alcm / README.md
inLine-XJY's picture
Upload 335 files
2b5b9ef verified
|
raw
history blame
6.55 kB

AudioLCM: Text-to-Audio Generation with Latent Consistency Models

Huadai Liu, Rongjie Huang, Yang Liu, Hengyuan Cao, Jialei Wang, Xize Cheng, Siqi Zheng, Zhou Zhao

PyTorch Implementation of [AudioLCM]: a efficient and high-quality text-to-audio generation with latent consistency model.

We provide our implementation and pretrained models as open source in this repository.

Visit our demo page for audio samples.

News

  • June, 2024: [AudioLCM] released in Github.

Quick Started

We provide an example of how you can generate high-fidelity samples quickly using AudioLCM.

To try on your own dataset, simply clone this repo in your local machine provided with NVIDIA GPU + CUDA cuDNN and follow the below instructions.

Support Datasets and Pretrained Models

Simply run following command to download the weights from Google drive. Download bert-base-uncased weights from Hugging Face. Down load t5-v1_1-large weights from Hugging Face. Download CLAP weights from Hugging Face.

Download:
    audiolcm.ckpt and put it into ./ckpts  
    BigVGAN vocoder and put it into ./vocoder/logs/bigvnat16k93.5w  
    t5-v1_1-large and put it into ./ldm/modules/encoders/CLAP
    bert-base-uncased and put it into ./ldm/modules/encoders/CLAP
    CLAP_weights_2022.pth and put it into ./wav_evaluation/useful_ckpts/CLAP

Dependencies

See requirements in requirement.txt:

Inference with pretrained model

python scripts/txt2audio_for_lcm.py  --ddim_steps 2 -b configs/audiolcm.yaml --sample_rate 16000 --vocoder-ckpt  vocoder/logs/bigvnat16k93.5w --outdir results --test-dataset audiocaps  -r ckpt/audiolcm.ckpt

Train

dataset preparation

We can't provide the dataset download link for copyright issues. We provide the process code to generate melspec.
Before training, we need to construct the dataset information into a tsv file, which includes name (id for each audio), dataset (which dataset the audio belongs to), audio_path (the path of .wav file),caption (the caption of the audio) ,mel_path (the processed melspec file path of each audio). We provide a tsv file of audiocaps test set: ./audiocaps_test_16000_struct.tsv as a sample.

generate the melspec file of audio

Assume you have already got a tsv file to link each caption to its audio_path, which mean the tsv_file have "name","audio_path","dataset" and "caption" columns in it. To get the melspec of audio, run the following command, which will save mels in ./processed

python ldm/data/preprocess/mel_spec.py --tsv_path tmp.tsv

Add the duration into the tsv file

python ldm/data/preprocess/add_duration.py

Train variational autoencoder

Assume we have processed several datasets, and save the .tsv files in data/*.tsv . Replace data.params.spec_dir_path with the data(the directory that contain tsvs) in the config file. Then we can train VAE with the following command. If you don't have 8 gpus in your machine, you can replace --gpus 0,1,...,gpu_nums

python main.py --base configs/train/vae.yaml -t --gpus 0,1,2,3,4,5,6,7

The training result will be save in ./logs/

train latent diffsuion

After Trainning VAE, replace model.params.first_stage_config.params.ckpt_path with your trained VAE checkpoint path in the config file. Run the following command to train Diffusion model

python main.py --base configs/autoencoder1d.yaml -t  --gpus 0,1,2,3,4,5,6,7

The training result will be save in ./logs/

Evaluation

generate audiocaps samples

python scripts/txt2audio_for_lcm.py  --ddim_steps 2 -b configs/audiolcm.yaml --sample_rate 16000 --vocoder-ckpt  vocoder/logs/bigvnat16k93.5w --outdir results --test-dataset audiocaps  -r ckpt/audiolcm.ckpt

calculate FD,FAD,IS,KL

install audioldm_eval by

git clone git@github.com:haoheliu/audioldm_eval.git

Then test with:

python scripts/test.py --pred_wavsdir {the directory that saves the audios you generated} --gt_wavsdir {the directory that saves audiocaps test set waves}

calculate Clap_score

python wav_evaluation/cal_clap_score.py --tsv_path {the directory that saves the audios you generated}/result.tsv

Acknowledgements

This implementation uses parts of the code from the following Github repos: Make-An-Audio CLAP, Stable Diffusion, as described in our code.

Disclaimer

Any organization or individual is prohibited from using any technology mentioned in this paper to generate someone's speech without his/her consent, including but not limited to government leaders, political figures, and celebrities. If you do not comply with this item, you could be in violation of copyright laws.