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--- |
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title: MMAudio |
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emoji: π |
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colorFrom: blue |
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colorTo: indigo |
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sdk: gradio |
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app_file: app.py |
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pinned: true |
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short_description: Video to Audio |
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--- |
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# [Taming Multimodal Joint Training for High-Quality Video-to-Audio Synthesis](https://hkchengrex.github.io/MMAudio) |
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[Ho Kei Cheng](https://hkchengrex.github.io/), [Masato Ishii](https://scholar.google.co.jp/citations?user=RRIO1CcAAAAJ), [Akio Hayakawa](https://scholar.google.com/citations?user=sXAjHFIAAAAJ), [Takashi Shibuya](https://scholar.google.com/citations?user=XCRO260AAAAJ), [Alexander Schwing](https://www.alexander-schwing.de/), [Yuki Mitsufuji](https://www.yukimitsufuji.com/) |
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University of Illinois Urbana-Champaign, Sony AI, and Sony Group Corporation |
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[[Paper (being prepared)]](https://hkchengrex.github.io/MMAudio) [[Project Page]](https://hkchengrex.github.io/MMAudio) |
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**Note: This repository is still under construction. Single-example inference should work as expected. The training code will be added. Code is subject to non-backward-compatible changes.** |
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## Highlight |
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MMAudio generates synchronized audio given video and/or text inputs. |
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Our key innovation is multimodal joint training which allows training on a wide range of audio-visual and audio-text datasets. |
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Moreover, a synchronization module aligns the generated audio with the video frames. |
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## Results |
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(All audio from our algorithm MMAudio) |
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Videos from Sora: |
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https://github.com/user-attachments/assets/82afd192-0cee-48a1-86ca-bd39b8c8f330 |
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Videos from MovieGen/Hunyuan Video/VGGSound: |
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https://github.com/user-attachments/assets/29230d4e-21c1-4cf8-a221-c28f2af6d0ca |
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For more results, visit https://hkchengrex.com/MMAudio/video_main.html. |
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## Installation |
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We have only tested this on Ubuntu. |
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### Prerequisites |
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We recommend using a [miniforge](https://github.com/conda-forge/miniforge) environment. |
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- Python 3.8+ |
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- PyTorch **2.5.1+** and corresponding torchvision/torchaudio (pick your CUDA version https://pytorch.org/) |
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- ffmpeg<7 ([this is required by torchaudio](https://pytorch.org/audio/master/installation.html#optional-dependencies), you can install it in a miniforge environment with `conda install -c conda-forge 'ffmpeg<7'`) |
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**Clone our repository:** |
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```bash |
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git clone https://github.com/hkchengrex/MMAudio.git |
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``` |
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**Install with pip:** |
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```bash |
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cd MMAudio |
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pip install -e . |
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``` |
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(If you encounter the File "setup.py" not found error, upgrade your pip with pip install --upgrade pip) |
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**Pretrained models:** |
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The models will be downloaded automatically when you run the demo script. MD5 checksums are provided in `mmaudio/utils/download_utils.py` |
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| Model | Download link | File size | |
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| -------- | ------- | ------- | |
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| Flow prediction network, small 16kHz | <a href="https://databank.illinois.edu/datafiles/k6jve/download" download="mmaudio_small_16k.pth">mmaudio_small_16k.pth</a> | 601M | |
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| Flow prediction network, small 44.1kHz | <a href="https://databank.illinois.edu/datafiles/864ya/download" download="mmaudio_small_44k.pth">mmaudio_small_44k.pth</a> | 601M | |
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| Flow prediction network, medium 44.1kHz | <a href="https://databank.illinois.edu/datafiles/pa94t/download" download="mmaudio_medium_44k.pth">mmaudio_medium_44k.pth</a> | 2.4G | |
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| Flow prediction network, large 44.1kHz **(recommended)** | <a href="https://databank.illinois.edu/datafiles/4jx76/download" download="mmaudio_large_44k.pth">mmaudio_large_44k.pth</a> | 3.9G | |
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| 16kHz VAE | <a href="https://github.com/hkchengrex/MMAudio/releases/download/v0.1/v1-16.pth">v1-16.pth</a> | 655M | |
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| 16kHz BigVGAN vocoder |<a href="https://github.com/hkchengrex/MMAudio/releases/download/v0.1/best_netG.pt">best_netG.pt</a> | 429M | |
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| 44.1kHz VAE |<a href="https://github.com/hkchengrex/MMAudio/releases/download/v0.1/v1-44.pth">v1-44.pth</a> | 1.2G | |
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| Synchformer visual encoder |<a href="https://github.com/hkchengrex/MMAudio/releases/download/v0.1/synchformer_state_dict.pth">synchformer_state_dict.pth</a> | 907M | |
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The 44.1kHz vocoder will be downloaded automatically. |
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The expected directory structure (full): |
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```bash |
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MMAudio |
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βββ ext_weights |
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β βββ best_netG.pt |
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β βββ synchformer_state_dict.pth |
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β βββ v1-16.pth |
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β βββ v1-44.pth |
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βββ weights |
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β βββ mmaudio_small_16k.pth |
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β βββ mmaudio_small_44k.pth |
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β βββ mmaudio_medium_44k.pth |
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β βββ mmaudio_large_44k.pth |
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βββ ... |
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``` |
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The expected directory structure (minimal, for the recommended model only): |
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```bash |
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MMAudio |
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βββ ext_weights |
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β βββ synchformer_state_dict.pth |
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β βββ v1-44.pth |
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βββ weights |
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β βββ mmaudio_large_44k.pth |
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βββ ... |
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``` |
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## Demo |
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By default, these scripts use the `large_44k` model. |
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In our experiments, inference only takes around 6GB of GPU memory (in 16-bit mode) which should fit in most modern GPUs. |
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### Command-line interface |
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With `demo.py` |
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```bash |
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python demo.py --duration=8 --video=<path to video> --prompt "your prompt" |
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``` |
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The output (audio in `.flac` format, and video in `.mp4` format) will be saved in `./output`. |
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See the file for more options. |
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Simply omit the `--video` option for text-to-audio synthesis. |
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The default output (and training) duration is 8 seconds. Longer/shorter durations could also work, but a large deviation from the training duration may result in a lower quality. |
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### Gradio interface |
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Supports video-to-audio and text-to-audio synthesis. |
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``` |
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python gradio_demo.py |
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``` |
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### Known limitations |
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1. The model sometimes generates undesired unintelligible human speech-like sounds |
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2. The model sometimes generates undesired background music |
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3. The model struggles with unfamiliar concepts, e.g., it can generate "gunfires" but not "RPG firing". |
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We believe all of these three limitations can be addressed with more high-quality training data. |
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## Training |
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Work in progress. |
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## Evaluation |
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Work in progress. |
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## Acknowledgement |
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Many thanks to: |
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- [Make-An-Audio 2](https://github.com/bytedance/Make-An-Audio-2) for the 16kHz BigVGAN pretrained model |
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- [BigVGAN](https://github.com/NVIDIA/BigVGAN) |
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- [Synchformer](https://github.com/v-iashin/Synchformer) |