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Other Models

Alexander Veysov edited this page Apr 27, 2023 · 7 revisions

DEPRECATED

Other models besides VAD

Number Detector

Number Detector detects spoken numbers (i.e thirty five) in 4 languages - english, german, russian, spanish

In some cases it is crucial to be able to anonymize large-scale spoken corpora (i.e. remove personal data). Typically personal data is considered to be private or sensitive if it contains a name or some private ID. Name recognition is a highly subjective matter and it depends on locale and business case, but VAD and Number Detection are quite general tasks.

How to use Number Detector:

  • It is recommended to split long audio into short ones (< 15s) and apply model on each of them.
  • Number Detector can classify if the whole audio contains a number, or if each audio frame contains a number.
  • Audio is split into frames in a certain way, so, having a per-frame output, we can reconstruct the time boundaries for numbers with an accuracy of about 0.2s.
example
#@title Install and Import Dependencies

# this assumes that you have a relevant version of PyTorch installed
!pip install -q torchaudio

SAMPLING_RATE = 16000

import torch
torch.set_num_threads(1)

from IPython.display import Audio
from pprint import pprint
# download example
torch.hub.download_url_to_file('https://models.silero.ai/vad_models/en_num.wav', 'en_number_example.wav')

USE_ONNX = False # change this to True if you want to test onnx model
if USE_ONNX:
    !pip install -q onnxruntime
  
model, utils = torch.hub.load(repo_or_dir='snakers4/silero-vad',
                              model='silero_number_detector',
                              force_reload=True,
                              onnx=USE_ONNX)
(get_number_ts,
 save_audio,
 read_audio,
 collect_chunks,
 drop_chunks) = utils

wav = read_audio('en_number_example.wav', sampling_rate=SAMPLING_RATE)
# get number timestamps from full audio file
number_timestamps = get_number_ts(wav, model)
pprint(number_timestamps)

# convert ms in timestamps to samples
for timestamp in number_timestamps:
    timestamp['start'] = int(timestamp['start'] * SAMPLING_RATE / 1000)
    timestamp['end'] = int(timestamp['end'] * SAMPLING_RATE / 1000)

# merge all number chunks to one audio
save_audio('only_numbers.wav',
           collect_chunks(number_timestamps, wav), SAMPLING_RATE) 
Audio('only_numbers.wav')

# drop all number chunks from audio
save_audio('no_numbers.wav',
           drop_chunks(number_timestamps, wav), SAMPLING_RATE) 
Audio('no_numbers.wav')

Language Classifier

  • 99% validation accuracy.
  • Language classifier was trained using audio samples in 4 languages: Russian, English, Spanish, German.
  • Arbitrary audio length can be used, although network was trained using audio shorter than 15 seconds
  • 95 languages version
example
#@title Install and Import Dependencies

# this assumes that you have a relevant version of PyTorch installed
!pip install -q torchaudio

SAMPLING_RATE = 16000

import torch
torch.set_num_threads(1)

from IPython.display import Audio
from pprint import pprint
# download example
torch.hub.download_url_to_file('https://models.silero.ai/vad_models/en.wav', 'en_example.wav')

USE_ONNX = False # change this to True if you want to test onnx model
if USE_ONNX:
    !pip install -q onnxruntime
  
model, utils = torch.hub.load(repo_or_dir='snakers4/silero-vad',
                              model='silero_lang_detector',
                              force_reload=True,
                              onnx=USE_ONNX)

get_language, read_audio = utils

wav = read_audio('en_example.wav', sampling_rate=SAMPLING_RATE)
lang = get_language(wav, model)
print(lang)

Language Classifier 95

  • 85% validation accuracy among 95 languages, 90% validation accuracy among 58 language groups
  • Language classifier 95 was trained using audio samples in 95 languages
  • Arbitrary audio length can be used, although network was trained using audio shorter than 20 seconds
example
#@title Install and Import Dependencies

# this assumes that you have a relevant version of PyTorch installed
!pip install -q torchaudio

SAMPLING_RATE = 16000

import torch
torch.set_num_threads(1)

from IPython.display import Audio
from pprint import pprint
# download example
torch.hub.download_url_to_file('https://models.silero.ai/vad_models/de.wav', 'de_example.wav')

USE_ONNX = False # change this to True if you want to test onnx model
if USE_ONNX:
    !pip install -q onnxruntime
  
model, lang_dict, lang_group_dict,  utils = torch.hub.load(repo_or_dir='snakers4/silero-vad',
                                                           model='silero_lang_detector_95',
                                                           force_reload=True,
                                                           onnx=USE_ONNX)

get_language_and_group, read_audio = utils

wav = read_audio('de_example.wav', sampling_rate=SAMPLING_RATE)
languages, language_groups = get_language_and_group(wav, model, lang_dict, lang_group_dict, top_n=2)

for i in languages:
  pprint(f'Language: {i[0]} with prob {i[-1]}')

for i in language_groups:
  pprint(f'Language group: {i[0]} with prob {i[-1]}')