Btech projects||Iot projects||AI ML projects
Sale!

8,900.00

Important Notes

Project Code : PF_AI_ML_3

1.This project we have done on esp32 microcontroller and esp32 cam
2.Same project possible on raspberry pi controller
3.Image processing results depends on external light
4.Along with project we will provide

a. original code
b. circuit diagram
c. Documentation data

5.This project IEEE reference titles

a. Driver drowsiness monitoring system using visual behaviour and machine learning

Driver Drowsiness Detection Using AI And Machine Learning With Visual Behaviour

DOWNLOAD ABSTRACT

AIM:

Design development of Driver drowsiness detection using AI and machine learning with visual behaviour.

PURPOSE:

Driver drowsiness is a major contributor to road accidents, posing a significant threat to road safety and human lives. This paper presents an advanced solution for real-time driver drowsiness detection using AI and machine learning techniques, with a particular focus on analysing visual behaviour with camera vision. The proposed system utilizes computer vision algorithms to monitor and analyse the driver’s facial expressions and eye movements. Deep Learning models, such as Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs), are employed to process real-time video streams from an on board camera, capturing the driver’s face and eye activities. By extracting relevant features from facial landmarks and eye tracking data, the system can discern signs of drowsiness, such as drooping eyelids, frequent blinking, and changes in facial expressions. This model mainly focuses on eye open and close. Also this system can detect alcohol intake. The proposed project title is driver drowsiness detection using AI and machine learning with visual behaviour.

DESCRIPTION:

ESP32 camera and GSM module SIM800C interfaced with ESP32 UART port. Alcohol sensor (MQ3) connected to ESP32 controller digital pin.

WORKING:

ESP32 camera detects eye open and close status. It sends eye status to ESP32 controller. If Eye open and Alcohol not detected and ignition key ON then engine (motor) will be ON. If eye close or alcohol detected then engine (motor) will not ON. Eye status, alcohol status information will upload to IOT server. Along with IOT notification, it will send SMS to mobile number.

TECHNICAL SPECIFICATIONS:
HARDWARE:

Microcontroller          :           ESP32 controller

Crystal                        :           16 MHz

LCD                            :           16×4 LCD display

GSM module              :           SIM800C

Relay                           :           12V DC electromagnetic

Alcohol Sensor           :           MQ3

Camera                       :           ESP32 camera

Buzzer                         :           5V DC

Power Source              :           12v 1 amp DC adaptor

SOFTWARE:

Arduino IDE

Proteus based circuit diagram

APPLICATIONS:
  • Helmet Detection project
  • AI and ML projects
  • Bikers safety system using visual inspection
  • Deep learning projects
  • CNN projects
  • RNN projects
INTERFACES COVERD:
  • We have covered ESP32 controller programming and interface
  • ESP32 cam and GSM interface
  • IOT server protocol implementation

 

Reviews

There are no reviews yet.

Be the first to review “Driver Drowsiness Detection Using AI And Machine Learning With Visual Behaviour”

Your email address will not be published. Required fields are marked *

Shopping Cart
0
    0
    Your Cart
    Your cart is emptyReturn to Shop