/deepSpeech

End-to-end speech recognition using distributed TensorFlow

Primary LanguagePythonBSD 3-Clause "New" or "Revised" LicenseBSD-3-Clause

TensorFlow implementation of deepSpeech

End-to-end speech recognition using distributed TensorFlow

This repository contains TensorFlow code for an end-to-end speech recognition engine using Deep Neural Networks inspired by Baidu's DeepSpeech model, that can train on multiple GPUs. This work was developed at Ford Research and Innovation Center Palo Alto.

This software is released under a BSD license. The license to this software does not apply to TensorFlow, which is available under the Apache 2.0 license, or the third party pre-requisites listed below, which are available under their own respective licenses.

Pre-requisites

  • TensorFlow - version: r0.11
  • python-levenshtein - to compute Character-Error-Rate
  • python_speech_features - to generate mfcc features
  • PySoundFile - to read FLAC files
  • scipy - helper functions for windowing
  • tqdm - for displaying a progress bar

Getting started

Step 1: Create a virtualenv and install all dependencies.

With anaconda, you can use:

$ conda create -n 'SpeechRecog' python=3.5.0
$ source activate SpeechRecog
(SpeechRecog)$ pip install python-Levenshtein
(SpeechRecog)$ pip install python_speech_features
(SpeechRecog)$ pip install PySoundFile
(SpeechRecog)$ pip install scipy
(SpeechRecog)$ pip install tqdm

# Install TensorFlow 0.11 by following instructions here:
https://github.com/tensorflow/tensorflow/blob/r0.11/tensorflow/g3doc/get_started/os_setup.md
For GPU support, make sure you have installed CUDA and cuDNN using the instructions in the above link.

# Update ~/.bashrc to reflect path for CUDA.
Add these lines to the ~/.bashrc:
export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:/usr/local/cuda/lib64:/usr/local/cuda/extras/CUPTI/lib64"
export CUDA_HOME=/usr/local/cuda

On a Linux machine with GPU support, use: 
(SpeechRecog)$ export TF_BINARY_URL=https://storage.googleapis.com/tensorflow/linux/gpu/tensorflow-0.11.0-cp35-cp35m-linux_x86_64.whl
(SpeechRecog)$ pip install --upgrade $TF_BINARY_URL

Step 2: Clone this git repo.

(SpeechRecog)$ git clone https://github.com/FordSpeech/deepSpeech.git
(SpeechRecog)$ cd deepSpeech

Preprocessing the data

Step 1: Download and unpack the LibriSpeech data

Inside the github repo that you have cloned run:
$ mkdir -p data/librispeech
$ cd data/librispeech
$ wget http://www.openslr.org/resources/12/train-clean-100.tar.gz
$ wget http://www.openslr.org/resources/12/dev-clean.tar.gz
$ wget http://www.openslr.org/resources/12/test-clean.tar.gz
$ mkdir audio
$ cd audio
$ tar xvzf ../train-clean-100.tar.gz LibriSpeech/train-clean-100 --strip-components=1
$ tar xvzf ../dev-clean.tar.gz LibriSpeech/dev-clean  --strip-components=1
$ tar xvzf ../test-clean.tar.gz LibriSpeech/test-clean  --strip-components=1

Step 2: Run this command to preprocess the audio and generate TFRecord files.

The computed mfcc features will be stored within TFRecords files inside data/librispeech/processed/

(SpeechRecog)$ cd ../../../code/
(SpeechRecog)$ python preprocess_LibriSpeech.py

Training a model

(SpeechRecog)$python deepSpeech_train.py --num_rnn_layers 3 --rnn_type 'bi-dir' --initial_lr 3e-4 
--max_steps 30000 --train_dir PATH_TO_SAVE_CHECKPOINT_FILE 

# To continue training from a saved checkpoint file
(SpeechRecog)$python deepSpeech_train.py --checkpoint_dir PATH_TO_SAVED_CHECKPOINT_FILE --max_steps 40000

The script train.sh contains commands to train on utterances in sorted order for the first epoch and then to resume training on shuffled utterances. Note that during the first epoch, the cost will increase and it will take longer to train on later steps because the utterances are presented in sorted order to the network.

Monitoring training

Since the training data is fed through a shuffled queue, to check validation loss a separate graph needs to be set up in a different session and potentially on an additional GPU. This graph is fed with the valildation data to compute predictions. The deepSpeech_test.py script initializes the graph from a previously saved checkpoint file and computes the CER on the eval_data every 5 minutes by default. It saves the computed CER values in the models/librispeech/eval folder. By calling tensorboard with logdir set to models/librispeech, it is possible to monitor validation CER and training loss during training.

(SpeechRecog)$python deepSpeech_test.py --eval_data 'val' --checkpoint_dir PATH_TO_SAVED_CHECKPOINT_FILE
(SpeechRecog)$tensorboard --logdir PATH_TO_SUMMARY

Testing a model

(SpeechRecog)$python deepSpeech_test.py --eval_data 'test' --checkpoint_dir PATH_TO_SAVED_CHECKPOINT_FILE