Improved baseline for REVERB challenge
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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:
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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:
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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).