Download zip Select Archive Format
Name Last Update history
File empty ..
File dir conf Loading commit data...
File dir local Loading commit data...
File txt README.txt Loading commit data...
File txt RESULTS Loading commit data...
File txt cmd.sh Loading commit data...
File txt path.sh Loading commit data...
File txt run.sh Loading commit data...
File txt steps Loading commit data...
File txt utils Loading commit data...

README.txt

Improved baseline for REVERB challenge 
======================================

This is an improvement over "Improved multi condition training baseline" from Felix Weninger & Shinji Watanabe

Key specs:
- Nara-WPE and BeamformIt front-end enhancement
- TDNN acoustic model

RESULT:
For experiment results, please see RESULTS for more detail

REFERENCE:
++++++++
If you find this software useful for your own research, please cite the
following papers:

Felix Weninger, Shinji Watanabe, Jonathan Le Roux, John R. Hershey, Yuuki
Tachioka, Jürgen Geiger, Björn Schuller, Gerhard Rigoll: "The MERL/MELCO/TUM
system for the REVERB Challenge using Deep Recurrent Neural Network Feature
Enhancement", Proc. REVERB Workshop, IEEE, Florence, Italy, May 2014.

Lukas Drude, Jahn Heymann, Christoph Boeddeker, and Reinhold Haeb-Umbach:
"NARA-WPE: A Python package for weighted prediction error dereverberation in
Numpy and Tensorflow for online and offline processing." In Speech Communication;
13th ITG-Symposium, pp. 1-5. VDE, 2018.

INSTRUCTIONS:
+++++++++++++
1) Execute the training and recognition steps by

   ./run.sh

   Depending on your system specs (# of CPUs, RAM) you might want (or have) to 
   change the number of parallel jobs -- this is controlled by the nj
   and decode_nj variables (# of jobs for training, for decoding).