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Demo Code for "Talking Head Anime from a Single Image 2: More Expressive"

This repository contains demo programs for the Talking Head Anime from a Single Image 2: More Expressive project. Similar to the previous version, it has two programs:

Try the Manual Poser on Google Colab

If you do not have the required hardware (discussed below) or do not want to download the code and set up an environment to run it, click this link to try running the manual poser on Google Colab.

Hardware Requirements

Both programs require a recent and powerful Nvidia GPU to run. I could personally ran them at good speed with the Nvidia Titan RTX. However, I think recent high-end gaming GPUs such as the RTX 2080, the RTX 3080, or better would do just as well.

The ifacialmocap_puppeteer requires an iOS device that is capable of computing blend shape parameters from a video feed. This means that the device must be able to run iOS 11.0 or higher and must have a TrueDepth front-facing camera. (See this page for more info.) In other words, if you have the iPhone X or something better, you should be all set. Personally, I have used an iPhone 12 mini.

Software Requirements

Both programs were written in Python 3. To run the GUIs, the following software packages are required:

In particular, I created the environment to run the programs with Anaconda, using the following commands:

> conda create -n talking-head-anime-2-demo python=3.8
> conda activate talking-head-anime-2-demo
> conda install pytorch torchvision cudatoolkit=10.2 -c pytorch
> conda install scipy
> pip install wxPython
> conda install matplotlib

Note: You may find that the particular versions of Python (3.8) and CUDA Toolkit (10.2) might not work for your particular computer setup. When this happens, replace these versions with those that work with your hardware. The command would become:

> conda create -n talking-head-anime-2-demo python=[YOUR-PYTHON-VERSION]
> conda activate talking-head-anime-2-demo
> conda install pytorch torchvision cudatoolkit=[YOUR-CUDA-TOOLKIT-VERSION] -c pytorch
> conda install scipy
> pip install wxPython
> conda install matplotlib

In general, the latest version of Python and the latest version of CUDA Toolkit shown on PyTorch's website would work.

To run the Jupyter notebook version of the manual_poser, you also need:

This means that, in addition to the commands above, you also need to run:

> conda install -c conda-forge notebook
> conda install -c conda-forge ipywidgets
> jupyter nbextension enable --py widgetsnbextension

Lastly, the ifacialmocap_puppeteer requires iFacialMocap, which is available in the App Store for 980 yen. You also need to install the paired desktop application on your PC or Mac. (Linux users, I'm sorry!) Your iOS and your computer must also use the same network. (For example, you may connect them to the same wireless router.)

Automatic Environment Construction with Anaconda

You can also use Anaconda to download and install all Python packages in one command. Open your shell, change the directory to where you clone the repository, and run:

conda env create -f environment.yml

This will create an environment called talking-head-anime-2-demo containing all the required Python packages.

Download the Model

Before running the programs, you need to download the model files from this Dropbox link and unzip it to the data folder of the repository's directory. In the end, the data folder should look like:

+ data
  + illust
    - waifu_00.png
    - waifu_01.png
    - waifu_02.png
    - waifu_03.png
    - waifu_04.png
    - waifu_05.png
    - waifu_06.png
    - waifu_06_buggy.png
  - combiner.pt
  - eyebrow_decomposer.pt
  - eyebrow_morphing_combiner.pt
  - face_morpher.pt
  - two_algo_face_rotator.pt

The model files are distributed with the Creative Commons Attribution 4.0 International License, which means that you can use them for commercial purposes. However, if you distribute them, you must, among other things, say that I am the creator.

Running the manual_poser Desktop Application

Open a shell. Change your working directory to the repository's root directory. Then, run:

> python tha2/app/manual_poser.py

Note that before running the command above, you might have to activate the Python environment that contains the required packages. If you created an environment using Anaconda as was discussed above, you need to run

> conda activate talking-head-anime-2-demo

if you have not already activated the environment.

Running the manual_poser Jupyter Notebook

Open a shell. Activate the environment. Change your working directory to the repository's root directory. Then, run:

> jupyter notebook

A browser window should open. In it, open tha2.ipynb. Once you have done so, you should see that it only has one cell. Run it. Then, scroll down to the end of the document, and you'll see the GUI there.

Running the ifacialmocap_puppeteer

First, run iFacialMocap on your iOS device. It should show you the device's IP address. Jot it down. Keep the app open.

IP address in iFacialMocap screen

Then, run the companion desktop application.

iFaciaMocap desktop application

Click "Open Advanced Setting >>". The application should expand.

Click the 'Open Advanced Setting >>' button.

Click the button that says "Maya" on the right side.

Click the 'Maya' button.

Then, click "Blender."

Select 'Blender' mode in the desktop application

Next, replace the IP address on the left side with your iOS device's IP address.

Replace IP address with device's IP address.

Click "Connect to Blender."

Click 'Connect to Blender.'

Open a shell. Activate the environment. Change your working directory to the repository's root directory. Then, run:

> python tha2/app/ifacialmocap_puppeteer.py

If the programs are connected properly, you should see that the many progress bars at the bottom of the ifacialmocap_puppeteer window should move when you move your face in front of the iOS device's front-facing camera.

You should see the progress bars moving.

If all is well, load an character image, and it should follow your facial movement.

Constraints on Input Images

In order for the model to work well, the input image must obey the following constraints:

Note, however, that regardless of the size of the input image, the programs will always resize it to 256x256 and will always output a 256x256 image. This is an intrinsic limitation of the system.

Image specification

Citation

If your academic work benefits from the code in this repository, please cite the project's web page as follows:

Pramook Khungurn. Talking Head Anime from a Single Image 2: More Expressive. http://pkhungurn.github.io/talking-head-anime-2/, 2021. Accessed: YYYY-MM-DD.

You can also used the following BibTex entry:

@misc{Khungurn:2021,
    author = {Pramook Khungurn},
    title = {Talking Head Anime from a Single Image 2: More Expressive},
    howpublished = {\url{http://pkhungurn.github.io/talking-head-anime-2/}},
    year = 2021,
    note = {Accessed: YYYY-MM-DD},
}

Disclaimer

While the author is an employee of Google Japan, this software is not Google's product and is not supported by Google.

The copyright of this software belongs to me as I have requested it using the IARC process. However, Google might claim the rights to the intellectual property of this invention.

The code is released under the MIT license. The model is released under the Creative Commons Attribution 4.0 International License.