This example based on DeepSpeech2 of Baidu helps you to build Speech-To-Text (STT) models at scale using
- CNNs, fully connected networks, (Bi-) RNNs, (Bi-) LSTMs, and (Bi-) GRUs for network layers,
- batch-normalization and drop-outs for training efficiency,
- and a Warp CTC for loss calculations.
In order to make your own STT models, besides, all you need is to just edit a configuration file not actual codes.
This example is intended to guide people who want to making practical STT models with MXNet. With rich functionalities and convenience explained above, you can build your own speech recognition models with it easier than former examples.
- MXNet version: 0.9.5+
- GPU memory size: 2.4GB+
- Install tensorboard for logging
pip install tensorboard
- SoundFile for audio preprocessing (If encounter errors about libsndfile, follow this tutorial.)
pip install soundfile
- Warp CTC: Follow this instruction to install Baidu's Warp CTC.
- We strongly recommend that you first test a model of small networks.
Input data are described in a JSON file Libri_sample.json as followed.
{"duration": 2.9450625, "text": "and sharing her house which was near by", "key": "./Libri_sample/3830-12531-0030.wav"}
{"duration": 3.94, "text": "we were able to impart the information that we wanted", "key": "./Libri_sample/3830-12529-0005.wav"}
You can download two wave files above from this. Put them under /path/to/yourproject/Libri_sample/.
[Notice] The configuration file "default.cfg" included describes DeepSpeech2 with slight changes. You can test the original DeepSpeech2("deepspeech.cfg") with a few line changes to the cfg file:
[common]
...
learning_rate = 0.0003
# constant learning rate annealing by factor
learning_rate_annealing = 1.1
optimizer = sgd
...
is_bi_graphemes = True
...
[arch]
...
num_rnn_layer = 7
num_hidden_rnn_list = [1760, 1760, 1760, 1760, 1760, 1760, 1760]
num_hidden_proj = 0
num_rear_fc_layers = 1
num_hidden_rear_fc_list = [1760]
act_type_rear_fc_list = ["relu"]
...
[train]
...
learning_rate = 0.0003
# constant learning rate annealing by factor
learning_rate_annealing = 1.1
optimizer = sgd
...
cd /path/to/your/project/
mkdir checkpoints
mkdir log
python main.py --configfile default.cfg
Checkpoints of the model will be saved at every n-th epoch.
You can (re-) train (saved) models by loading checkpoints (starting from 0). For this, you need to modify only two lines of the file "default.cfg".
...
[common]
# mode can be one of the followings - train, predict, load
mode = load
...
model_file = 'file name of your model saved'
...
You can predict (or test) audios by specifying the mode, model, and test data in the file "default.cfg".
...
[common]
# mode can be one of the followings - train, predict, load
mode = predict
...
model_file = 'file name of your model to be tested'
...
[data]
...
test_json = 'a json file described test audios'
...
Run the following line after all modification explained above.
python main.py --configfile default.cfg
Train and test your own models by preparing two files.
- A new configuration file, i.e., custom.cfg, corresponding to the file 'default.cfg'. The new file should specify the items below the '[arch]' section of the original file.
- A new implementation file, i.e., arch_custom.py, corresponding to the file 'arch_deepspeech.py'. The new file should implement two functions, prepare_data() and arch(), for building networks described in the new configuration file.
Run the following line after preparing the files.
python main.py --configfile custom.cfg --archfile arch_custom
You can prepare full LibriSpeech dataset by following the instruction on https://github.com/baidu-research/ba-dls-deepspeech
Change flac_to_wav.sh script of baidu to flac_to_wav.sh in repository to avoid bug
git clone https://github.com/baidu-research/ba-dls-deepspeech
cd ba-dls-deepspeech
./download.sh
cp -f /path/to/example/flac_to_wav.sh ./
./flac_to_wav.sh
python create_desc_json.py /path/to/ba-dls-deepspeech/LibriSpeech/train-clean-100 train_corpus.json
python create_desc_json.py /path/to/ba-dls-deepspeech/LibriSpeech/dev-clean validation_corpus.json
python create_desc_json.py /path/to/ba-dls-deepspeech/LibriSpeech/test-clean test_corpus.json