Are you

AUTOMATIC DOOR UNLOCKING SYSTEM USING FACE RECOGNITION - esp32-cam Project IOT


AUTOMATIC DOOR UNLOCKING SYSTEM USING FACE RECOGNITION - esp32-cam Project IOT
This report describes the design and implementation of automatic door unlocking system using face recognition for the purpose of increasing security and safety. Today we are facing security issues in every aspect. Instead of monitoring that through password or pins unique faces can be made use of as they are one’s biometric trait. These are innate and cannot be modified or stolen easily.

The proposed face recognition door lock security system has been developed to prevent robbery in highly secure areas like home environment with lesser power consumption and more reliable stand lone security device for both intruder detection and for door security. The project deals with the look and implementation of secure automatic door unlock by using Esp-32. Web camera for capturing the images from the video frame is operated and controlled by Arduino Uno using Esp board library to train and store human faces for recognition. In this project, we are using esp32-cam as face recognition module to capture human images and to compare with stored database images. If it matches with the authorized user, then the system will unlock the door by an electromagnetic lock. The need for facial recognition system that is fast and accurate that continuously increasing which can detect intruders and restricts all unauthorized users from highly secured areas and aids in minimizing human error.

Face recognition is one of the most secured system than biometric pattern recognition technique which is used in a large spectrum of application. The time and accuracy factor is considered about the major problem which specifies the performance of automatic face recognition in real-time environments.

Various solutions have been proposed using multicore systems. By considering the present challenge, this provides the complete architectural design and proposes an analysis for a real time face recognition system with LBPH Algorithm.   Thus, the image extracted and allowed to match with the database pictures. If the images are matched, the door unlocks mechanically. The planning of face recognition system exploitation esp32-cam will create the smaller, lighter and with lower power consumption, therefore it’s a lot of convenient than the PC-based face recognition system. Principle element analysis LBPH (Local Binary Pattern Histogram) algorithmic program is employed for the face recognition and detection method. In this algorithm it converts the image from colour to grayscale image and divides into pixels and it will be allocated in matrix form and those images will be stored in the database. If an image is detected. The developed theme is affordable, fast, and extremely reliable and provides enough flexibility to suits any environment of various systems and the level of security can be raised by using face detection.

Related project idea for free


Design and implementation of an IoT-Based diabetes remote monitoring system

Real-time diabetes remote monitoring uses Internet of Things (IoT) technology to measure blood glucose levels, heart rate, blood pressure, and body temperature. Typically, a self-management system for diabetes is designed to detect the presence of particular molecules, particularly hyperglycemia, to...

Read more>>

IoT base smart water leakage detection system

In life, water is a valuable resource. Water is essential for life and is utilized for a variety of activities in daily life. This device was developed to detect a pipe leak and maintain it directly in a short period of time. In order to prevent problems, it is crucial to have real-time management o...

Read more>>

Smart miner helmet and monitoring system - IOT Project

The usage of technology in Rwanda's mining industry has made it difficult to avoid deaths in mines; it is for this reason that miner safety from threats outside and inside mining tunnels is critical. The process of mining minerals underground is fraught with dangers such as high concentrations o...

Read more>>

AI-Enabled IoT mobile application for early maize plant disease detection

For Rwanda's small-scale farmers, the maize crop has grown significantly in importance as a crop for food security and income. Unfortunately, a number of illnesses continue to cause maize producers to have much lower yields. Diseases have a negative impact on the quality of maize harvests and im...

Read more>>

Water tank quality and level monitoring system

All humans need water to survive; some of the uses of water include drinking, cooking, cleaning, and hygienic needs. Sometimes water shortages due to climate change or prolonged sunny weather, water pipeline breakdowns, poorly functioning water treatment facilities, and increased water demand in var...

Read more>>