cnbeining / whisperX-silero

WhisperX: Automatic Speech Recognition with Word-level Timestamps (& Diarization) with Silero VAD

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WhisperX

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whisperx-arch

Whisper-Based Automatic Speech Recognition (ASR) with improved timestamp accuracy using forced alignment.

What is it 🔎

This repository refines the timestamps of openAI's Whisper model via forced aligment with phoneme-based ASR models (e.g. wav2vec2.0), multilingual use-case.

Whisper is an ASR model developed by OpenAI, trained on a large dataset of diverse audio. Whilst it does produces highly accurate transcriptions, the corresponding timestamps are at the utterance-level, not per word, and can be inaccurate by several seconds.

Phoneme-Based ASR A suite of models finetuned to recognise the smallest unit of speech distinguishing one word from another, e.g. the element p in "tap". A popular example model is wav2vec2.0.

Forced Alignment refers to the process by which orthographic transcriptions are aligned to audio recordings to automatically generate phone level segmentation.

New🚨

  • Paper drop🎓👨‍🏫! Please see our ArxiV preprint for benchmarking and details of WhisperX. We also introduce more efficient batch inference resulting in large-v2 with 60-70x REAL TIME speed. Repo will be updated soon with this efficient batch inference.
  • Batch processing: Add --vad_filter --parallel_bs [int] for transcribing long audio file in batches (only supported with VAD filtering). Replace [int] with a batch size that fits your GPU memory, e.g. --parallel_bs 16.
  • VAD filtering: Voice Activity Detection (VAD) from Pyannote.audio is used as a preprocessing step to remove reliance on whisper timestamps and only transcribe audio segments containing speech. add --vad_filter flag, increases timestamp accuracy and robustness (requires more GPU mem due to 30s inputs in wav2vec2)
  • Character level timestamps (see *.char.ass file output)
  • Diarization (still in beta, add --diarize)

Setup ⚙️

Install this package using

pip install git+https://github.com/m-bain/whisperx.git

If already installed, update package to most recent commit

pip install git+https://github.com/m-bain/whisperx.git --upgrade

If wishing to modify this package, clone and install in editable mode:

$ git clone https://github.com/m-bain/whisperX.git
$ cd whisperX
$ pip install -e .

You may also need to install ffmpeg, rust etc. Follow openAI instructions here https://github.com/openai/whisper#setup.

Voice Activity Detection Filtering & Diarization

To enable VAD filtering and Diarization, include your Hugging Face access token that you can generate from Here after the --hf_token argument and accept the user agreement for the following models: Segmentation , Voice Activity Detection (VAD) , and Speaker Diarization

Usage 💬 (command line)

English

Run whisper on example segment (using default params)

whisperx examples/sample01.wav

For increased timestamp accuracy, at the cost of higher gpu mem, use bigger models and VAD filtering e.g.

whisperx examples/sample01.wav --model large-v2 --vad_filter --align_model WAV2VEC2_ASR_LARGE_LV60K_960H

Result using WhisperX with forced alignment to wav2vec2.0 large:

sample01.mp4

Compare this to original whisper out the box, where many transcriptions are out of sync:

sample_whisper_og.mov

Other languages

The phoneme ASR alignment model is language-specific, for tested languages these models are automatically picked from torchaudio pipelines or huggingface. Just pass in the --language code, and use the whisper --model large.

Currently default models provided for {en, fr, de, es, it, ja, zh, nl, uk, pt}. If the detected language is not in this list, you need to find a phoneme-based ASR model from huggingface model hub and test it on your data.

E.g. German

whisperx --model large --language de examples/sample_de_01.wav
sample_de_01_vis.mov

See more examples in other languages here.

Python usage 🐍

import whisperx

device = "cuda" 
audio_file = "audio.mp3"

# transcribe with original whisper
model = whisperx.load_model("large", device)
result = model.transcribe(audio_file)

print(result["segments"]) # before alignment

# load alignment model and metadata
model_a, metadata = whisperx.load_align_model(language_code=result["language"], device=device)

# align whisper output
result_aligned = whisperx.align(result["segments"], model_a, metadata, audio_file, device)

print(result_aligned["segments"]) # after alignment
print(result_aligned["word_segments"]) # after alignment

Whisper Modifications

In addition to forced alignment, the following two modifications have been made to the whisper transcription method:

  1. --condition_on_prev_text is set to False by default (reduces hallucination)

  2. Clamping segment end_time to be at least 0.02s (one time precision) later than start_time (prevents segments with negative duration)

Limitations ⚠️

  • Not thoroughly tested, especially for non-english, results may vary -- please post issue to let me know the results on your data
  • Whisper normalises spoken numbers e.g. "fifty seven" to arabic numerals "57". Need to perform this normalization after alignment, so the phonemes can be aligned. Currently just ignores numbers.
  • If not using VAD filter, whisperx assumes the initial whisper timestamps are accurate to some degree (within margin of 2 seconds, adjust if needed -- bigger margins more prone to alignment errors)
  • Overlapping speech is not handled particularly well by whisper nor whisperx
  • Diariazation is far from perfect.

Contribute 🧑‍🏫

If you are multilingual, a major way you can contribute to this project is to find phoneme models on huggingface (or train your own) and test them on speech for the target language. If the results look good send a merge request and some examples showing its success.

The next major upgrade we are working on is whisper with speaker diarization, so if you have any experience on this please share.

Coming Soon 🗓

  • Multilingual init

  • Subtitle .ass output

  • Automatic align model selection based on language detection

  • Python usage

  • Character level timestamps

  • Incorporating speaker diarization

  • Inference speedup with batch processing

  • Improve diarization (word level). Harder than first thought...

Contact/Support 📇

Contact maxbain[at]robots[dot]ox[dot]ac[dot]uk for queries

Buy Me A Coffee

Acknowledgements 🙏

This work, and my PhD, is supported by the VGG (Visual Geometry Group) and University of Oxford.

Of course, this is builds on openAI's whisper. And borrows important alignment code from PyTorch tutorial on forced alignment

Citation

If you use this in your research, please cite the paper:
@article{bain2022whisperx,
  title={WhisperX: Time-Accurate Speech Transcription of Long-Form Audio},
  author={Bain, Max and Huh, Jaesung and Han, Tengda and Zisserman, Andrew},
  journal={arXiv preprint, arXiv:2303.00747},
  year={2023}
}

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WhisperX: Automatic Speech Recognition with Word-level Timestamps (& Diarization) with Silero VAD

License:BSD 4-Clause "Original" or "Old" License


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