jiaqili3/flexicodec/artts.safetensors') |
| | nar_checkpoint = cached_path('hf://jiaqili3/flexicodec/nartts.safetensors') |
| | |
| | ar_model_dict = prepare_artts_model(ar_checkpoint) |
| | nar_model_dict = prepare_voicebox_model(nar_checkpoint) |
| | |
| | # Full TTS synthesis |
| | output_audio, output_sr = tts_synthesize( |
| | ar_model_dict=ar_model_dict, |
| | nar_model_dict=nar_model_dict, |
| | text="Hello, this is a complete text-to-speech example.", |
| | language="en", |
| | ref_audio_path="audio_examples/61-70968-0000_ref.wav", # Reference voice |
| | ref_text="bear us escort so far as the Sheriff's house", # Optional reference text |
| | merging_threshold=0.91, # Frame rate control (used for both AR and NAR) |
| | beam_size=1, |
| | top_k=25, |
| | temperature=1.0, |
| | predict_duration=True, |
| | duration_top_k=1, |
| | n_timesteps=15, # NAR diffusion steps |
| | cfg=2.0, # NAR classifier-free guidance |
| | rescale_cfg=0.75, # NAR CFG rescaling |
| | use_nar=True, # Set to False for AR-only decoding |
| | ) |
| | |
| | # Save output |
| | torchaudio.save("output.wav", output_audio.unsqueeze(0) if output_audio.dim() == 1 else output_audio, output_sr) |
| | ``` |
| |
|
| | **Notes:** |
| | - `tts_synthesize` performs the full pipeline: AR generation + NAR decoding to audio |
| | - Reference audio (`ref_audio_path`) provides the voice/style characteristics |
| | - Reference text (`ref_text`) is optional and can help with prosody alignment |
| | - Set `use_nar=False` in `tts_synthesize` to use AR-only decoding (faster but lower quality) |
| |
|
| | ### Training reference implementations |
| | Inside `flexicodec/ar_tts/modeling_artts.py` and `flexicodec/nar_tts/modeling_voicebox.py` there are `training_forward` methods that receive audios and prepared sensevoice-small input "FBank" features. (`dl_output` dictionary containing `x` (the [`feature_extractor`](flexicodec/infer.py#L50) output), `x_lens` (length of each x before padding), `audio` (the 16khz audio tensor)). |
| | Training can be replicated by passing the same data to the `training_forward` methods. |
| |
|
| |
|
| |
|
| | ## Acknowledgements & Citation |
| | - Our codebase setup is based on [DualCodec](https://github.com/jiaqili3/DualCodec) |
| | - We thank the [Mimi Codec](https://github.com/kyutai-labs/moshi) for transformer implementations |
| |
|
| | If you find our works useful, please consider citing as: |
| | ```biblatex |
| | @article{li2025flexicodec, |
| | title={FlexiCodec: A Dynamic Neural Audio Codec for Low Frame Rates}, |
| | author={Li, Jiaqi and Qian, Yao and Hu, Yuxuan and Zhang, Leying and Wang, Xiaofei and Lu, Heng and Thakker, Manthan and Li, Jinyu and Zhao, Shang and Wu, Zhizheng}, |
| | journal={arXiv preprint arXiv:2510.00981}, |
| | year={2025} |
| | } |
| | |
| | @article{li2025dualcodec, |
| | title={Dualcodec: A low-frame-rate, semantically-enhanced neural audio codec for speech generation}, |
| | author={Li, Jiaqi and Lin, Xiaolong and Li, Zhekai and Huang, Shixi and Wang, Yuancheng and Wang, Chaoren and Zhan, Zhenpeng and Wu, Zhizheng}, |
| | journal={Interspeech 2025}, |
| | year={2025} |
| | } |
| | ``` |