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OpenFace

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This is a Python and Torch implementation of the CVPR 2015 paper FaceNet: A Unified Embedding for Face Recognition and Clustering by Florian Schroff, Dmitry Kalenichenko, and James Philbin at Google using publicly available libraries and datasets. Torch allows the network to be executed on a CPU or with CUDA.

Crafted by Brandon Amos in the Elijah research group at Carnegie Mellon University.


Isn't face recognition a solved problem?

No! Accuracies from research papers have just begun to surpass human accuracies on some benchmarks. The accuracies of open source face recognition systems lag behind the state-of-the-art. See our accuracy comparisons on the famous LFW benchmark below.


Please use responsibly!

We do not support the use of this project in applications that violate privacy and security. We are using this to help cognitively impaired users to sense and understand the world around them.


Overview

The following overview shows the workflow for a single input image of Sylvestor Stallone from the publicly available LFW dataset.

  1. Detect faces with a pre-trained models from dlib or OpenCV.
  2. Transform the face for the neural network. This repository uses dlib's real-time pose estimation with OpenCV's affine transformation to try to make the eyes and nose appear in the same location on each image.
  3. Use a deep neural network to represent (or embed) the face on a 128-dimensional unit hypersphere. The embedding is a generic representation for anybody's face. Unlike other face representations, this embedding has the nice property that a larger distance between two face embeddings means that the faces are likely not of the same person. This property makes clustering, similarity detection, and classification tasks easier than other face recognition techniques where the Euclidean distance between features is not meaningful.
  4. Apply your favorite clustering or classification techniques to the features to complete your recognition task. See below for our examples for classification and similarity detection, including an online web demo.

What's in this repository?

Demo 1: Real-Time Web Demo

See our YouTube video of using this in a real-time web application for face recognition. The source is available in demos/web.

This demo does the full face recognition pipeline on every frame. In practice, object tracking like dlib's should be used once the face recognizer has predicted a face.

To run on your system, after following the setup directions below, install the requirements for the web demo with ./install-deps.sh and sudo pip install -r requirements.txt from the demos/web directory. The application is split into a processing server and static web pages that communicate via web sockets. Start the server with ./demos/web/server.py and serve the static website with python2 -m SimpleHTTPServer 8000 from the /demos/web directory. You should now be able to access the demo from your browser at http://localhost:8000. The saved faces are only available for the browser session.

Demo 2: Comparing two images

The comparison demo outputs the predicted similarity score of two faces by computing the squared L2 distance between their representations. A lower score indicates two faces are more likely of the same person. Since the representations are on the unit hypersphere, the scores range from 0 (the same picture) to 4.0. The following distances between images of John Lennon and Eric Clapton were generated with ./demos/compare.py images/examples/{lennon*,clapton*}.

Lennon 1 Lennon 2 Clapton 1 Clapton 2

The following table shows that a distance threshold of 0.5 would distinguish these two people. In practice, further experimentation should be done on the distance threshold. On our LFW experiments, the mean threshold across multiple experiments is 0.71 ± 0.027, see accuracies.txt.

Image 1 Image 2 Distance
Lennon 1 Lennon 2 0.310
Lennon 1 Clapton 1 1.241
Lennon 1 Clapton 2 1.056
Lennon 2 Clapton 1 1.386
Lennon 2 Clapton 2 1.073
Clapton 1 Clapton 2 0.259

Demo 3: Training a Classifier

OpenFace's core provides a feature extraction method to obtain a low-dimensional representation of any face. demos/classifier.py shows a demo of how these representations can be used to create a face classifier.

This is trained on about 6000 total images of the following people, which are the people with the most images in our dataset. Classifiers can be created with far less images per person.

  • America Ferrera
  • Amy Adams
  • Anne Hathaway
  • Ben Stiller
  • Bradley Cooper
  • David Boreanaz
  • Emily Deschanel
  • Eva Longoria
  • Jon Hamm
  • Steve Carell

This demo uses scikit-learn to perform a grid search over SVM parameters. For 1000's of images, training the SVMs takes seconds. Our trained model obtains 87% accuracy on this set of data. models/get-models.sh will automatically download this classifier and place it in models/openface/celeb-classifier.nn4.v1.pkl.

For an example, consider the following small set of images the model has no knowledge of. For an unknown person, a prediction still needs to be made, but the confidence score is usually lower.

Run the classifier on your images with:

./demos/classifier.py infer ./models/openface/celeb-classifier.nn4.v1.pkl ./your-image.png
Person Image Prediction Confidence
Carell SteveCarell 0.78
Adams AmyAdams 0.87
Lennon 1 (Unknown) DavidBoreanaz 0.28
Lennon 2 (Unknown) DavidBoreanaz 0.56

Cool demos, but I want numbers. What's the accuracy?

Even though the public datasets we trained on have orders of magnitude less data than private industry datasets, the accuracy is remarkably high on the standard LFW benchmark. We had to fallback to using the deep funneled versions for 152 of 13233 images because dlib failed to detect a face or landmarks. We obtain a mean accuracy of 0.8483 ± 0.0172 with an AUC of 0.923. For comparison, training with Google-scale data results in an accuracy of .9963 ± 0.009.

This can be generated with the following commands from the root openface directory, assuming you have downloaded and placed the raw and deep funneled LFW data from here in ./data/lfw/raw and ./data/lfw/deepfunneled.

  1. Install prerequisites as below.
  2. Preprocess the raw lfw images, change 8 to however many separate processes you want to run: for N in {1..8}; do ./util/align-dlib.py data/lfw/raw align affine data/lfw/dlib-affine-sz:96 --size 96 &; done. Fallback to deep funneled versions for images that dlib failed to align: ./util/align-dlib.py data/lfw/raw align affine data/lfw/dlib-affine-sz:96 --size 96 --fallbackLfw data/lfw/deepfunneled
  3. Generate representations with ./batch-represent/main.lua -outDir evaluation/lfw.nn4.v1.reps -model models/openface/nn4.v1.t7 -data data/lfw/dlib-affine-sz:96
  4. Generate the ROC curve from the evaluation directory with ./lfw-roc.py --workDir lfw.nn4.v1.reps. This creates roc.pdf in the lfw.nn4.v1.reps directory.

If you're interested in higher accuracy open source code, see:

  1. Oxford's VGG Face Descriptor, which is licensed for non-commercial research purposes. They've released their softmax network, which obtains .9727 accuracy on the LFW and will release their triplet network (0.9913 accuracy) and data soon.

Their softmax model doesn't embed features like FaceNet, which makes tasks like classification and clustering more difficult. Their triplet model hasn't yet been released, but will provide embeddings similar to FaceNet. The triplet model will be supported by OpenFace once it's released. 2. AlfredXiangWu/face_verification_experiment, which uses Caffe and doesn't yet have a license. The accuracy on the LFW is .9777. This model doesn't embed features like FaceNet, which makes tasks like classification and clustering more difficult.

Help Wanted!

As the following table shows, the forefront of deep learning research is driven by large private datasets. In face recognition, there are no open source implementations or models trained on these datasets. If you have access to a large dataset, we are very interested in training a new OpenFace model with it. Please contact Brandon Amos at [email protected].

Dataset Public #Photos #People
DeepFace (Facebook) No 4.4 Million 4k
Web-Scale Training... (Facebook) No 500 Million 10 Million
FaceNet (Google) No 100-200 Million 8 Million
FaceScrub Yes 100k 500
CASIA-WebFace Yes 500k 10k

Visualizing representations with t-SNE

t-SNE is a dimensionality reduction technique that can be used to visualize the 128-dimensional features OpenFace produces. The following shows the visualization of the three people in the training and testing dataset with the most images.

Training

Testing

These can be generated with the following commands from the root openface directory.

  1. Install prerequisites as below.
  2. Preprocess the raw lfw images, change 8 to however many separate processes you want to run: for N in {1..8}; do ./util/align-dlib.py <path-to-raw-data> align affine <path-to-aligned-data> --size 96 &; done.
  3. Generate representations with ./batch-represent/main.lua -outDir <feature-directory (to be created)> -model models/openface/nn4.v1.t7 -data <path-to-aligned-data>
  4. Generate t-SNE visualization with ./util/tsne.py <feature-directory> --names <name 1> ... <name n> This creates tsne.pdf in <feature-directory>.

Visualizing layer outputs

Visualizing the output feature maps of each layer is sometimes helpful to understand what features the network has learned to extract. With faces, the locations of the eyes, nose, and mouth should play an important role.

demos/vis-outputs.lua outputs the feature maps from an aligned image. The following shows the first 39 filters of the first convolutional layer on two images of John Lennon.

Model Definitions

Model definitions should be kept in models/openface, where we have provided definitions of the NN2 and nn4 as described in the paper, but with batch normalization and no normalization in the lower layers. The inception layers are introduced in Going Deeper with Convolutions by Christian Szegedy et al.

Pre-trained Models

Pre-trained models are versioned and should be released with a corresponding model definition. We currently only provide a pre-trained model for nn4.v1 because we have limited access to large-scale face recognition datasets.

nn4.v1

This model has been trained by combining the two largest (of August 2015) publicly-available face recognition datasets based on names: FaceScrub and CASIA-WebFace. This model was trained for about 300 hours on a Tesla K40 GPU.

The following plot shows the triplet loss on the training and test set. Each training epoch is defined to be 1000 minibatches, where each minibatch processes 100 triplets. Each testing epoch is defined to be 300 minibatches, where each minibatch processes 100 triplets. Semi-hard triplets are used on the training set, and random triplets are used on the testing set. Our nn4.v1 model is from epoch 177.

The LFW section above shows that this model obtains a mean accuracy of 0.8483 ± 0.0172 with an AUC of 0.923.

How long does processing a face take?

The processing time depends on the size of your image for face detection and alignment. These only run on the CPU and take from 100-200ms to over a second. The neural network uses a fixed-size input and has a more consistent runtime. Averaging over 500 forward passes of random input, the latency is 77.47 ms ± 50.69 ms on our 3.70 GHz CPU and 21.13 ms ± 6.15 ms on our Tesla K40 GPU, obtained with util/profile-network.lua

Usage

Existing Models

See the image comparison demo for a complete example written in Python using a naive Torch subprocess to process the faces.

import openface
from openface.alignment import NaiveDlib # Depends on dlib.

# `args` are parsed command-line arguments.

align = NaiveDlib(args.dlibFaceMean, args.dlibFacePredictor)
net = openface.TorchWrap(args.networkModel, imgDim=args.imgDim, cuda=args.cuda)

# `img` is a numpy matrix containing the RGB pixels of the image.
bb = align.getLargestFaceBoundingBox(img)
alignedFace = align.alignImg("affine", args.imgDim, img, bb)
rep1 = net.forwardImage(alignedFace)

# `rep2` obtained similarly.
d = rep1 - rep2
distance = np.dot(d, d)

Training new models

This repository also contains our training infrastructure to promote an open ecosystem and enable quicker bootstrapping for new research and development. Warning: Training is computationally expensive and takes a few weeks on our Tesla K40 GPU. Because of this, the training code assumes CUDA is installed.

A rough overview of training is:

  1. Create a directory for your raw images so that images from different people are in different subdirectories. The names of the labels or images do not matter, and each person can have a different amount of images. The images should be formatted as jpg or png and have a lowercase extension.

    $ tree data/mydataset/raw
    person-1
    ├── image-1.jpg
    ├── image-2.png
    ...
    └── image-p.png
    
    ...
    
    person-m
    ├── image-1.png
    ├── image-2.jpg
    ...
    └── image-q.png
    
  2. Preprocess the raw images, change 8 to however many separate processes you want to run: for N in {1..8}; do ./util/align-dlib.py <path-to-raw-data> align affine <path-to-aligned-data> --size 96 &; done. Prune out directories with less than N (I use 10) images per class with ./util/prune-dataset.py <path-to-aligned-data> --numImagesThreshold <N> and then split the dataset into train and val subdirectories with ./util/create-train-val-split.py <path-to-aligned-data> <validation-ratio>.

  3. Run training/main.lua to start training the model. Edit the dataset options in training/opts.lua or pass them as command-line parameters. This will output the loss and in-progress models to training/work.

  4. Visualize the loss with training/plot-loss.py.

Setup

The following instructions are for Linux and OSX only. Please contribute modifications and build instructions if you are interested in running this on other operating systems.

We strongly recommend using the Docker container unless you are experienced with building Linux software from source.

Also note that in OSX, you may have to change the hashbangs from python2 to python.

Check out git submodules

Clone with --recursive or run git submodule init && git submodule update after checking out.

Download the models

Run models/get-models.sh to download pre-trained OpenFace models on the combined CASIA-WebFace and FaceScrub database. This also downloads dlib's pre-trained model for face landmark detection. This will incur about 500MB of network traffic for the compressed models that will decompress to about 1GB on disk.

Be sure the md5 checksums match the following. Use md5sum in Linux and md5 in OSX.

openface(master)$ md5sum models/{dlib/*.dat,openface/*.{pkl,t7}}
73fde5e05226548677a050913eed4e04  models/dlib/shape_predictor_68_face_landmarks.dat
c0675d57dc976df601b085f4af67ecb9  models/openface/celeb-classifier.nn4.v1.pkl
a59a5ec1938370cd401b257619848960  models/openface/nn4.v1.t7

With Docker

This repo can be deployed as a container with Docker for CPU mode. Be sure you have checked out the submodules and downloaded the models as described above. Depending on your Docker configuration, you may need to run the docker commands as root.

To use, place your images in openface on your host and access them from the shared Docker directory.

docker build -t openface ./docker
docker run -t -i -v $PWD:/openface openface /bin/bash
cd /openface
./demos/compare.py images/examples/{lennon*,clapton*}

Docker in OSX

In OSX, follow the Docker Mac OSX Installation Guide and start a docker machine and connect your shell to it before trying to build the container. In the simplest case, this can be done with:

docker-machine create --driver virtualbox default
eval $(docker-machine env default)

By hand

Be sure you have checked out the submodules and downloaded the models as described above. See the Dockerfile as a reference.

This project uses python2 because of the opencv and dlib dependencies. Install the packages the Dockerfile uses with your package manager. With pip2, install numpy, pandas, scipy, scikit-learn, and scikit-image.

Next, manually install the following.

OpenCV

Download OpenCV 2.4.11 and follow their build instructions.

dlib

dlib can alternatively by installed from pypi, but might be slower than building manually because they are not compiled with AVX support.

dlib requires boost libraries to be installed.

To build manually, start by downloading dlib v18.16, then:

mkdir -p ~/src
cd ~/src
tar xf dlib-18.16.tar.bz2
cd dlib-18.16/python_examples
mkdir build
cd build
cmake ../../tools/python
cmake --build . --config Release
cp dlib.so ..

At this point, you should be able to start your python2 interpreter and successfully run import cv2; import dlib.

In OSX, you may get a Fatal Python error: PyThreadState_Get: no current thread. You may be able to resolve by rebuilding python and boost-python as reported in #21, but please file a new issue with us or dlib if you are unable to resolve this.

Torch

Install Torch from the instructions on their website and install the dpnn and nn libraries with luarocks install dpnn and luarocks install nn.

If you want CUDA support, also install cudnn.torch.

At this point, the command-line program th should be available in your shell.

Citations

DOI

Please cite this repository if you use this in academic works.

@misc{amos2015openface,
    author       = {Amos, Brandon and Harkes, Jan and Pillai, Padmanabhan and Elgazzar, Khalid and Satyanarayanan, Mahadev},
    title        = {OpenFace 0.1.1: Face recognition with Google's FaceNet deep neural network},
    month        = oct,
    year         = 2015,
    doi          = {10.5281/zenodo.32148},
    url          = {http://dx.doi.org/10.5281/zenodo.32148}
}

Acknowledgements

Licensing

The source code and trained models nn4.v1.t7 and celeb-classifier.nn4.v1.t7 are copyright Carnegie Mellon University and licensed under the Apache 2.0 License. Portions from the following third party sources have been modified and are included in this repository. These portions are noted in the source files and are copyright their respective authors with the licenses listed.

Project Modified License
Atcold/torch-TripletEmbedding No MIT
facebook/fbnn Yes BSD

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