MCPcopy
hub / github.com/1adrianb/face-alignment

github.com/1adrianb/face-alignment @v1.5.0 sqlite

repository ↗ · DeepWiki ↗ · release v1.5.0 ↗
221 symbols 586 edges 40 files 56 documented · 25%
README

Face Recognition

Detect facial landmarks from Python using the world's most accurate face alignment network, capable of detecting points in both 2D and 3D coordinates.

Build using FAN's state-of-the-art deep learning based face alignment method.

Note: The lua version is available here.

For numerical evaluations it is highly recommended to use the lua version which uses indentical models with the ones evaluated in the paper. More models will be added soon.

License Test Face alignment PyPI version

Features

Detect 2D facial landmarks in pictures

import face_alignment
from skimage import io

fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, flip_input=False)

input = io.imread('../test/assets/aflw-test.jpg')
preds = fa.get_landmarks(input)

Detect 3D facial landmarks in pictures

import face_alignment
from skimage import io

fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.THREE_D, flip_input=False)

input = io.imread('../test/assets/aflw-test.jpg')
preds = fa.get_landmarks(input)

Process an entire directory in one go

import face_alignment
from skimage import io

fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, flip_input=False)

preds = fa.get_landmarks_from_directory('../test/assets/')

Detect the landmarks using a specific face detector.

By default the package will use the SFD face detector. Pass face_detector to switch:

import face_alignment

fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, face_detector='sfd')

Supported face detectors

The library supports multiple face detection backends. SFD is the default and most accurate, but slower alternatives like BlazeFace, YuNet, or RetinaFace offer better speed. SCRFD requires the optional onnxruntime package (pip install onnxruntime).

Detector face_detector= CPU (ms) MPS (ms) PyTorch device
SFD 'sfd' 138.8 33.1 CPU / CUDA / MPS
BlazeFace 'blazeface' 10.9 8.2 CPU / CUDA / MPS
YuNet 'yunet' 5.6 N/A CPU only (OpenCV DNN)
RetinaFace 'retinaface' 25.2 15.5 CPU / CUDA / MPS
SCRFD 'scrfd' 23.1 N/A CPU only (ONNX Runtime)
dlib (deprecated) 'dlib' CPU / CUDA

Timings: detection only, median over 20 runs, single face 450x450 image, Apple M2.

You can also skip detection entirely by passing face_detector='folder', which loads pre-computed bounding boxes from .npy, .t7, or .pth files matching each image filename. This is useful for evaluation with ground truth boxes.

import face_alignment

# BlazeFace back camera model (larger input, better for distant faces)
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, face_detector='blazeface',
                                  face_detector_kwargs={'back_model': True})

# SCRFD (requires: pip install onnxruntime)
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, face_detector='scrfd')

# Use pre-computed bounding boxes from files alongside images
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, face_detector='folder')

Running on CPU/GPU

In order to specify the device (GPU or CPU) on which the code will run one can explicitly pass the device flag. The landmark network is compiled with torch.compile by default for faster inference. Compilation artifacts are cached to disk, so only the first run is slow (~25s). Pass compile=False to disable.

import torch
import face_alignment

# cuda for CUDA, mps for Apple M GPUs.
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, dtype=torch.bfloat16, device='cuda')

# Skip compilation for instant startup
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, device='cpu', compile=False)

# Limit batch size for multi-face images on low-memory GPUs (default: 1)
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType.TWO_D, device='cuda', max_batch_size=8)

Please also see the examples folder

Installation

Requirements

  • Python 3.9+
  • Linux, Windows or macOS
  • PyTorch (>=2.0)

While not required, for optimal performance(especially for the detector) it is highly recommended to run the code using a CUDA enabled GPU.

Binaries

The easiest way to install it is using either pip or conda:

pip install face-alignment

Alternatively, you can build it from source.

From source

Install pytorch and pytorch dependencies. Please check the pytorch readme for this.

Get the Face Alignment source code

git clone https://github.com/1adrianb/face-alignment

Install the Face Alignment lib

pip install -r requirements.txt
pip install .

Docker image

A Dockerfile is provided to build images with cuda support and cudnn. For more instructions about running and building a docker image check the orginal Docker documentation.

docker build -t face-alignment .

How does it work?

While here the work is presented as a black-box, if you want to know more about the intrisecs of the method please check the original paper either on arxiv or my webpage.

Contributions

All contributions are welcomed. If you encounter any issue (including examples of images where it fails) feel free to open an issue. If you plan to add a new features please open an issue to discuss this prior to making a pull request.

Citation

@inproceedings{bulat2017far,
  title={How far are we from solving the 2D \& 3D Face Alignment problem? (and a dataset of 230,000 3D facial landmarks)},
  author={Bulat, Adrian and Tzimiropoulos, Georgios},
  booktitle={International Conference on Computer Vision},
  year={2017}
}

For citing dlib, pytorch or any other packages used here please check the original page of their respective authors.

Acknowledgements

  • To the pytorch team for providing such an awesome deeplearning framework
  • To my supervisor for his patience and suggestions.
  • To all other python developers that made available the rest of the packages used in this repository.

Core symbols most depended-on inside this repo

detect_from_image
called by 18
face_alignment/detection/core.py
get_image
called by 17
face_alignment/utils.py
conv_dw
called by 13
face_alignment/detection/retinaface/mobilenet.py
get_landmarks
called by 11
face_alignment/api.py
load_file_from_url
called by 8
face_alignment/utils.py
flip
called by 6
face_alignment/utils.py
tensor_or_path_to_ndarray
called by 6
face_alignment/detection/core.py
conv_bn
called by 5
face_alignment/detection/retinaface/mobilenet.py

Shape

Method 136
Function 47
Class 38

Languages

Python100%

Modules by API surface

test/test_detectors.py41 symbols
face_alignment/detection/blazeface/net_blazeface.py25 symbols
face_alignment/detection/retinaface/net_retinaface.py20 symbols
face_alignment/utils.py13 symbols
face_alignment/api.py13 symbols
face_alignment/models/fan.py12 symbols
face_alignment/detection/core.py11 symbols
face_alignment/models/resnet.py7 symbols
face_alignment/detection/sfd/net_s3fd.py6 symbols
face_alignment/detection/scrfd/scrfd_detector.py6 symbols
test/test_utils.py5 symbols
test/facealignment_test.py5 symbols

Used by 1 indexed graphs manifest dependencies, hub-wide

Dependencies from manifests, versioned

opencv-python4.5.4 · 1×
scipy0.17.0 · 1×
torch2.0.0 · 1×

For agents

$ claude mcp add face-alignment \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact