Skip to content

Edge driven, IoT based, intelligent system for restricted access control in commercial establishments. This project is a part of UNISYS Cloud 20/20 contest. Developed by students of BMSCE, Bengaluru

Notifications You must be signed in to change notification settings

varuncanamedi3301/UNISYS-Project

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

26 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Edge-driven Biometrics and Facial Recognition

Edge driven, IoT based, intelligent system for restricted access control in commercial establishments. This project is a part of UNISYS cloud 20/20 contest. Developed by students of BMSCE, Bengaluru.

Libraries and languages used :-

  1. Python 3.6
  2. Paho MQTT library
  3. OpenCV-2
  4. RPI
  5. Picamera library for Raspberry Pi camera module
  6. NumPy

Hardware used :-

  1. Raspberry Pi 4
  2. LM-358 IR proximity sensor
  3. Pi camera module
  4. USB power supply for Raspberry Pi
  5. Breadboard (for prototyping purposes)
  6. LED lights
  7. 220 ohm resistors

Basic Overview :-

In this system, we will be using a standard MQTT protocol over the local WiFi network to establish communication between devices. The goal of the system would be to provide accurate identification and access, with minimal usage of confidential biometric data. To achieve this we will be using HOG(Histogram of Oriented Graphs) features generated at the sensor level as input to the neural network image recognition algorithm. The descision given by the algorithm will be transmitted to the all the gate control systems.

About

Edge driven, IoT based, intelligent system for restricted access control in commercial establishments. This project is a part of UNISYS Cloud 20/20 contest. Developed by students of BMSCE, Bengaluru

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published