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# Text-to-Audio with Latent Diffusion Model | |
[![arXiv](https://img.shields.io/badge/arXiv-Paper-<COLOR>.svg)](https://arxiv.org/abs/2304.00830) | |
[![demo](https://img.shields.io/badge/SVC-Demo-red)](https://audit-demo.github.io/) | |
[![model](https://img.shields.io/badge/%F0%9F%A4%97%20HuggingFace-Models-pink)](https://huggingface.co/amphion/text_to_audio) | |
[![hf](https://img.shields.io/badge/%F0%9F%A4%97%20HuggingFace-Spaces-yellow)](https://huggingface.co/spaces/amphion/Text-to-Audio) | |
[![openxlab](https://cdn-static.openxlab.org.cn/app-center/openxlab_app.svg)](https://openxlab.org.cn/apps/detail/Amphion/Text-to-Audio) | |
This is the quicktour for training a text-to-audio model with the popular and powerful generative model: [Latent Diffusion Model](https://arxiv.org/abs/2112.10752). Specially, this recipe is also the official implementation of the text-to-audio generation part of our NeurIPS 2023 paper "[AUDIT: Audio Editing by Following Instructions with Latent Diffusion Models](https://arxiv.org/abs/2304.00830)". You can check the last part of [AUDIT demos](https://audit-demo.github.io/) to see same text-to-audio examples. | |
<br> | |
<div align="center"> | |
<img src="../../imgs/tta/DiffusionTTA.png" width="65%"> | |
</div> | |
<br> | |
We train this latent diffusion model in two stages: | |
1. In the first stage, we aims to obtain a high-quality VAE (called `AutoencoderKL` in Amphion), in order that we can project | |
the input mel-spectrograms to an efficient, low-dimensional latent space. Specially, we train the VAE with GAN loss to improve the reconstruction quality. | |
1. In the second stage, we aims to obtain a text-controllable diffusion model (called `AudioLDM` in Amphion). We use U-Net architecture diffusion model, and use T5 encoder as text encoder. | |
There are four stages in total for training the text-to-audio model: | |
1. Data preparation and processing | |
2. Train the VAE model | |
3. Train the latent diffusion model | |
4. Inference | |
> **NOTE:** You need to run every command of this recipe in the `Amphion` root path: | |
> ```bash | |
> cd Amphion | |
> ``` | |
## Overview | |
```sh | |
# Train the VAE model | |
sh egs/tta/autoencoderkl/run_train.sh | |
# Train the latent diffusion model | |
sh egs/tta/audioldm/run_train.sh | |
# Inference | |
sh egs/tta/audioldm/run_inference.sh | |
``` | |
## 1. Data preparation and processing | |
### Dataset Download | |
We take [AudioCaps](https://audiocaps.github.io/) as an example, AudioCaps is a dataset of around 44K audio-caption pairs, where each audio clip corresponds to a caption with rich semantic information. We have already processed the dataset. You can download the dataset [here](https://openxlab.org.cn/datasets/Amphion/AudioCaps). | |
### Data Processing | |
- Download AudioCaps dataset to `[Your path to save tta dataset]` and modify `preprocess.processed_dir` in `egs/tta/.../exp_config.json`. | |
```json | |
{ | |
"dataset": [ | |
"AudioCaps" | |
], | |
"preprocess": { | |
// Specify the output root path to save the processed data | |
"processed_dir": "[Your path to save tta dataset]", | |
... | |
} | |
} | |
``` | |
The folder structure of your downloaded data should be similar to: | |
```plaintext | |
.../[Your path to save tta dataset] | |
β£ AudioCaps | |
βΒ Β β£ wav | |
β β β£ ---1_cCGK4M_0_10000.wav | |
β β β£ ---lTs1dxhU_30000_40000.wav | |
β β β£ ... | |
``` | |
- Then you may process the data to mel-specgram and save it as `.npy` format. If you use the data we provide, we have processed all the wav data. | |
- Generate a json file to save the metadata, the json file is like: | |
```json | |
[ | |
{ | |
"Dataset": "AudioCaps", | |
"Uid": "---1_cCGK4M_0_10000", | |
"Caption": "Idling car, train blows horn and passes" | |
}, | |
{ | |
"Dataset": "AudioCaps", | |
"Uid": "---lTs1dxhU_30000_40000", | |
"Caption": "A racing vehicle engine is heard passing by" | |
}, | |
... | |
] | |
``` | |
- Finally, the folder structure is like: | |
```plaintext | |
.../[Your path to save tta dataset] | |
β£ AudioCpas | |
βΒ Β β£ wav | |
β β β£ ---1_cCGK4M_0_10000.wav | |
β β β£ ---lTs1dxhU_30000_40000.wav | |
β β β£ ... | |
βΒ Β β£ mel | |
β β β£ ---1_cCGK4M_0_10000.npy | |
β β β£ ---lTs1dxhU_30000_40000.npy | |
β β β£ ... | |
βΒ Β β£ train.json | |
βΒ Β β£ valid.json | |
βΒ Β β£ ... | |
``` | |
## 2. Training the VAE Model | |
The first stage model is a VAE model trained with GAN loss (called `AutoencoderKL` in Amphion), run the follow commands: | |
```sh | |
sh egs/tta/autoencoderkl/run_train.sh | |
``` | |
## 3. Training the Latent Diffusion Model | |
The second stage model is a condition diffusion model with a T5 text encoder (called `AudioLDM` in Amphion), run the following commands: | |
```sh | |
sh egs/tta/audioldm/run_train.sh | |
``` | |
## 4. Inference | |
Now you can generate audio with your pre-trained latent diffusion model, run the following commands and modify the `text` argument. | |
```sh | |
sh egs/tta/audioldm/run_inference.sh \ | |
--text "A man is whistling" | |
``` | |
## Citations | |
```bibtex | |
@article{wang2023audit, | |
title={AUDIT: Audio Editing by Following Instructions with Latent Diffusion Models}, | |
author={Wang, Yuancheng and Ju, Zeqian and Tan, Xu and He, Lei and Wu, Zhizheng and Bian, Jiang and Zhao, Sheng}, | |
journal={NeurIPS 2023}, | |
year={2023} | |
} | |
@article{liu2023audioldm, | |
title={{AudioLDM}: Text-to-Audio Generation with Latent Diffusion Models}, | |
author={Liu, Haohe and Chen, Zehua and Yuan, Yi and Mei, Xinhao and Liu, Xubo and Mandic, Danilo and Wang, Wenwu and Plumbley, Mark D}, | |
journal={Proceedings of the International Conference on Machine Learning}, | |
year={2023} | |
} | |
``` |