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# Rate-Distortion-Optimized Variational Auto-Encoder | ||
# Deep REDundancy (DRED) with RDO-VAE | ||
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## Setup | ||
The python code requires python >= 3.6 and has been tested with python 3.6 and python 3.10. To install requirements run | ||
This is a rate-distortion-optimized variational autoencoder (RDO-VAE) designed | ||
to coding redundancy information. Pre-trained models are provided as C code | ||
in the dnn/ directory with the corresponding model in dnn/models/ directory | ||
(name starts with rdovae_). If you don't want to train a new DRED model, you can | ||
skip straight to the Inference section. | ||
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## Data preparation | ||
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For data preparation you need to build Opus as detailed in the top-level README. | ||
You will need to use the --enable-dred configure option. | ||
The build will produce an executable named "dump_data". | ||
To prepare the training data, run: | ||
``` | ||
python -m pip install -r requirements.txt | ||
./dump_data -train in_speech.pcm out_features.f32 out_speech.pcm | ||
``` | ||
Where the in_speech.pcm speech file is a raw 16-bit PCM file sampled at 16 kHz. | ||
The speech data used for training the model can be found at: | ||
https://media.xiph.org/lpcnet/speech/tts_speech_negative_16k.sw | ||
The out_speech.pcm file isn't needed for DRED, but it is needed to train | ||
the FARGAN vocoder (see dnn/torch/fargan/ for details). | ||
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## Training | ||
To generate training data use dump date from the main LPCNet repo | ||
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To perform training, run the following command: | ||
``` | ||
./dump_data -train 16khz_speech_input.s16 features.f32 data.s16 | ||
python ./train_rdovae.py --cuda-visible-devices 0 --sequence-length 400 --split-mode random_split --state-dim 80 --batch-size 512 --epochs 400 --lambda-max 0.04 --lr 0.003 --lr-decay-factor 0.0001 out_features.f32 output_dir | ||
``` | ||
The final model will be in output_dir/checkpoints/chechpoint_400.pth. | ||
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To train the model, simply run | ||
The model can be converted to C using: | ||
``` | ||
python train_rdovae.py features.f32 output_folder | ||
python export_rdovae_weights.py output_dir/checkpoints/chechpoint_400.pth dred_c_dir | ||
``` | ||
which will create a number of C source and header files in the fargan_c_dir directory. | ||
Copy these files to the opus/dnn/ directory (replacing the existing ones) and recompile Opus. | ||
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To train on CUDA device add `--cuda-visible-devices idx`. | ||
## Inference | ||
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## ToDo | ||
- Upload checkpoints and add URLs | ||
DRED is integrated within the Opus codec and can be evaluated using the opus_demo | ||
executable. For example: | ||
``` | ||
./opus_demo voip 16000 1 64000 -loss 50 -dred 100 -sim_loss 50 input.pcm output.pcm | ||
``` | ||
Will tell the encoder to encode a 16 kHz raw audio file at 64 kb/s using up to 1 second | ||
of redundancy (units are based on 10-ms) and then simulate 50% loss. Refer to `opus_demo --help` | ||
for more details. |