ESPnet is an end-to-end speech processing toolkit, mainly focuses on end-to-end speech recognition. ESPnet uses chainer and pytorch as a main deep learning engine, and also follows Kaldi style data processing, feature extraction/format, and recipes to provide a complete setup for speech recognition and other speech processing experiments.
Install Kaldi, Python libraries and other required tools using system python and virtualenv
$ cd tools
$ make -jor using local miniconda
$ cd tools
$ make -f conda.mk -jTo use cuda (and cudnn), make sure to set paths in your .bashrc or .bash_profile appropriately.
CUDAROOT=/path/to/cuda
export PATH=$CUDAROOT/bin:$PATH
export LD_LIBRARY_PATH=$CUDAROOT/lib64:$LD_LIBRARY_PATH
export CUDA_HOME=$CUDAROOT
export CUDA_PATH=$CUDAROOT
Move to an example directory under the egs directory.
We prepare several major ASR benchmarks including WSJ, CHiME-4, and TED.
The following directory is an example of performing ASR experiment with the VoxForge Italian Corpus.
$ cd egs/voxforge/asr1Once move to the directory, then, execute the following main script with a chainer backend:
$ ./run.shor execute the following main script with a pytorch backend (currently the pytorch backend does not support VGG-like layers):
$ ./run.sh --backend pytorch --etype blstmpWith this main script, you can perform a full procedure of ASR experiments including
- Data download
- Data preparation (Kaldi style, see http://kaldi-asr.org/doc/data_prep.html)
- Feature extraction (Kaldi style, see http://kaldi-asr.org/doc/feat.html)
- Dictionary and JSON format data preparation
- Training based on chainer or pytorch.
- Recognition and scoring
If you use GPU in your experiment, set --gpu option in run.sh appropriately, e.g.,
$ ./run.sh --gpu 0Default setup uses CPU (--gpu -1).
Change cmd.sh according to your cluster setup.
If you run experiments with your local machine, please use default cmd.sh.
For more information about cmd.sh see http://kaldi-asr.org/doc/queue.html.
It supports Grid Engine (queue.pl), SLURM (slurm.pl), etc.
If you have the following error (or other numpy related errors),
RuntimeError: module compiled against API version 0xc but this version of numpy is 0xb
Exception in main training loop: numpy.core.multiarray failed to import
Traceback (most recent call last):
;
:
from . import _path, rcParams
ImportError: numpy.core.multiarray failed to import
Then, please reinstall matplotlib with the following command:
$ cd egs/voxforge/asr1
$ . ./path.sh
$ pip install pip --upgrade; pip uninstall matplotlib; pip --no-cache-dir install matplotlibFor GPU support nvidia-docker should be installed.
For Execution use the command
$ cd egs/voxforge/asr1
$ ./run_in_docker.sh --gpu GPUIDIf GPUID is set to -1, the program will run only CPU.
The file builds and loads the information into the Docker container. If any additional application is required, modify the Docker devel-file located at the tools folder.
To downgrade or use a private devel file, modify the name inside run_in_docker.sh
[1] Suyoun Kim, Takaaki Hori, and Shinji Watanabe, "Joint CTC-attention based end-to-end speech recognition using multi-task learning," Proc. ICASSP'17, pp. 4835--4839 (2017)
[2] Shinji Watanabe, Takaaki Hori, Suyoun Kim, John R. Hershey and Tomoki Hayashi, "Hybrid CTC/Attention Architecture for End-to-End Speech Recognition," IEEE Journal of Selected Topics in Signal Processing, vol. 11, no. 8, pp. 1240-1253, Dec. 2017