Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time.

Overview

BBB Face Recognizer

Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time.

Cam frame visualization

Instalation

Install dependencies using requirements.txt

pip install -r requirements.txt

Usage

To use the project successfully, you need to follow the steps below.

1. Dataset

It is needed to build a dataset through the dataset_generator.py script.

This script builds a dataset with train and validation directories according by user labeling, using real time cam frames from reality show.

On execute will be created a directory on src folder with the following structure:

dataset
└── train
    └── label1
    └── label2
    └── label3
    └── ...
└── val
    └── label1
    └── label2
    └── label3
    └── ...

And you will be able to populate the train dataset.

If you want populate validation dataset use "-val" as first command line argument.

As the screenshot below, insert the label number that matches with shown face and repeat this process until you have enough data.

Dataset Labeling

For each label input, the .jpg image will be auto stored on respective dataset.

If you don't recognize the shown face, just leave blank input to skip.

2. Model

Now is needed to generate a model through the model_generator.py script.

Upon successful execution, the accuracy and confusion matrix of train and validation will be presented, and a directory will be created in the src folder with the following structure:

model_files
└── label_encoder.joblib
└── metrics.txt
└── model.joblib

This joblib files will be loaded by face_predictor.py to use generated model.

3. API

Lastly the API can be started.

For development purpose run the live server with commands below.

cd src
uvicorn api:app --reload

Upon successful run, access in your browser http://127.0.0.1:8000/cams to get a json response with list of cams with recognized faces, like presented below.

[
  {
    "name": "BBB 22 - Câmera 1",
    "location": "Acompanhe a Casa",
    "snapshot_link": "https://live-thumbs.video.globo.com/bbb01/snapshot/",
    "slug": "bbb-22-camera-1",
    "media_id": "244881",
    "stream_link": "https://globoplay.globo.com/bbb-22-camera-1/ao-vivo/244881/?category=bbb",
    "recognized_faces": [
      {
        "label": "arthur",
        "probability": 64.19885945991763,
        "coordinates": {
          "topLeft": [
            118,
            45
          ],
          "bottomRight": [
            240,
            199
          ]
        }
      },
      {
        "label": "eliezer",
        "probability": 39.81395352766756,
        "coordinates": {
          "topLeft": [
            380,
            53
          ],
          "bottomRight": [
            460,
            152
          ]
        }
      },
      {
        "label": "scooby",
        "probability": 37.971779438946054,
        "coordinates": {
          "topLeft": [
            195,
            83
          ],
          "bottomRight": [
            404,
            358
          ]
        }
      }
    ],
    "scrape_timestamp": "2022-03-01T22:24:41.989674",
    "frame_timestamp": "2022-03-01T22:24:42.307244"
  },
  ...
]

To see all provided routes access the documentation auto generated by FAST API with Swagger UI.

For more details access FAST API documentation.

If you want to visualize the frame and face recognition on real time, set VISUALIZATION_ENABLED to True in the api.py file (use only for development), for each cam frame will be apresented like the first screenshot.

TO DO

  • cam_scraper.py: upgrade scrape_cam_frame() to get a high definition cam frame.
  • api.py: return cam list by label based on probability
  • api.py: use a database to store historical data
  • face_predictor.py: predict emotions
Owner
Rafael Azevedo
Computer Engineering student at State University of Feira de Santana. Software developer at Globo.
Rafael Azevedo
PyTorch Implementation for Fracture Detection in Wrist Bone X-ray Images

wrist-d PyTorch Implementation for Fracture Detection in Wrist Bone X-ray Images note: Paper: Under Review at MPDI Diagnostics Submission Date: Novemb

Fatih UYSAL 5 Oct 12, 2022
Python scripts to detect faces in Python with the BlazeFace Tensorflow Lite models

Python scripts to detect faces using Python with the BlazeFace Tensorflow Lite models. Tested on Windows 10, Tensorflow 2.4.0 (Python 3.8).

Ibai Gorordo 46 Nov 17, 2022
A Simple Framwork for CV Pre-training Model (SOCO, VirTex, BEiT)

A Simple Framwork for CV Pre-training Model (SOCO, VirTex, BEiT)

Sense-GVT 14 Jul 07, 2022
Face recognition. Redefined.

FaceFinder Use a powerful CNN to identify faces in images! TABLE OF CONTENTS About The Project Built With Getting Started Prerequisites Installation U

BleepLogger 20 Jun 16, 2021
Meandering In Networks of Entities to Reach Verisimilar Answers

MINERVA Meandering In Networks of Entities to Reach Verisimilar Answers Code and models for the paper Go for a Walk and Arrive at the Answer - Reasoni

Shehzaad Dhuliawala 271 Dec 13, 2022
Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation Introduction This is a PyTorch

XMed-Lab 30 Sep 23, 2022
Code of Periodic Activation Functions Induce Stationarity

Periodic Activation Functions Induce Stationarity This repository is the official implementation of the methods in the publication: L. Meronen, M. Tra

AaltoML 12 Jun 07, 2022
Official PyTorch implementation of Retrieve in Style: Unsupervised Facial Feature Transfer and Retrieval.

Retrieve in Style: Unsupervised Facial Feature Transfer and Retrieval PyTorch This is the PyTorch implementation of Retrieve in Style: Unsupervised Fa

60 Oct 12, 2022
The aim of the game, as in the original one, is to find a specific image from a group of different images of a person's face

GUESS WHO Main Links: [Github] [App] Related Links: [CLIP] [Celeba] The aim of the game, as in the original one, is to find a specific image from a gr

Arnau - DIMAI 3 Jan 04, 2022
This project provides a stock market environment using OpenGym with Deep Q-learning and Policy Gradient.

Stock Trading Market OpenAI Gym Environment with Deep Reinforcement Learning using Keras Overview This project provides a general environment for stoc

Kim, Ki Hyun 769 Dec 25, 2022
Regularizing Generative Adversarial Networks under Limited Data (CVPR 2021)

Regularizing Generative Adversarial Networks under Limited Data [Project Page][Paper] Implementation for our GAN regularization method. The proposed r

Google 148 Nov 18, 2022
Analyzes your GitHub Profile and presents you with a report on how likely you are to become the next MLH Fellow!

Fellowship Prediction GitHub Profile Comparative Analysis Tool Built with BentoML Table of Contents: Features Disclaimer Technologies Used Contributin

Damir Temir 51 Dec 29, 2022
Python script for performing depth completion from sparse depth and rgb images using the msg_chn_wacv20. model in Tensorflow Lite.

TFLite-msg_chn_wacv20-depth-completion Python script for performing depth completion from sparse depth and rgb images using the msg_chn_wacv20. model

Ibai Gorordo 2 Oct 04, 2021
Pytorch reimplementation of the Mixer (MLP-Mixer: An all-MLP Architecture for Vision)

MLP-Mixer Pytorch reimplementation of Google's repository for the MLP-Mixer (Not yet updated on the master branch) that was released with the paper ML

Eunkwang Jeon 18 Dec 08, 2022
This repository contains the code for "SBEVNet: End-to-End Deep Stereo Layout Estimation" paper by Divam Gupta, Wei Pu, Trenton Tabor, Jeff Schneider

SBEVNet: End-to-End Deep Stereo Layout Estimation This repository contains the code for "SBEVNet: End-to-End Deep Stereo Layout Estimation" paper by D

Divam Gupta 19 Dec 17, 2022
Repository for the paper : Meta-FDMixup: Cross-Domain Few-Shot Learning Guided byLabeled Target Data

1 Meta-FDMIxup Repository for the paper : Meta-FDMixup: Cross-Domain Few-Shot Learning Guided byLabeled Target Data. (ACM MM 2021) paper News! the rep

Fu Yuqian 44 Nov 18, 2022
Boosted CVaR Classification (NeurIPS 2021)

Boosted CVaR Classification Runtian Zhai, Chen Dan, Arun Sai Suggala, Zico Kolter, Pradeep Ravikumar NeurIPS 2021 Table of Contents Quick Start Train

Runtian Zhai 4 Feb 15, 2022
Build and run Docker containers leveraging NVIDIA GPUs

NVIDIA Container Toolkit Introduction The NVIDIA Container Toolkit allows users to build and run GPU accelerated Docker containers. The toolkit includ

NVIDIA Corporation 15.6k Jan 01, 2023
MARS: Learning Modality-Agnostic Representation for Scalable Cross-media Retrieva

Introduction This is the source code of our TCSVT 2021 paper "MARS: Learning Modality-Agnostic Representation for Scalable Cross-media Retrieval". Ple

7 Aug 24, 2022
Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can ! 🤡

Customers Segmentation using PHP and Rubix ML PHP Library Can we do Customers Segmentation using PHP and Unsupervized Machine Learning ? Yes we can !

Mickaël Andrieu 11 Oct 08, 2022