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WaveGlow

Tensorflow Implementation of WaveGlow

TODO

  • add code for generate the wave on the fly during training for fast evaluate the model quality.

ATTENTION PLEASE

ATTENTION: I have verified that if you use tf.nn.conv2d() for dilated convolution with data format NHWC, the model does not convergence. I have tried at least more that 30 experiments.

Because tf.nn.conv2d() with data format NHWC does not convergence, so in master branch I changed the dilated convolution implementation to implementation in tensorflow-wavenet.

In my experiment with tf.nn.conv2d() by data format NHWC, even after 652K steps the model still did not convergence. See example in ./samples/tf_conv2d_as_dilated_conv/

I spent lots of time to investigate what's wrong with my code by using tf.nn.conv2d with data format NHWC, after the private implemented dilated convolution convergences as expected, so I doubt there maybe a bug in Tensorflow's implementation for dilated convolution.

And, I tried using tf.nn.conv2d() by data format NCHW, then the model convergences quickly as expected, see example in samples/tf_conv2d_NCHW, so there is a bug in Tensorflow's dilated convolution with data format NHWC.

  • tf.nn.conv2d() with data format NHWC implementation is in branch tf_dilated_conv
  • tf.nn.conv2d() with data format NCHW implementation is in branch tf_dilated_conv_channel_first

Samples

Samples are in folder samples.

How to run it

step1: process data

process data by preprocess_data.py, following the command:

python preprocess_data.py --wave_dir=corpus\wavs --mel_dir=corpus\mels --data_dir=corpus

step2: train model

python train.py --filelist=xxx --wave_dir=xxx --lc_dir=xxx

model parameters are in file params.py

Issues

tf.nn.conv2d for dilated convlution does not covergence

In my first implementation of WaveGlow, I used tf.nn.conv2d to do dilated convolutions, the 3D Tensor(B*T*depth) is reshaped to 4D Tensor (B*1*T*depth), and then leverage tf.nn.conv2d to do dilated convolution, but after many experiments I found that tf.nn.conv2d with dilated convolution does not convergence as expected. For a long time, I have suspected that there maybe a bug in my implementation.

  • with a learning_rate=1e-4, the model does not convergence even after 652K steps.
  • with a learning_rate=1e-3, the model does not convergence even after 552K steps.

Example waves by tf.nn.conv2d are in samples/tf_conv2d_as_dilated_conv

In implementation b04901014/waveglow-tensorflow, the author also used tf.nn.conv2d for dilated convolution, this code convergence but very very slow. So there maybe something wrong in my usage.

VERIFIED: tf.nn.conv2d with data format NCHW convergences, but NHWC does not convergence.

Customized dilated 1D convolution

tf.nn.conv2d() for dilated convolution did not convergence as expected in my experiments, so I changed the dilated convolution to implementation from tensorflow-wavenet.

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Tensorflow Implementation of WaveGlow

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