Skip to main content

UniFace: A Comprehensive Library for Face Detection, Recognition, Landmark Analysis, Age, and Gender Detection

Project description

UniFace: All-in-One Face Analysis Library

License Python PyPI Version CI Downloads

UniFace is a lightweight, production-ready face analysis library built on ONNX Runtime. It provides high-performance face detection, recognition, landmark detection, and attribute analysis with hardware acceleration support across platforms.


Features

  • High-Speed Face Detection: ONNX-optimized RetinaFace and SCRFD models
  • Facial Landmark Detection: Accurate 106-point landmark localization
  • Face Recognition: ArcFace, MobileFace, and SphereFace embeddings
  • Attribute Analysis: Age, gender, and emotion detection
  • Face Alignment: Precise alignment for downstream tasks
  • Hardware Acceleration: ARM64 optimizations (Apple Silicon), CUDA (NVIDIA), CPU fallback
  • Simple API: Intuitive factory functions and clean interfaces
  • Production-Ready: Type hints, comprehensive logging, PEP8 compliant

Installation

Quick Install (All Platforms)

pip install uniface

Platform-Specific Installation

macOS (Apple Silicon - M1/M2/M3/M4)

For Apple Silicon Macs, the standard installation automatically includes optimized ARM64 support:

pip install uniface

The base onnxruntime package (included with uniface) has native Apple Silicon support with ARM64 optimizations built-in since version 1.13+.

Linux/Windows with NVIDIA GPU

For CUDA acceleration on NVIDIA GPUs:

pip install uniface[gpu]

Requirements:

CPU-Only (All Platforms)

pip install uniface

Install from Source

git clone https://github.com/yakhyo/uniface.git
cd uniface
pip install -e .

Quick Start

Face Detection

import cv2
from uniface import RetinaFace

# Initialize detector
detector = RetinaFace()

# Load image
image = cv2.imread("image.jpg")

# Detect faces
faces = detector.detect(image)

# Process results
for face in faces:
    bbox = face['bbox']  # [x1, y1, x2, y2]
    confidence = face['confidence']
    landmarks = face['landmarks']  # 5-point landmarks
    print(f"Face detected with confidence: {confidence:.2f}")

Face Recognition

from uniface import ArcFace, RetinaFace
from uniface import compute_similarity

# Initialize models
detector = RetinaFace()
recognizer = ArcFace()

# Detect and extract embeddings
faces1 = detector.detect(image1)
faces2 = detector.detect(image2)

embedding1 = recognizer.get_normalized_embedding(image1, faces1[0]['landmarks'])
embedding2 = recognizer.get_normalized_embedding(image2, faces2[0]['landmarks'])

# Compare faces
similarity = compute_similarity(embedding1, embedding2)
print(f"Similarity: {similarity:.4f}")

Facial Landmarks

from uniface import RetinaFace, Landmark106

detector = RetinaFace()
landmarker = Landmark106()

faces = detector.detect(image)
landmarks = landmarker.get_landmarks(image, faces[0]['bbox'])
# Returns 106 (x, y) landmark points

Age & Gender Detection

from uniface import RetinaFace, AgeGender

detector = RetinaFace()
age_gender = AgeGender()

faces = detector.detect(image)
gender, age = age_gender.predict(image, faces[0]['bbox'])
print(f"{gender}, {age} years old")

Documentation

  • QUICKSTART.md - 5-minute getting started guide
  • MODELS.md - Model zoo, benchmarks, and selection guide
  • Examples - Jupyter notebooks with detailed examples

API Overview

Factory Functions (Recommended)

from uniface.detection import RetinaFace, SCRFD
from uniface.recognition import ArcFace
from uniface.landmark import Landmark106

# Create detector with default settings
detector = RetinaFace()

# Create with custom config
detector = SCRFD(
    model_name='scrfd_10g_kps',
    conf_thresh=0.8,
    input_size=(640, 640)
)

# Recognition and landmarks
recognizer = ArcFace()
landmarker = Landmark106()

Direct Model Instantiation

from uniface import RetinaFace, SCRFD, ArcFace, MobileFace, SphereFace
from uniface.constants import RetinaFaceWeights

# Detection
detector = RetinaFace(
    model_name=RetinaFaceWeights.MNET_V2,
    conf_thresh=0.5,
    nms_thresh=0.4
)

# Recognition
recognizer = ArcFace()  # Uses default weights
recognizer = MobileFace()  # Lightweight alternative
recognizer = SphereFace()  # Angular softmax alternative

High-Level Detection API

from uniface import detect_faces

# One-line face detection
faces = detect_faces(image, method='retinaface', conf_thresh=0.8)

Model Performance

Face Detection (WIDER FACE Dataset)

Model Easy Medium Hard Use Case
retinaface_mnet025 88.48% 87.02% 80.61% Mobile/Edge devices
retinaface_mnet_v2 91.70% 91.03% 86.60% Balanced (recommended)
retinaface_r34 94.16% 93.12% 88.90% High accuracy
scrfd_500m 90.57% 88.12% 68.51% Real-time applications
scrfd_10g 95.16% 93.87% 83.05% Best accuracy/speed

Accuracy values from original papers: RetinaFace, SCRFD

Benchmark on your hardware:

python scripts/run_detection.py --image assets/test.jpg --iterations 100

See MODELS.md for detailed model information and selection guide.


Examples

Webcam Face Detection

import cv2
from uniface import RetinaFace
from uniface.visualization import draw_detections

detector = RetinaFace()
cap = cv2.VideoCapture(0)

while True:
    ret, frame = cap.read()
    if not ret:
        break

    faces = detector.detect(frame)

    # Extract data for visualization
    bboxes = [f['bbox'] for f in faces]
    scores = [f['confidence'] for f in faces]
    landmarks = [f['landmarks'] for f in faces]

    draw_detections(frame, bboxes, scores, landmarks, vis_threshold=0.6)

    cv2.imshow("Face Detection", frame)
    if cv2.waitKey(1) & 0xFF == ord('q'):
        break

cap.release()
cv2.destroyAllWindows()

Face Search System

import numpy as np
from uniface import RetinaFace, ArcFace

detector = RetinaFace()
recognizer = ArcFace()

# Build face database
database = {}
for person_id, image_path in person_images.items():
    image = cv2.imread(image_path)
    faces = detector.detect(image)
    if faces:
        embedding = recognizer.get_normalized_embedding(
            image, faces[0]['landmarks']
        )
        database[person_id] = embedding

# Search for a face
query_image = cv2.imread("query.jpg")
query_faces = detector.detect(query_image)
if query_faces:
    query_embedding = recognizer.get_normalized_embedding(
        query_image, query_faces[0]['landmarks']
    )

    # Find best match
    best_match = None
    best_similarity = -1

    for person_id, db_embedding in database.items():
        similarity = np.dot(query_embedding, db_embedding.T)[0][0]
        if similarity > best_similarity:
            best_similarity = similarity
            best_match = person_id

    print(f"Best match: {best_match} (similarity: {best_similarity:.4f})")

More examples in the examples/ directory.


Advanced Configuration

Custom ONNX Runtime Providers

from uniface.onnx_utils import get_available_providers, create_onnx_session

# Check available providers
providers = get_available_providers()
print(f"Available: {providers}")

# Force CPU-only execution
from uniface import RetinaFace
detector = RetinaFace()
# Internally uses create_onnx_session() which auto-selects best provider

Model Download and Caching

Models are automatically downloaded on first use and cached in ~/.uniface/models/.

from uniface.model_store import verify_model_weights
from uniface.constants import RetinaFaceWeights

# Manually download and verify a model
model_path = verify_model_weights(
    RetinaFaceWeights.MNET_V2,
    root='./custom_models'  # Custom cache directory
)

Logging Configuration

from uniface import Logger
import logging

# Set logging level
Logger.setLevel(logging.DEBUG)  # DEBUG, INFO, WARNING, ERROR

# Disable logging
Logger.setLevel(logging.CRITICAL)

Testing

# Run all tests
pytest

# Run with coverage
pytest --cov=uniface --cov-report=html

# Run specific test file
pytest tests/test_retinaface.py -v

Development

Setup Development Environment

git clone https://github.com/yakhyo/uniface.git
cd uniface

# Install in editable mode with dev dependencies
pip install -e ".[dev]"

# Run tests
pytest

Code Formatting

This project uses Ruff for linting and formatting.

# Format code
ruff format .

# Check for linting errors
ruff check .

# Auto-fix linting errors
ruff check . --fix

Ruff configuration is in pyproject.toml. Key settings:

  • Line length: 120
  • Python target: 3.10+
  • Import sorting: uniface as first-party

Project Structure

uniface/
├── uniface/
│   ├── detection/       # Face detection models
│   ├── recognition/     # Face recognition models
│   ├── landmark/        # Landmark detection
│   ├── attribute/       # Age, gender, emotion
│   ├── onnx_utils.py    # ONNX Runtime utilities
│   ├── model_store.py   # Model download & caching
│   └── visualization.py # Drawing utilities
├── tests/               # Unit tests
├── examples/            # Example notebooks
└── scripts/             # Utility scripts

References

Model Training & Architectures

Papers


Contributing

Contributions are welcome! Please open an issue or submit a pull request on GitHub.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

uniface-1.1.1.tar.gz (51.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

uniface-1.1.1-py3-none-any.whl (69.5 kB view details)

Uploaded Python 3

File details

Details for the file uniface-1.1.1.tar.gz.

File metadata

  • Download URL: uniface-1.1.1.tar.gz
  • Upload date:
  • Size: 51.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.19

File hashes

Hashes for uniface-1.1.1.tar.gz
Algorithm Hash digest
SHA256 6543cb178f05eeef343834275d389efa78ec50889dfdf5901443edbd4e7350a9
MD5 cfb5165b7ce8b0365b7c1d496ffe1ac8
BLAKE2b-256 63c3f1ac21bf0341f37ef9b8817d9f70e9db00fc6d379c4e2c33f13b615c7c6b

See more details on using hashes here.

File details

Details for the file uniface-1.1.1-py3-none-any.whl.

File metadata

  • Download URL: uniface-1.1.1-py3-none-any.whl
  • Upload date:
  • Size: 69.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.19

File hashes

Hashes for uniface-1.1.1-py3-none-any.whl
Algorithm Hash digest
SHA256 4348aab09c97096eb1bc1b552e544cbfda9b9430453a7b6aa7d54959270d1ee4
MD5 b50da940dde8e8b8cb2ff43e6a521fbc
BLAKE2b-256 d6ce3288526f35ed747ead2e7d44e8d9713351a4752969c8dd10e6f675c91c63

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page