# 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](http://vis-www.cs.umass.edu/lfw/results.html) benchmark. We had to fallback to using the deep funneled versions for 58 of 13233 images because dlib failed to detect a face or landmarks. We obtain a mean accuracy of 0.8138 ± 0.0149 with an AUC of 0.893. For comparison, training with Google-scale data results in an accuracy of .9963 ± 0.009. ![](https://raw.githubusercontent.com/cmusatyalab/openface/master/images/nn4.v1.lfw.roc.png) This can be generated with the following commands from the root `openface` directory, assuming you have downloaded and placed the raw and [deep funneled](http://vis-www.cs.umass.edu/deep_funnel.html) LFW data from [here](http://vis-www.cs.umass.edu/lfw/) 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 innerEyesAndBottomLip 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 innerEyesAndBottomLip 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: ## [Oxford's VGG Face Descriptor](http://www.robots.ox.ac.uk/~vgg/software/vgg_face/) This 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. ## [AlfredXiangWu/face_verification_experiment](https://github.com/AlfredXiangWu/face_verification_experiment) This 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.