Face Recognition System Save

Intelligent Facial Recognition with Django Restful IoT on Raspberry Pi

Project README

Intelligent Facial Recognition System

GitHub release Language python Language python Build Status License

This is a project of the facial recognition with Movidius on RaspberryPi 3B+ platform. It also uses Django and Django REST framework which providing the web platform. The project would like to build a safety and intelligent face recognition system in AI era.

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Compatibility

The code is tested using Tensorflow r1.7 and Movidius NCSDK2 under Debin 2018-06-27ļ¼ˆKernel version:4.14ļ¼‰ with django 2.1.5 and Python 3.5 & 3.6.

File architecture

django_venv/  # django virtual env for RPI
face_recognition_model/  # Movidius NCS code     
iot_control/  # iot control code
ran-django-template/  # django platform using my own model
requirements.txt  # requirements for run the code

How to run it

  1. Install requirements
pip install -r requirements.txt
  1. Install Neural Compute Application Zoo

    Method attached below.

  2. Install rpi-mjpg-streamer

    Method attached below.

  3. Run ran-django-template

cd ran-django-template
python manage.py runserver 0.0.0.0:8000
  1. Run face_recognition_model
cd face_recognition_model
make run
  1. Run iot_control
cd iot_control
python iot_controller.py

Admin Account

python manage.py createsuperuser

username: ranxiaolang
email: YOUR EMAIL  
password: ranxiaolang  

Access the web page though this link: http://127.0.0.1:8000/admin .

Real Product Images

image image

Requirements

  • Logitech HD Webcam C270
  • Micro SD Card 32G
  • Raspberry Pi 3 B+
  • Intel Movidius Neural Compute Stick

The code requires Python 3.5 or Python 3.6, Tensorflow 1.7 or later, as well as the following python libraries:

  • Pillow
  • django
  • django-allauth 0.37.1
  • django-widget-tweaks 1.4.3
  • pip 18.0
  • qrcode 6.0
  • setuptools 40.4.3
  • djangorestframework
  • markdown
  • django-filter

Those modules can be installed using: pip3 install xxx or pip install xxx .

Follow How to run it

Neural Compute Application Zoo

This repository is a place for any interested developers to share their projects (code and Neural Network content) that make use of the IntelĀ® Movidiusā„¢ Neural Compute Stick (IntelĀ® Movidiusā„¢ NCS) and associated IntelĀ® Movidiusā„¢ Neural Compute Software Development Kit.

You can use the following url(NC App Zoo) or git command to use the ncsdk2 branch of the NC App Zoo repo:

git clone -b ncsdk2 https://github.com/movidius/ncappzoo.git

Install Django and Django REST framework

pip3 -V

sudo pip3 install -U setuptools

sudo pip3 install -U django

sudo pip3 install -U djangorestframework

sudo pip3 install -U django-filter

sudo pip3 install -U markdown

sudo pip3 install -U requests

Install Adafruit_Python_DHT library

git clone https://github.com/adafruit/Adafruit_Python_DHT.git

cd Adafruit_Python_DHT

sudo python3 setup.py install

cd

Install Adafruit_Python_BMP library

git clone https://github.com/adafruit/Adafruit_Python_BMP.git

cd Adafruit_Python_BMP

sudo python3 setup.py install

cd

Install psutil (process and system utilities)

sudo pip3 install psutil

Install rpi-mjpg-streamer

Instructions and helper scripts for running mjpg-streamer on Raspberry Pi.

A. Setup mjpg-streamer

Enable Raspberry Pi Camera module from raspi-config

$ sudo raspi-config

Install necessary packages for mjpg-streamer

$ sudo apt-get update
$ sudo apt-get install build-essential libjpeg8-dev imagemagick libv4l-dev git cmake uvcdynctrl

Build mjpg-streamer

$ sudo ln -s /usr/include/linux/videodev2.h /usr/include/linux/videodev.h
$ git clone https://github.com/jacksonliam/mjpg-streamer
$ cd mjpg-streamer/mjpg-streamer-experimental
$ cmake -DCMAKE_INSTALL_PREFIX:PATH=.. .
$ make install

B. Run mjpg-streamer

1. Clone this repository

$ git clone https://github.com/meinside/rpi-mjpg-streamer.git

2-a. Run mjpg-streamer from the shell directly

# copy & edit run-mjpg-streamer.sh to your environment or needs
$ cp rpi-mjpg-streamer/run-mjpg-streamer.sh.sample somewhere/run-mjpg-streamer.sh
$ vi somewhere/run-mjpg-streamer.sh

# then run
$ somewhere/run-mjpg-streamer.sh

2-b. Or run mjpg-streamer as a service

systemd

# copy & edit systemd/mjpg-streamer.service file,
$ sudo cp rpi-mjpg-streamer/systemd/mjpg-streamer.service.sample /lib/systemd/system/mjpg-streamer.service
$ sudo vi /lib/systemd/system/mjpg-streamer.service

# then register as a service
$ sudo systemctl enable mjpg-streamer.service

# or remove it
$ sudo systemctl disable mjpg-streamer.service

# and start/stop it
$ sudo systemctl start mjpg-streamer.service
$ sudo systemctl stop mjpg-streamer.service

C. Connect

Connect through the web browser:

image

Most modern browsers(including mobile browsers like Safari and Chrome) will show the live stream immediately.

Notice

Virtualenv

Method 1

pip3 install virtualenv   

Copy django_venv and activate

source venv/bin/activate    

Method 2

pip install -r requirements.txt

sqlite3 ę•°ę®åŗ“ꖇ件db.sqlite3 ꝃ限 666

chmod 666 db.sqlite3

django ꉀåœØę–‡ä»¶å¤¹ ꝃ限 775

chmod 777 xxx

Citation

Just can be used for non-business projects. If you use ran-django-template, please give me a star. Thanks!

Open Source Agenda is not affiliated with "Face Recognition System" Project. README Source: nature1995/Face-Recognition-System

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