Face Detection & Age Gender & Expression & Recognition

Overview

FaceLib:

  • use for Detection, Facial Expression, Age & Gender Estimation and Recognition with PyTorch
  • this repository works with CPU and GPU(Cuda)

Installation

  • Clone and install with this command:
    • with pip and automatic installs everything all you need

      • pip install git+https://github.com/sajjjadayobi/FaceLib.git
    • or with cloning the repo and install required packages

      • git clone https://github.com/sajjjadayobi/FaceLib.git
  • you can see the required packages in requirements.txt

How to use:

  • the simplest way is at example_notebook.ipynb
  • for low-level usage check out the following sections
  • if you have an NVIDIA GPU don't change the device param if not use cpu

1. Face Detection: RetinaFace

  • you can use these backbone networks: Resnet50, mobilenet
    • default weights and model is mobilenet and it will be automatically download
  • for more details, you can see the documentation
  • The following example illustrates the ease of use of this package:
 from facelib import FaceDetector
 detector = FaceDetector()
 boxes, scores, landmarks = detector.detect_faces(image)
  • FaceDetection live on your webcam
   from facelib import WebcamFaceDetector
   detector = WebcamFaceDetector()
   detector.run()

WiderFace Validation Performance on a single scale When using Mobilenet for backbone

Style easy medium hard
Pytorch (same parameter with Mxnet) 88.67% 87.09% 80.99%
Pytorch (original image scale) 90.70% 88.16% 73.82%
Mxnet(original image scale) 89.58% 87.11% 69.12%

2. Face Alignment: Similar Transformation

  • always use detect_align it gives you better performance
  • you can use this module like this:
    • detect_align instead of detect_faces
 from facelib import FaceDetector
 detector = FaceDetector()
 faces, boxes, scores, landmarks = detector.detect_align(image)
  • for more details read detect_image function documentation
  • let's see a few examples
Original Aligned & Resized Original Aligned & Resized
image image image image

3. Age & Gender Estimation:

  • I used UTKFace DataSet for Age & Gender Estimation
    • default weights and model is ShufflenetFull and it will be automatically download
  • you can use this module like this:
   from facelib import FaceDetector, AgeGenderEstimator

   face_detector = FaceDetector()
   age_gender_detector = AgeGenderEstimator()

   faces, boxes, scores, landmarks = face_detector.detect_align(image)
   genders, ages = age_gender_detector.detect(faces)
   print(genders, ages)
  • AgeGenderEstimation live on your webcam
   from facelib import WebcamAgeGenderEstimator
   estimator = WebcamAgeGenderEstimator()
   estimator.run()

4. Facial Expression Recognition:

  • Facial Expression Recognition using Residual Masking Network
    • default weights and model is densnet121 and it will be automatically download
  • face size must be (224, 224), you can fix it in FaceDetector init function with face_size=(224, 224)
  from facelib import FaceDetector, EmotionDetector
 
  face_detector = FaceDetector(face_size=(224, 224))
  emotion_detector = EmotionDetector()

  faces, boxes, scores, landmarks = face_detector.detect_align(image)
  list_of_emotions, probab = emotion_detector.detect_emotion(faces)
  print(list_of_emotions)
  • EmotionDetector live on your webcam
   from facelib import WebcamEmotionDetector
   detector = WebcamEmotionDetector()
   detector.run()
  • on my Webcam 🙂

Alt Text

5. Face Recognition: InsightFace

  • This module is a reimplementation of Arcface(paper), or Insightface(Github)

Pretrained Models & Performance

  • IR-SE50
LFW(%) CFP-FF(%) CFP-FP(%) AgeDB-30(%) calfw(%) cplfw(%) vgg2_fp(%)
0.9952 0.9962 0.9504 0.9622 0.9557 0.9107 0.9386
  • Mobilefacenet
LFW(%) CFP-FF(%) CFP-FP(%) AgeDB-30(%) calfw(%) cplfw(%) vgg2_fp(%)
0.9918 0.9891 0.8986 0.9347 0.9402 0.866 0.9100

Prepare the Facebank (For testing over camera, video or image)

  • the faces images you want to detect it save them in this folder:

    Insightface/models/data/facebank/
              ---> person_1/
                  ---> img_1.jpg
                  ---> img_2.jpg
              ---> person_2/
                  ---> img_1.jpg
                  ---> img_2.jpg
    
  • you can save a new preson in facebank with 3 ways:

    • use add_from_webcam: it takes 4 images and saves them on facebank
       from facelib import add_from_webcam
       add_from_webcam(person_name='sajjad')
    • use add_from_folder: it takes a path with some images from just a person
       from facelib import add_from_folder
       add_from_folder(folder_path='./', person_name='sajjad')
    • or add faces manually (just face of a person not image of a person)
      • I don't suggest this

Using

  • default weights and model is mobilenet and it will be automatically download
    import cv2
    from facelib import FaceRecognizer, FaceDetector
    from facelib import update_facebank, load_facebank, special_draw, get_config
 
    conf = get_config()
    detector = FaceDetector()
    face_rec = FaceRecognizer(conf)
    face_rec.model.eval()
    
    # set True when you add someone new 
    update_facebank_for_add_new_person = False
    if update_facebank_for_add_new_person:
        targets, names = update_facebank(conf, face_rec.model, detector)
    else:
        targets, names = load_facebank(conf)

    image = cv2.imread(your_path)
    faces, boxes, scores, landmarks = detector.detect_align(image)
    results, score = face_rec.infer(conf, faces, targets)
    print(names[results.cpu()])
    for idx, bbox in enumerate(boxes):
        special_draw(image, bbox, landmarks[idx], names[results[idx]+1], score[idx])
  • Face Recognition live on your webcam
   from facelib import WebcamVerify
   verifier = WebcamVerify(update=True)
   verifier.run()
  • example of run this code:

image

Reference:

Owner
Sajjad Ayobi
Data Science Lover, a Little Geek
Sajjad Ayobi
We are More than Our JOints: Predicting How 3D Bodies Move

We are More than Our JOints: Predicting How 3D Bodies Move Citation This repo contains the official implementation of our paper MOJO: @inproceedings{Z

72 Oct 20, 2022
The official code for paper "R2D2: Recursive Transformer based on Differentiable Tree for Interpretable Hierarchical Language Modeling".

R2D2 This is the official code for paper titled "R2D2: Recursive Transformer based on Differentiable Tree for Interpretable Hierarchical Language Mode

Alipay 49 Dec 17, 2022
Automatically replace ONNX's RandomNormal node with Constant node.

onnx-remove-random-normal This is a script to replace RandomNormal node with Constant node. Example Imagine that we have something ONNX model like the

Masashi Shibata 1 Dec 11, 2021
Segmentation vgg16 fcn - cityscapes

VGGSegmentation Segmentation vgg16 fcn - cityscapes Priprema skupa skripta prepare_dataset_downsampled.py Iz slika cityscapesa izrezuje haubu automobi

6 Oct 24, 2020
Code for Deterministic Neural Networks with Appropriate Inductive Biases Capture Epistemic and Aleatoric Uncertainty

Deep Deterministic Uncertainty This repository contains the code for Deterministic Neural Networks with Appropriate Inductive Biases Capture Epistemic

Jishnu Mukhoti 69 Nov 28, 2022
[SIGGRAPH Asia 2019] Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning

AGIS-Net Introduction This is the official PyTorch implementation of the Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning. paper | suppl

Yue Gao 102 Jan 02, 2023
Code for EMNLP2020 long paper: BERT-Attack: Adversarial Attack Against BERT Using BERT

BERT-ATTACK Code for our EMNLP2020 long paper: BERT-ATTACK: Adversarial Attack Against BERT Using BERT Dependencies Python 3.7 PyTorch 1.4.0 transform

Linyang Li 142 Jan 04, 2023
IsoGCN code for ICLR2021

IsoGCN The official implementation of IsoGCN, presented in the ICLR2021 paper Isometric Transformation Invariant and Equivariant Graph Convolutional N

horiem 39 Nov 25, 2022
Diverse Image Captioning with Context-Object Split Latent Spaces (NeurIPS 2020)

Diverse Image Captioning with Context-Object Split Latent Spaces This repository is the PyTorch implementation of the paper: Diverse Image Captioning

Visual Inference Lab @TU Darmstadt 34 Nov 21, 2022
(ImageNet pretrained models) The official pytorch implemention of the TPAMI paper "Res2Net: A New Multi-scale Backbone Architecture"

Res2Net The official pytorch implemention of the paper "Res2Net: A New Multi-scale Backbone Architecture" Our paper is accepted by IEEE Transactions o

Res2Net Applications 928 Dec 29, 2022
Pose Transformers: Human Motion Prediction with Non-Autoregressive Transformers

Pose Transformers: Human Motion Prediction with Non-Autoregressive Transformers This is the repo used for human motion prediction with non-autoregress

Idiap Research Institute 26 Dec 14, 2022
Python implementation of ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images, AAAI2022.

ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images Binh M. Le & Simon S. Woo, "ADD:

2 Oct 24, 2022
This package contains deep learning models and related scripts for RoseTTAFold

RoseTTAFold This package contains deep learning models and related scripts to run RoseTTAFold This repository is the official implementation of RoseTT

1.6k Jan 03, 2023
Model Zoo for AI Model Efficiency Toolkit

We provide a collection of popular neural network models and compare their floating point and quantized performance.

Qualcomm Innovation Center 137 Jan 03, 2023
Monk is a low code Deep Learning tool and a unified wrapper for Computer Vision.

Monk - A computer vision toolkit for everyone Why use Monk Issue: Want to begin learning computer vision Solution: Start with Monk's hands-on study ro

Tessellate Imaging 507 Dec 04, 2022
[3DV 2021] A Dataset-Dispersion Perspective on Reconstruction Versus Recognition in Single-View 3D Reconstruction Networks

dispersion-score Official implementation of 3DV 2021 Paper A Dataset-dispersion Perspective on Reconstruction versus Recognition in Single-view 3D Rec

Yefan 7 May 28, 2022
HistoKT: Cross Knowledge Transfer in Computational Pathology

HistoKT: Cross Knowledge Transfer in Computational Pathology Exciting News! HistoKT has been accepted to ICASSP 2022. HistoKT: Cross Knowledge Transfe

Mahdi S. Hosseini 5 Jan 05, 2023
Minimal But Practical Image Classifier Pipline Using Pytorch, Finetune on ResNet18, Got 99% Accuracy on Own Small Datasets.

PyTorch Image Classifier Updates As for many users request, I released a new version of standared pytorch immage classification example at here: http:

JinTian 106 Nov 06, 2022
A repository for storing njxzc final exam review material

文档地址,请戳我 👈 👈 👈 ☀️ 1.Reason 大三上期末复习软件工程的时候,发现其他高校在GitHub上开源了他们学校的期末试题,我很受触动。期末

GuJiakai 2 Jan 18, 2022
Voice Gender Recognition

In this project it was used some different Machine Learning models to identify the gender of a voice (Female or Male) based on some specific speech and voice attributes.

Anne Livia 1 Jan 27, 2022