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Almost State-of-the-art Automatic Speech Recognition using Tensorflow 2

Project description

TiramisuASR :cake:

GitHub python tensorflow ubuntu

Almost State-of-the-art Automatic Speech Recognition in Tensorflow 2

TiramisuASR implements some speech recognition architectures such as CTC-based models (Deep Speech 2, etc.), RNN Transducer (Conformer, etc.). These models can be converted to TFLite to reduce memory and computation for deployment :smile:

What's New?

  • (10/10/2020) Update documents and upload package to pypi
  • (10/6/2020) Change nlpaug version to >=1.0.1
  • (9/18/2020) Support word-pieces (aka subwords) using tensorflow-datasets
  • Support transducer tflite greedy decoding (conversion and invocation)
  • Distributed training using tf.distribute.MirroredStrategy

:yum: Supported Models

Setup Environment and Datasets

Install tensorflow: pip3 install -U tensorflow or pip3 install tf-nightly (for using tflite)

Install packages (choose one of these options):

  • Run pip3 install -U tiramisu-asr
  • Clone the repo and run python3 setup.py install in the repo's directory

For setting up datasets, see datasets

  • For training, testing and using CTC Models, run ./scripts/install_ctc_decoders.sh

  • For training Transducer Models, export CUDA_HOME and run ./scripts/install_rnnt_loss.sh

  • Method tiramisu_asr.utils.setup_environment() enable mixed_precision if available.

  • To enable XLA, run TF_XLA_FLAGS=--tf_xla_auto_jit=2 $python_train_script

Clean up: python3 setup.py clean --all (this will remove /build contents)

TFLite Convertion

After converting to tflite, the tflite model is like a function that transforms directly from an audio signal to unicode code points, then we can convert unicode points to string.

  1. Install tf-nightly using pip install tf-nightly
  2. Build a model with the same architecture as the trained model (if model has tflite argument, you must set it to True), then load the weights from trained model to the built model
  3. Load TFSpeechFeaturizer and TextFeaturizer to model using function add_featurizers
  4. Convert model's function to tflite as follows:
func = model.make_tflite_function(greedy=True) # or False
concrete_func = func.get_concrete_function()
converter = tf.lite.TFLiteConverter.from_concrete_functions([concrete_func])
converter.experimental_new_converter = True
converter.optimizations = [tf.lite.Optimize.DEFAULT]
converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS,
                                       tf.lite.OpsSet.SELECT_TF_OPS]
tflite_model = converter.convert()
  1. Save the converted tflite model as follows:
if not os.path.exists(os.path.dirname(tflite_path)):
    os.makedirs(os.path.dirname(tflite_path))
with open(tflite_path, "wb") as tflite_out:
    tflite_out.write(tflite_model)
  1. Then the .tflite model is ready to be deployed

Features Extraction

See features_extraction

Augmentations

See augmentations

Training & Testing

Example YAML Config Structure

speech_config: ...
model_config: ...
decoder_config: ...
learning_config:
  augmentations: ...
  dataset_config:
    train_paths: ...
    eval_paths: ...
    test_paths: ...
    tfrecords_dir: ...
  optimizer_config: ...
  running_config:
    batch_size: 8
    num_epochs: 20
    outdir: ...
    log_interval_steps: 500

See examples for some predefined ASR models and results

Corpus Sources and Pretrained Models

For pretrained models, go to drive

English

Name Source Hours
LibriSpeech LibriSpeech 970h
Common Voice https://commonvoice.mozilla.org 1932h

Vietnamese

Name Source Hours
Vivos https://ailab.hcmus.edu.vn/vivos 15h
InfoRe Technology 1 InfoRe1 (passwd: BroughtToYouByInfoRe) 25h
InfoRe Technology 2 (used in VLSP2019) InfoRe2 (passwd: BroughtToYouByInfoRe) 415h

German

Name Source Hours
Common Voice https://commonvoice.mozilla.org/ 750h

References & Credits

  1. NVIDIA OpenSeq2Seq Toolkit
  2. https://github.com/noahchalifour/warp-transducer
  3. Sequence Transduction with Recurrent Neural Network
  4. End-to-End Speech Processing Toolkit in PyTorch

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