FireRedASR: Open-Source Industrial-Grade
Automatic Speech Recognition Models

Kai-Tuo XuFeng-Long XieXu TangYao Hu

[Code] [Paper] [Model] [Blog]

FireRedASR is a family of open-source industrial-grade automatic speech recognition (ASR) models supporting Mandarin, Chinese dialects and English, achieving a new state-of-the-art (SOTA) on public Mandarin ASR benchmarks, while also offering outstanding singing lyrics recognition capability.

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Method

FireRedASR is designed to meet diverse requirements in superior performance and optimal efficiency across various applications. It comprises two variants:

  • FireRedASR-LLM: Designed to achieve state-of-the-art (SOTA) performance and to enable seamless end-to-end speech interaction. It adopts an Encoder-Adapter-LLM framework leveraging large language model (LLM) capabilities.
  • FireRedASR-AED: Designed to balance high performance and computational efficiency and to serve as an effective speech representation module in LLM-based speech models. It utilizes an Attention-based Encoder-Decoder (AED) architecture.

Evaluation

Results are reported in Character Error Rate (CER%) for Chinese and Word Error Rate (WER%) for English.

Evaluation on Public Mandarin ASR Benchmarks

Model #Params aishell1 aishell2 ws_net ws_meeting Average-4
FireRedASR-LLM 8.3B 0.76 2.15 4.60 4.67 3.05
FireRedASR-AED 1.1B 0.55 2.52 4.88 4.76 3.18
Seed-ASR 12B+ 0.68 2.27 4.66 5.69 3.33
Qwen-Audio 8.4B 1.30 3.10 9.50 10.87 6.19
SenseVoice-L 1.6B 2.09 3.04 6.01 6.73 4.47
Whisper-Large-v3 1.6B 5.14 4.96 10.48 18.87 9.86
Paraformer-Large 0.2B 1.68 2.85 6.74 6.97 4.56

ws means WenetSpeech.

Evaluation on Public Chinese Dialect and English ASR Benchmarks

Test Set KeSpeech LibriSpeech test-clean LibriSpeech test-other
FireRedASR-LLM 3.56 1.73 3.67
FireRedASR-AED 4.48 1.93 4.44
Previous SOTA Results 6.70 1.82 3.50

Usage

Download model files from huggingface and place them in the folder pretrained_models.

If you want to use FireRedASR-LLM-L, you also need to download Qwen2-7B-Instruct and place it in the folder pretrained_models. Then, go to folder FireRedASR-LLM-L and run $ ln -s ../Qwen2-7B-Instruct

Setup

Create a Python environment and install dependencies

$ git clone https://github.com/FireRedTeam/FireRedASR.git
$ conda create --name fireredasr python=3.10
$ pip install -r requirements.txt

Set up Linux PATH and PYTHONPATH

$ export PATH=$PWD/fireredasr/:$PWD/fireredasr/utils/:$PATH
$ export PYTHONPATH=$PWD/:$PYTHONPATH

Convert audio to 16kHz 16-bit PCM format

ffmpeg -i input_audio -ar 16000 -ac 1 -acodec pcm_s16le -f wav output.wav

Quick Start

$ cd examples/
$ bash inference_fireredasr_aed.sh
$ bash inference_fireredasr_llm.sh

Command-line Usage

$ speech2text.py --help
$ speech2text.py --wav_path examples/wav/BAC009S0764W0121.wav --asr_type "aed" --model_dir pretrained_models/FireRedASR-AED-L
$ speech2text.py --wav_path examples/wav/BAC009S0764W0121.wav --asr_type "llm" --model_dir pretrained_models/FireRedASR-LLM-L

Python Usage

from fireredasr.models.fireredasr import FireRedAsr

batch_uttid = ["BAC009S0764W0121"]
batch_wav_path = ["examples/wav/BAC009S0764W0121.wav"]

# FireRedASR-AED
model = FireRedAsr.from_pretrained("aed", "pretrained_models/FireRedASR-AED-L")
results = model.transcribe(
    batch_uttid,
    batch_wav_path,
    {
        "use_gpu": 1,
        "beam_size": 3,
        "nbest": 1,
        "decode_max_len": 0,
        "softmax_smoothing": 1.0,
        "aed_length_penalty": 0.0,
        "eos_penalty": 1.0
    }
)
print(results)


# FireRedASR-LLM
model = FireRedAsr.from_pretrained("llm", "pretrained_models/FireRedASR-LLM-L")
results = model.transcribe(
    batch_uttid,
    batch_wav_path,
    {
        "use_gpu": 1,
        "beam_size": 3,
        "decode_max_len": 0,
        "decode_min_len": 0,
        "repetition_penalty": 1.0,
        "llm_length_penalty": 0.0,
        "temperature": 1.0
    }
)
print(results)

Usage Tips

Batch Beam Search

  • When performing batch beam search with FireRedASR-LLM, please ensure that the input lengths of the utterances are similar. If there are significant differences in utterance lengths, shorter utterances may experience repetition issues. You can either sort your dataset by length or set batch_size to 1 to avoid the repetition issue.

Input Length Limitations

  • FireRedASR-AED supports audio input up to 60s. Input longer than 60s may cause hallucination issues, and input exceeding 200s will trigger positional encoding errors.
  • FireRedASR-LLM supports audio input up to 30s. The behavior for longer input is currently unknown.

Acknowledgements

Thanks to the following open-source works:

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