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Accelerating Diffusion-based Singing Voice Conversion through Consistency Distillation
This is an implement of Consistency Models for accelerating diffusion-based singing voice conversion. The overall architecture follows "Leveraging Diverse Semantic-based Audio Pretrained Models for Singing Voice Conversion" (2024 IEEE Spoken Language Technology Workshop), only a slightly modification is applied on acoustic model. Specifically,
- The acoustic model is a conformer which generates a coarse spectrogram and a diffusion decoder based on Bidirectional Non-Causal Dilated CNN which polish the former spectrogram for better. This is similar to CoMoSpeech: One-Step Speech and Singing Voice Synthesis via Consistency Model
- To accelerate diffusion model, we apply consistency distillation from Consistency Models. For teacher model, the diffusion schedule of the diffusion decoder follows karras diffusion. For distilling teacher model, the condition encoder and the conformer part of acoustic model are frozen while the diffusion decoder model is updated via exponential moving average. See Figure above for details.
There are five stages in total:
- Data preparation
- Features extraction
- Teacher Model Training
- Consistency Distillation
- Inference/conversion
1. Data Preparation
Dataset Download
By default, we utilize the five datasets for training: M4Singer, Opencpop, OpenSinger, SVCC, and VCTK. How to download them is detailed here.
Configuration
Specify the dataset paths in exp_config.json
. Note that you can change the dataset
list to use your preferred datasets.
"dataset": [
"m4singer",
"opencpop",
"opensinger",
"svcc",
"vctk"
],
"dataset_path": {
// TODO: Fill in your dataset path
"m4singer": "[M4Singer dataset path]",
"opencpop": "[Opencpop dataset path]",
"opensinger": "[OpenSinger dataset path]",
"svcc": "[SVCC dataset path]",
"vctk": "[VCTK dataset path]"
},
2. Features Extraction
Content-based Pretrained Models Download
By default, we utilize the Whisper and ContentVec to extract content features. How to download them is detailed here.
Configuration
Specify the dataset path and the output path for saving the processed data and the training model in exp_config.json
:
// TODO: Fill in the output log path
"log_dir": "[Your path to save logs and checkpoints]",
"preprocess": {
// TODO: Fill in the output data path
"processed_dir": "[Your path to save processed data]",
...
},
Run
Run the run.sh
as the preproces stage (set --stage 1
).
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 1
Note: The CUDA_VISIBLE_DEVICES
is set as "0"
in default. You can change it when running run.sh
by specifying such as --gpu "1"
.
3. Teacher Model Training
Configuration
Set the distill
in config/comosvc.json
to false
for teacher model training, you can also specify the detailed configuration for conformer encoder and diffusion process here:
"comosvc":{
"distill": false,
// conformer encoder
"input_dim": 384,
"output_dim": 100,
"n_heads": 2,
"n_layers": 6,
"filter_channels":512,
// karras diffusion
"P_mean": -1.2,
"P_std": 1.2,
"sigma_data": 0.5,
"sigma_min": 0.002,
"sigma_max": 80,
"rho": 7,
"n_timesteps": 40,
},
We provide the default hyparameters in the exp_config.json
. They can work on single NVIDIA-24g GPU. You can adjust them based on you GPU machines.
"train": {
"batch_size": 32,
...
"adamw": {
"lr": 2.0e-4
},
...
}
Run
Run the run.sh
as the training stage (set --stage 2
). Specify a experimental name to run the following command. The tensorboard logs and checkpoints will be saved in [Your path to save logs and checkpoints]/[YourExptName]
.
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 2 --name [YourExptName]
Note: The CUDA_VISIBLE_DEVICES
is set as "0"
in default. You can specify it when running run.sh
such as:
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 2 --name [YourExptName] --gpu "0,1,2,3"
4. Consistency Distillation
Configuration
Set the distill
in config/comosvc.json
to true
for teacher model training, and specify the teacher_model_path
for consistency distillation. You can also specify the detailed configuration for conformer encoder and diffusion process here:
"model": {
"teacher_model_path":"[Your_teacher_model_checkpoint].bin",
...
"comosvc":{
"distill": true,
// conformer encoder
"input_dim": 384,
"output_dim": 100,
"n_heads": 2,
"n_layers": 6,
"filter_channels":512,
// karras diffusion
"P_mean": -1.2,
"P_std": 1.2,
"sigma_data": 0.5,
"sigma_min": 0.002,
"sigma_max": 80,
"rho": 7,
"n_timesteps": 40,
},
We provide the default hyparameters in the exp_config.json
. They can work on single NVIDIA-24g GPU. You can adjust them based on you GPU machines.
"train": {
"batch_size": 32,
...
"adamw": {
"lr": 2.0e-4
},
...
}
Run
Run the run.sh
as the training stage (set --stage 2
). Specify a experimental name to run the following command. The tensorboard logs and checkpoints will be saved in [Your path to save logs and checkpoints]/[YourExptName]
.
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 2 --name [YourExptName]
Note: The CUDA_VISIBLE_DEVICES
is set as "0"
in default. You can specify it when running run.sh
such as:
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 2 --name [YourExptName] --gpu "0,1,2,3"
5. Inference/Conversion
Pretrained Vocoder Download
We fine-tune the official BigVGAN pretrained model with over 120 hours singing voice data. The benifits of fine-tuning has been investigated in our paper (see this demo page). The final pretrained singing voice vocoder is released here (called Amphion Singing BigVGAN
).
Run
For inference/conversion, you need to specify the following configurations when running run.sh
:
Parameters | Description | Example |
---|---|---|
--infer_expt_dir |
The experimental directory which contains checkpoint |
[Your path to save logs and checkpoints]/[YourExptName] |
--infer_output_dir |
The output directory to save inferred audios. | [Your path to save logs and checkpoints]/[YourExptName]/result |
--infer_source_file or --infer_source_audio_dir |
The inference source (can be a json file or a dir). | The infer_source_file could be [Your path to save processed data]/[YourDataset]/test.json , and the infer_source_audio_dir is a folder which includes several audio files (*.wav, *.mp3 or *.flac). |
--infer_target_speaker |
The target speaker you want to convert into. You can refer to [Your path to save logs and checkpoints]/[YourExptName]/singers.json to choose a trained speaker. |
For opencpop dataset, the speaker name would be opencpop_female1 . |
--infer_key_shift |
How many semitones you want to transpose. | "autoshfit" (by default), 3 , -3 , etc. |
For example, if you want to make opencpop_female1
sing the songs in the [Your Audios Folder]
, just run:
cd Amphion
sh egs/svc/DiffComoSVC/run.sh --stage 3 --gpu "0" \
--infer_expt_dir [Your path to save logs and checkpoints]/[YourExptName] \
--infer_output_dir [Your path to save logs and checkpoints]/[YourExptName]/result \
--infer_source_audio_dir [Your Audios Folder] \
--infer_target_speaker "opencpop_female1" \
--infer_key_shift "autoshift"
Specially, you can configurate the inference steps for teacher model by setting inference
at exp_config
(student model is always one-step sampling):
"inference": {
"comosvc": {
"inference_steps": 40
}
}