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A Pytorch implementation of WaveVAE ("Parallel Neural Text-to-Speech")

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WaveVAE

work in progress

Note that my implementation isn't stable yet.

A Pytorch Implementation of WaveVAE (Mel Spectrogram --> Waveform)

part of "Parallel Neural Text-to-Speech"

Requirements

PyTorch 0.4.1 & python 3.6 & Librosa

Examples

Step 1. Download Dataset

Step 2. Preprocessing (Preparing Mel Spectrogram)

python preprocessing.py --in_dir ljspeech --out_dir DATASETS/ljspeech

Step 3. Train Model

python train.py --model_name wavevae_1 --batch_size 4 --num_gpu 2

Step 4. Synthesize

--load_step CHECKPOINT : the # of the model's global training step (also depicted in the trained weight file)

python synthesize.py --model_name wavevae_1 --load_step 10000 --num_samples 5

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A Pytorch implementation of WaveVAE ("Parallel Neural Text-to-Speech")

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