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This model is an implementation of the neural network for speech recognition described in Graves & Schmidhuber (2005). It takes in frames of frequency information derived from the waveform, and it predicts which phone class the frame belongs to, among a reduced set of English phones. The training is run using the TIMIT data set (Garofolo et al., 1993).

How to use these scripts

This implementation is broken down into two separate scripts. The first, 00-data.jl, extracts the appropriate speech features from the data in TIMIT and saves them to file. It assumes that you have the TIMIT speech corpus extracted, converted into RIFF WAV file format, and in the same directory as the script itself. It takes no arguments, and is run

julia 00-data.jl

It will print out which directory it is working on as it goes so you can track the progress as it extracts the training and testing data.

The second script, 01-speech-blstm.jl, trains the network. It loads in the speech data extracted from 00-data.jl and runs it through the network for 20 epochs, which is on average how long Graves & Schmidhuber needed to train the network for. (The number of epochs can be changed by modifying the value of the EPOCHS variable in the script.) The script is run as

julia 01-speech-blstm.jl

At the end of each epoch, the script prints out the validation accuracy and saves a BSON file with the model's current weights. After running through all the epochs, the script prints out the testing accuracy on the default holdout test set.

Using a trained model

It is simple to use the model once it's been trained. Simply load in the model from the BSON file, and use the model(x) function from 01-speech-blstm.jl on some data prepared using the same procedure as in 00-data.jl. The phoneme class numbers can be determined by using argmax. The Flux and BSON packages will need to be loaded in beforehand.

using Flux, BSON
using Flux: flip, softmax
BSON.@load "model_epoch20.bson" forward backward output
BLSTM(x) = vcat.(forward.(x), flip(backward, x))
model(x) = softmax.(output.(BLSTM(x)))
ŷ = model(x) # where x is utterance you want to be transcribed
phonemes = argmax.(ŷ)

References

Garofalo, J. S., Lamel, L. F., Fisher, W. M., Fiscus, J. G., Pallett, D. S., & Dahlgren, N. L. (1993). The DARPA TIMIT acoustic-phonetic continuous speech corpus cdrom. Linguistic Data Consortium.

Graves, A., & Schmidhuber, J. (2005). Framewise phoneme classification with bidirectional LSTM and other neural network architectures. Neural Networks, 18(5-6), 602-610.