# DiffSinger: Singing Voice Synthesis via Shallow Diffusion Mechanism [![arXiv](https://img.shields.io/badge/arXiv-Paper-.svg)](https://arxiv.org/abs/2105.02446) [![GitHub Stars](https://img.shields.io/github/stars/MoonInTheRiver/DiffSinger?style=social)](https://github.com/MoonInTheRiver/DiffSinger) [![downloads](https://img.shields.io/github/downloads/MoonInTheRiver/DiffSinger/total.svg)](https://github.com/MoonInTheRiver/DiffSinger/releases) ## DiffSinger (MIDI SVS | A version) ### 0. Data Acquirement For Opencpop dataset: Please strictly follow the instructions of [Opencpop](https://wenet.org.cn/opencpop/). We have no right to give you the access to Opencpop. The pipeline below is designed for Opencpop dataset: ### 1. Preparation #### Data Preparation a) Download and extract Opencpop, then create a link to the dataset folder: `ln -s /xxx/opencpop data/raw/` b) Run the following scripts to pack the dataset for training/inference. ```sh export PYTHONPATH=. CUDA_VISIBLE_DEVICES=0 python data_gen/tts/bin/binarize.py --config usr/configs/midi/cascade/opencs/aux_rel.yaml # `data/binary/opencpop-midi-dp` will be generated. ``` #### Vocoder Preparation We provide the pre-trained model of [HifiGAN-Singing](https://github.com/MoonInTheRiver/DiffSinger/releases/download/pretrain-model/0109_hifigan_bigpopcs_hop128.zip) which is specially designed for SVS with NSF mechanism. Please unzip this file into `checkpoints` before training your acoustic model. (Update: You can also move [a ckpt with more training steps](https://github.com/MoonInTheRiver/DiffSinger/releases/download/pretrain-model/model_ckpt_steps_1512000.ckpt) into this vocoder directory) This singing vocoder is trained on ~70 hours singing data, which can be viewed as a universal vocoder. #### Exp Name Preparation ```bash export MY_FS_EXP_NAME=0302_opencpop_fs_midi export MY_DS_EXP_NAME=0303_opencpop_ds58_midi ``` ``` . |--data |--raw |--opencpop |--segments |--transcriptions.txt |--wavs |--checkpoints |--MY_FS_EXP_NAME (optional) |--MY_DS_EXP_NAME (optional) |--0109_hifigan_bigpopcs_hop128 |--model_ckpt_steps_1512000.ckpt |--config.yaml ``` ### 2. Training Example First, you need a pre-trained FFT-Singer checkpoint. You can use the pre-trained model, or train FFT-Singer from scratch, run: ```sh CUDA_VISIBLE_DEVICES=0 python tasks/run.py --config usr/configs/midi/cascade/opencs/aux_rel.yaml --exp_name $MY_FS_EXP_NAME --reset ``` Then, to train DiffSinger, run: ```sh CUDA_VISIBLE_DEVICES=0 python tasks/run.py --config usr/configs/midi/cascade/opencs/ds60_rel.yaml --exp_name $MY_DS_EXP_NAME --reset ``` Remember to adjust the "fs2_ckpt" parameter in `usr/configs/midi/cascade/opencs/ds60_rel.yaml` to fit your path. ### 3. Inference from packed test set ```sh CUDA_VISIBLE_DEVICES=0 python tasks/run.py --config usr/configs/midi/cascade/opencs/ds60_rel.yaml --exp_name $MY_DS_EXP_NAME --reset --infer ``` We also provide: - the pre-trained model of DiffSinger; - the pre-trained model of FFT-Singer; They can be found in [here](https://github.com/MoonInTheRiver/DiffSinger/releases/download/pretrain-model/adjust-receptive-field.zip). Remember to put the pre-trained models in `checkpoints` directory. ### 4. Inference from raw inputs ```sh python inference/svs/ds_cascade.py --config usr/configs/midi/cascade/opencs/ds60_rel.yaml --exp_name $MY_DS_EXP_NAME ``` Raw inputs: ``` inp = { 'text': '小酒窝长睫毛AP是你最美的记号', 'notes': 'C#4/Db4 | F#4/Gb4 | G#4/Ab4 | A#4/Bb4 F#4/Gb4 | F#4/Gb4 C#4/Db4 | C#4/Db4 | rest | C#4/Db4 | A#4/Bb4 | G#4/Ab4 | A#4/Bb4 | G#4/Ab4 | F4 | C#4/Db4', 'notes_duration': '0.407140 | 0.376190 | 0.242180 | 0.509550 0.183420 | 0.315400 0.235020 | 0.361660 | 0.223070 | 0.377270 | 0.340550 | 0.299620 | 0.344510 | 0.283770 | 0.323390 | 0.360340', 'input_type': 'word' } # user input: Chinese characters or, inp = { 'text': '小酒窝长睫毛AP是你最美的记号', 'ph_seq': 'x iao j iu w o ch ang ang j ie ie m ao AP sh i n i z ui m ei d e j i h ao', 'note_seq': 'C#4/Db4 C#4/Db4 F#4/Gb4 F#4/Gb4 G#4/Ab4 G#4/Ab4 A#4/Bb4 A#4/Bb4 F#4/Gb4 F#4/Gb4 F#4/Gb4 C#4/Db4 C#4/Db4 C#4/Db4 rest C#4/Db4 C#4/Db4 A#4/Bb4 A#4/Bb4 G#4/Ab4 G#4/Ab4 A#4/Bb4 A#4/Bb4 G#4/Ab4 G#4/Ab4 F4 F4 C#4/Db4 C#4/Db4', 'note_dur_seq': '0.407140 0.407140 0.376190 0.376190 0.242180 0.242180 0.509550 0.509550 0.183420 0.315400 0.315400 0.235020 0.361660 0.361660 0.223070 0.377270 0.377270 0.340550 0.340550 0.299620 0.299620 0.344510 0.344510 0.283770 0.283770 0.323390 0.323390 0.360340 0.360340', 'is_slur_seq': '0 0 0 0 0 0 0 0 1 0 0 1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0', 'input_type': 'phoneme' } # input like Opencpop dataset. ``` ### 5. Some issues. a) the HifiGAN-Singing is trained on our [vocoder dataset](https://dl.acm.org/doi/abs/10.1145/3474085.3475437) and the training set of [PopCS](https://arxiv.org/abs/2105.02446). Opencpop is the out-of-domain dataset (unseen speaker). This may cause the deterioration of audio quality, and we are considering fine-tuning this vocoder on the training set of Opencpop. b) in this version of codes, we used the melody frontend ([lyric + MIDI]->[F0+ph_dur]) to predict F0 contour and phoneme duration. c) generated audio demos can be found in [MY_DS_EXP_NAME](https://github.com/MoonInTheRiver/DiffSinger/releases/download/pretrain-model/adjust-receptive-field.zip).