| --- |
| language: |
| - en |
| - zh |
| license: apache-2.0 |
| pipeline_tag: voice-activity-detection |
| tags: |
| - voice-activity-detection |
| - speech-activity-detection |
| - audio-event-detection |
| - vad |
| - aed |
| - streaming |
| - non-streaming |
| - audio |
| - automatic-speech-recognition |
| - asr |
| --- |
| |
| <div align="center"> |
| <h1> |
| FireRedVAD: A SOTA Industrial-Grade |
| <br> |
| Voice Activity Detection & Audio Event Detection |
| </h1> |
|
|
| </div> |
|
|
| [[Paper]](https://huggingface.co/papers/2603.10420) |
| [[Code]](https://github.com/FireRedTeam/FireRedVAD) |
| [[HuggingFace]](https://huggingface.co/FireRedTeam/FireRedVAD) |
| [[ModelScope]](https://www.modelscope.cn/models/xukaituo/FireRedVAD) |
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| FireRedVAD is a state-of-the-art (SOTA) industrial-grade Voice Activity Detection (VAD) and Audio Event Detection (AED) solution. It was introduced as part of [FireRedASR2S](https://huggingface.co/papers/2603.10420). |
|
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| FireRedVAD supports non-streaming/streaming VAD and non-streaming AED. It supports speech/singing/music detection in 100+ languages. Non-streaming VAD achieves 97.57% F1 on FLEURS-VAD-102, outperforming Silero-VAD, TEN-VAD, FunASR-VAD and WebRTC-VAD. |
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| ## 🔥 News |
| - [2026.03.12] 🔥 We release FireRedASR2S technical report. See [arXiv](https://arxiv.org/abs/2603.10420). |
| - [2026.03.03] We release FireRedVAD as a standalone repository, along with model weights and inference code. |
| - [2026.02.12] We release [FireRedASR2S](https://github.com/FireRedTeam/FireRedASR2S) (FireRedASR2-AED, FireRedVAD, FireRedLID, and FireRedPunc) with model weights and inference code. |
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| ## Method |
| DFSMN-based non-streaming/streaming Voice Activity Detection and Audio Event Detection. |
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|
| ## Evaluation |
| ### FireRedVAD |
| We evaluate FireRedVAD on FLEURS-VAD-102, a multilingual VAD benchmark covering 102 languages. |
|
|
| FireRedVAD achieves SOTA performance, outperforming Silero-VAD, TEN-VAD, FunASR-VAD, and WebRTC-VAD. |
|
|
| |Metric\Model|FireRedVAD|[Silero-VAD](https://github.com/snakers4/silero-vad)|[TEN-VAD](https://github.com/TEN-framework/ten-vad)|[FunASR-VAD](https://modelscope.cn/models/iic/speech_fsmn_vad_zh-cn-16k-common-pytorch)|[WebRTC-VAD](https://github.com/wiseman/py-webrtcvad)| |
| |:-------:|:-----:|:------:|:------:|:------:|:------:| |
| |AUC-ROC↑ |**99.60**|97.99|97.81|- |- | |
| |F1 score↑ |**97.57**|95.95|95.19|90.91|52.30| |
| |False Alarm Rate↓ |**2.69** |9.41 |15.47|44.03|2.83 | |
| |Miss Rate↓|3.62 |3.95 |2.95 |0.42 |64.15| |
|
|
| <sup>*</sup>FLEURS-VAD-102: We randomly selected ~100 audio files per language from [FLEURS test set](https://huggingface.co/datasets/google/fleurs), resulting in 9,443 audio files with manually annotated binary VAD labels (speech=1, silence=0). This VAD testset will be open sourced (coming soon). |
| |
| Note: FunASR-VAD achieves low Miss Rate but at the cost of high False Alarm Rate (44.03%), indicating over-prediction of speech segments. |
| |
| |
| |
| ## Quick Start |
| ### Setup |
| 1. Create a clean Python environment: |
| ```bash |
| $ conda create --name fireredvad python=3.10 |
| $ conda activate fireredvad |
| $ git clone https://github.com/FireRedTeam/FireRedVAD.git |
| $ cd FireRedVAD # or fireredvad |
| ``` |
| |
| 2. Install dependencies and set up PATH and PYTHONPATH: |
| ```bash |
| $ pip install -r requirements.txt |
| $ export PATH=$PWD/fireredvad/bin/:$PATH |
| $ export PYTHONPATH=$PWD/:$PYTHONPATH |
| ``` |
| |
| 3. Download models: |
| ```bash |
| # Download via ModelScope (recommended for users in China) |
| pip install -U modelscope |
| modelscope download --model xukaituo/FireRedVAD --local_dir ./pretrained_models/FireRedVAD |
| |
| # Download via Hugging Face |
| pip install -U "huggingface_hub[cli]" |
| huggingface-cli download FireRedTeam/FireRedVAD --local-dir ./pretrained_models/FireRedVAD |
| ``` |
| |
| 4. Convert your audio to **16kHz 16-bit mono PCM** format if needed: |
| ```bash |
| $ ffmpeg -i <input_audio_path> -ar 16000 -ac 1 -acodec pcm_s16le -f wav <output_wav_path> |
| ``` |
| |
| ### Script Usage |
| ```bash |
| $ cd examples |
| $ bash inference_vad.sh |
| $ bash inference_stream_vad.sh |
| $ bash inference_aed.sh |
| ``` |
| |
| |
| ### Command-line Usage |
| Set up `PATH` and `PYTHONPATH` first: `export PATH=$PWD/fireredvad/bin/:$PATH; export PYTHONPATH=$PWD/:$PYTHONPATH` |
| |
| ```bash |
| $ vad.py --help |
| $ vad.py --use_gpu 0 --model_dir pretrained_models/FireRedVAD/VAD --smooth_window_size 5 --speech_threshold 0.4 \ |
| --min_speech_frame 20 --max_speech_frame 3000 --min_silence_frame 10 --merge_silence_frame 0 \ |
| --extend_speech_frame 0 --chunk_max_frame 30000 --write_textgrid 1 \ |
| --wav_path assets/hello_zh.wav --output out/vad.txt --save_segment_dir out/vad |
| |
| $ stream_vad.py --help |
| $ stream_vad.py --use_gpu 0 --model_dir pretrained_models/FireRedVAD/Stream-VAD --smooth_window_size 5 --speech_threshold 0.3 \ |
| --pad_start_frame 5 --min_speech_frame 8 --max_speech_frame 2000 --min_silence_frame 20 \ |
| --chunk_max_frame 30000 --write_textgrid 1 \ |
| --wav_path assets/hello_en.wav --output out/vad.txt --save_segment_dir out/stream_vad |
| |
| $ aed.py --help |
| $ aed.py --use_gpu 0 --model_dir pretrained_models/FireRedVAD/AED --smooth_window_size 5 --speech_threshold 0.4 \ |
| --singing_threshold 0.5 --music_threshold 0.5 --min_event_frame 20 --max_event_frame 3000 \ |
| --min_silence_frame 10 --merge_silence_frame 0 --extend_speech_frame 0 --chunk_max_frame 30000 --write_textgrid 1 \ |
| --wav_path assets/event.wav --output out/aed.txt --save_segment_dir out/aed |
| ``` |
| |
| |
| ### Python API Usage |
| Set up `PYTHONPATH` first: `export PYTHONPATH=$PWD/:$PYTHONPATH` |
| |
| #### Non-streaming VAD |
| ```python |
| from fireredvad import FireRedVad, FireRedVadConfig |
| |
| vad_config = FireRedVadConfig( |
| use_gpu=False, |
| smooth_window_size=5, |
| speech_threshold=0.4, |
| min_speech_frame=20, |
| max_speech_frame=2000, |
| min_silence_frame=20, |
| merge_silence_frame=0, |
| extend_speech_frame=0, |
| chunk_max_frame=30000) |
| vad = FireRedVad.from_pretrained("pretrained_models/FireRedVAD/VAD", vad_config) |
| |
| result, probs = vad.detect("assets/hello_zh.wav") |
| |
| print(result) |
| # {'dur': 2.32, 'timestamps': [(0.44, 1.82)], 'wav_path': 'assets/hello_zh.wav'} |
| ``` |
| |
| |
| #### Streaming VAD |
| |
| ```python |
| from fireredvad import FireRedStreamVad, FireRedStreamVadConfig |
| |
| vad_config=FireRedStreamVadConfig( |
| use_gpu=False, |
| smooth_window_size=5, |
| speech_threshold=0.4, |
| pad_start_frame=5, |
| min_speech_frame=8, |
| max_speech_frame=2000, |
| min_silence_frame=20, |
| chunk_max_frame=30000) |
| stream_vad = FireRedStreamVad.from_pretrained("pretrained_models/FireRedVAD/Stream-VAD", vad_config) |
| |
| frame_results, result = stream_vad.detect_full("assets/hello_en.wav") |
| |
| print(result) |
| # {'dur': 2.24, 'timestamps': [(0.28, 1.83)], 'wav_path': 'assets/hello_en.wav'} |
| ``` |
| |
| |
| #### Non-streaming AED |
| |
| ```python |
| from fireredvad import FireRedAed, FireRedAedConfig |
| |
| aed_config=FireRedAedConfig( |
| use_gpu=False, |
| smooth_window_size=5, |
| speech_threshold=0.4, |
| singing_threshold=0.5, |
| music_threshold=0.5, |
| min_event_frame=20, |
| max_event_frame=2000, |
| min_silence_frame=20, |
| merge_silence_frame=0, |
| extend_speech_frame=0, |
| chunk_max_frame=30000) |
| aed = FireRedAed.from_pretrained("pretrained_models/FireRedVAD/AED", aed_config) |
| |
| result, probs = aed.detect("assets/event.wav") |
| |
| print(result) |
| # {'dur': 22.016, 'event2timestamps': {'speech': [(0.4, 3.56), (3.66, 9.08), (9.27, 9.77), (10.78, 21.76)], 'singing': [(1.79, 19.96), (19.97, 22.016)], 'music': [(0.09, 12.32), (12.33, 22.016)]}, 'event2ratio': {'speech': 0.848, 'singing': 0.905, 'music': 0.991}, 'wav_path': 'assets/event.wav'} |
| ``` |
| |
| |
| ## FAQ |
| **Q: What audio format is supported?** |
| |
| 16kHz 16-bit mono PCM wav. Use ffmpeg to convert other formats: `ffmpeg -i <input_audio_path> -ar 16000 -ac 1 -acodec pcm_s16le -f wav <output_wav_path>` |
| |
| ## Citation |
| ```bibtex |
| @article{xu2026fireredasr2s, |
| title={FireRedASR2S: A State-of-the-Art Industrial-Grade All-in-One Automatic Speech Recognition System}, |
| author={Xu, Kaituo and Jia, Yan and Huang, Kai and Chen, Junjie and Li, Wenpeng and Liu, Kun and Xie, Feng-Long and Tang, Xu and Hu, Yao}, |
| journal={arXiv preprint arXiv:2603.10420}, |
| year={2026} |
| } |
| ``` |