2015-11-01 20:52:46 +08:00
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# Setup
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The following instructions are for Linux and OSX only.
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Please contribute modifications and build instructions if you
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are interested in running this on other operating systems.
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We strongly recommend using the [Docker](https://www.docker.com/)
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container unless you are experienced with building
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Linux software from source.
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Also note that in OSX, you may have to change the hashbangs
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from `python2` to `python`.
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2015-11-05 05:05:33 +08:00
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## Warning for architectures other than 64-bit x86
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See [#42](https://github.com/cmusatyalab/openface/issues/42).
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2015-11-01 20:52:46 +08:00
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## Check out git submodules
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Clone with `--recursive` or run `git submodule init && git submodule update`
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after checking out.
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## Download the models
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2015-11-01 21:09:21 +08:00
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Run [models/get-models.sh](https://github.com/cmusatyalab/openface/blob/master/models/get-models.sh)
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2015-11-01 20:52:46 +08:00
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to download pre-trained OpenFace
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models on the combined CASIA-WebFace and FaceScrub database.
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This also downloads dlib's pre-trained model for face landmark detection.
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This will incur about 500MB of network traffic for the compressed
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models that will decompress to about 1GB on disk.
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Be sure the md5 checksums match the following.
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Use `md5sum` in Linux and `md5` in OSX.
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```
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openface(master)$ md5sum models/{dlib/*.dat,openface/*.{pkl,t7}}
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73fde5e05226548677a050913eed4e04 models/dlib/shape_predictor_68_face_landmarks.dat
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c0675d57dc976df601b085f4af67ecb9 models/openface/celeb-classifier.nn4.v1.pkl
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a59a5ec1938370cd401b257619848960 models/openface/nn4.v1.t7
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```
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## With Docker
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This repo can be deployed as a container with [Docker](https://www.docker.com/)
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for CPU mode.
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Be sure you have checked out the submodules and downloaded
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the models as described above.
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Depending on your Docker configuration, you may need to
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run the docker commands as root.
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To use, place your images in `openface` on your host and
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access them from the shared Docker directory.
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```
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docker build -t openface ./docker
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2015-11-03 04:06:24 +08:00
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docker run -p 9000:9000 -t -i -v $PWD:/openface openface /bin/bash
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2015-11-01 20:52:46 +08:00
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cd /openface
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./demos/compare.py images/examples/{lennon*,clapton*}
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```
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### Docker in OSX
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In OSX, follow the
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[Docker Mac OSX Installation Guide](https://docs.docker.com/installation/mac/)
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and start a docker machine and connect your shell to it
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before trying to build the container.
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In the simplest case, this can be done with:
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```
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docker-machine create --driver virtualbox default
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eval $(docker-machine env default)
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```
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## By hand
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Be sure you have checked out the submodules and downloaded the models as
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described above.
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2015-11-05 21:58:28 +08:00
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See the
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[Dockerfile](https://github.com/cmusatyalab/openface/blob/master/docker/Dockerfile)
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as a reference.
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2015-11-01 20:52:46 +08:00
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This project uses `python2` because of the `opencv`
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and `dlib` dependencies.
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Install the packages the Dockerfile uses with your package manager.
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With `pip2`, install `numpy`, `pandas`, `scipy`, `scikit-learn`, and `scikit-image`.
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Next, manually install the following.
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### OpenCV
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Download [OpenCV 2.4.11](https://github.com/Itseez/opencv/archive/2.4.11.zip)
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and follow their
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[build instructions](http://docs.opencv.org/doc/tutorials/introduction/linux_install/linux_install.html).
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### dlib
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dlib can alternatively by installed from [pypi](https://pypi.python.org/pypi/dlib),
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but might be slower than building manually because they are not
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compiled with AVX support.
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dlib requires boost libraries to be installed.
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To build manually, start by
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downloading
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[dlib v18.16](https://github.com/davisking/dlib/releases/download/v18.16/dlib-18.16.tar.bz2),
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then:
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```
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mkdir -p ~/src
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cd ~/src
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tar xf dlib-18.16.tar.bz2
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cd dlib-18.16/python_examples
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mkdir build
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cd build
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cmake ../../tools/python
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cmake --build . --config Release
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cp dlib.so ..
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```
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At this point, you should be able to start your `python2`
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interpreter and successfully run `import cv2; import dlib`.
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In OSX, you may get a `Fatal Python error: PyThreadState_Get: no current thread`.
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You may be able to resolve by rebuilding `python` and `boost-python`
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as reported in [#21](https://github.com/cmusatyalab/openface/issues/21),
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but please file a new issue with us or [dlib](https://github.com/davisking/dlib)
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if you are unable to resolve this.
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### Torch
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Install [Torch](http://torch.ch) from the instructions on their website
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2015-11-14 05:52:33 +08:00
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and install the dependencies with `luarocks install`.
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+ [dpnn](https://github.com/nicholas-leonard/dpnn): `luarocks install dpnn`
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+ [nn](https://github.com/torch/nn): `luarocks install nn`
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+ [optim](https://github.com/torch/optim): `luarocks install optim`
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+ [csvigo](https://github.com/clementfarabet/lua---csv): `luarocks install csvigo`
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+ If you want CUDA support, also install
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[cudnn.torch](https://github.com/soumith/cudnn.torch)
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2015-11-01 20:52:46 +08:00
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At this point, the command-line program `th` should
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be available in your shell.
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