模型:
speechbrain/vad-crdnn-libriparty
This repository provides all the necessary tools to perform voice activity detection with SpeechBrain using a model pretrained on Libriparty.
The pre-trained system can process short and long speech recordings and outputs the segments where speech activity is detected. The output of the system looks like this:
segment_001 0.00 2.57 NON_SPEECH segment_002 2.57 8.20 SPEECH segment_003 8.20 9.10 NON_SPEECH segment_004 9.10 10.93 SPEECH segment_005 10.93 12.00 NON_SPEECH segment_006 12.00 14.40 SPEECH segment_007 14.40 15.00 NON_SPEECH segment_008 15.00 17.70 SPEECH
The system expects input recordings sampled at 16kHz (single channel). If your signal has a different sample rate, resample it (e.g., using torchaudio or sox) before using the interface.
For a better experience, we encourage you to learn more about SpeechBrain .
The model performance on the LibriParty test set is:
Release | hyperparams file | Test Precision | Test Recall | Test F-Score | Model link | GPUs |
---|---|---|---|---|---|---|
2021-09-09 | train.yaml | 0.9518 | 0.9437 | 0.9477 | Model | 1xV100 16GB |
This system is composed of a CRDNN that outputs posteriors probabilities with a value close to one for speech frames and close to zero for non-speech segments. A threshold is applied on top of the posteriors to detect candidate speech boundaries.
Depending on the active options, these boundaries can be post-processed (e.g, merging close segments, removing short segments, etc) to further improve the performance. See more details below.
pip install speechbrain
Please notice that we encourage you to read our tutorials and learn more about SpeechBrain .
from speechbrain.pretrained import VAD VAD = VAD.from_hparams(source="speechbrain/vad-crdnn-libriparty", savedir="pretrained_models/vad-crdnn-libriparty") boundaries = VAD.get_speech_segments("speechbrain/vad-crdnn-libriparty/example_vad.wav") # Print the output VAD.save_boundaries(boundaries)
The output is a tensor that contains the beginning/end second of each detected speech segment. You can save the boundaries on a file with:
VAD.save_boundaries(boundaries, save_path='VAD_file.txt')
Sometimes it is useful to jointly visualize the VAD output with the input signal itself. This is helpful to quickly figure out if the VAD is doing or not a good job.
To do it:
import torchaudio upsampled_boundaries = VAD.upsample_boundaries(boundaries, 'pretrained_model_checkpoints/example_vad.wav') torchaudio.save('vad_final.wav', upsampled_boundaries.cpu(), 16000)
This creates a "VAD signal" with the same dimensionality as the original signal.
You can now open vad_final.wav and pretrained_model_checkpoints/example_vad.wav with software like audacity to visualize them jointly.
The pipeline for detecting the speech segments is the following:
We designed the VAD such that you can have access to all of these steps (this might help to debug):
from speechbrain.pretrained import VAD VAD = VAD.from_hparams(source="speechbrain/vad-crdnn-libriparty", savedir="pretrained_models/vad-crdnn-libriparty") # 1- Let's compute frame-level posteriors first audio_file = 'pretrained_model_checkpoints/example_vad.wav' prob_chunks = VAD.get_speech_prob_file(audio_file) # 2- Let's apply a threshold on top of the posteriors prob_th = VAD.apply_threshold(prob_chunks).float() # 3- Let's now derive the candidate speech segments boundaries = VAD.get_boundaries(prob_th) # 4- Apply energy VAD within each candidate speech segment (optional) boundaries = VAD.energy_VAD(audio_file,boundaries) # 5- Merge segments that are too close boundaries = VAD.merge_close_segments(boundaries, close_th=0.250) # 6- Remove segments that are too short boundaries = VAD.remove_short_segments(boundaries, len_th=0.250) # 7- Double-check speech segments (optional). boundaries = VAD.double_check_speech_segments(boundaries, audio_file, speech_th=0.5)
To perform inference on the GPU, add run_opts={"device":"cuda"} when calling the from_hparams method.
The model was trained with SpeechBrain (ea17d22). To train it from scratch follows these steps:
git clone https://github.com/speechbrain/speechbrain/
cd speechbrain pip install -r requirements.txt pip install -e .
Run Training: Training heavily relies on data augmentation. Make sure you have downloaded all the datasets needed:
- LibriParty: https://drive.google.com/file/d/1--cAS5ePojMwNY5fewioXAv9YlYAWzIJ/view?usp=sharing - Musan: https://www.openslr.org/resources/17/musan.tar.gz - CommonLanguage: https://zenodo.org/record/5036977/files/CommonLanguage.tar.gz?download=1
cd recipes/LibriParty/VAD python train.py hparams/train.yaml --data_folder=/path/to/LibriParty --musan_folder=/path/to/musan/ --commonlanguage_folder=/path/to/common_voice_kpd
The SpeechBrain team does not provide any warranty on the performance achieved by this model when used on other datasets.
Please, cite SpeechBrain if you use it for your research or business.
@misc{speechbrain, title={{SpeechBrain}: A General-Purpose Speech Toolkit}, author={Mirco Ravanelli and Titouan Parcollet and Peter Plantinga and Aku Rouhe and Samuele Cornell and Loren Lugosch and Cem Subakan and Nauman Dawalatabad and Abdelwahab Heba and Jianyuan Zhong and Ju-Chieh Chou and Sung-Lin Yeh and Szu-Wei Fu and Chien-Feng Liao and Elena Rastorgueva and François Grondin and William Aris and Hwidong Na and Yan Gao and Renato De Mori and Yoshua Bengio}, year={2021}, eprint={2106.04624}, archivePrefix={arXiv}, primaryClass={eess.AS}, note={arXiv:2106.04624} }