Advance driver assistance system
Project summary: ADAS: Advance Driver Assistance System This is AI based solution to monitor drive in-cabin and out-cabin In in-cabin mode driver will be monitored, his authentication (face recognition if the driver is authorized), and driver monitoring like if dri
2025-06-28 16:25:00 - Adil Khan
Advance driver assistance system
Project Area of Specialization Artificial IntelligenceProject SummaryProject summary:
ADAS: Advance Driver Assistance System
This is AI based solution to monitor drive in-cabin and out-cabin
In in-cabin mode driver will be monitored, his authentication (face recognition if the driver is authorized), and driver monitoring like if driver is drowsy/sleep or if he is smoking, of he has not tied seat belt, his head eye movement etc.
In Out-cabin mode, roads will be detected (like in which lane driver is driving) and if there is any vehicle or pedestrian comes under red zone area or near to the vehicle is will generate alarm, there will road lane detection, sign boards for drive also driver’s speed at what speed he is driving to check his performance etc.
Project ObjectivesObjective is to monitor driver.This is for fleet management companies where driver authentication and assistance is required ,Also companies like uber and careem.
Moreover the role of ADAS is to prevent deaths and injuries by reducing the number of car accidents
Essential safety-critical ADAS applications include:
• Pedestrian detection/avoidance
• Lane departure warning/correction
• Traffic sign recognition
• Automatic emergency alarm
Project Implementation MethodMethod:
In-cabin:
Face detection
Drowsiness detection
Seat belt
Head motion
All will be done using image processing and machine learning (AI)
Camera will be mounted inside a car for in cabin and it will be connected with laptop
Live video will be processed.
Out-cabin:
Lane detection,
Vehicle and pedestrian detection
Output through voice
Camera will be installed outside a car
Camera will be connected with laptop
There will be region of interest in the video stream and if pedestrian or vehicle comes inside that region of interest (or near to the vehicle) it will generate an alarm
Dashboard will show overall results, history.
MORE FEATURES
• There is front end involved with AI modules incorporated with it
• There will be a dashboard developed (front end application) in flask (html, CSS, python) to visualize everything
• Real time detection of driver activities and send it to administrator.
• History maintaining with image, time, date
• There can be some research aspect as well, like data collection for/of drivers to train machine learning model for driver monitoring
Benefits of the ProjectBenefits of ADAS are to keep driver in supervision (intended to monitor driver from a distance)
Safety majors are to avoid collisions by using technologies to alert drivers to potential hazards or take over control of the vehicle to avoid such danger.
Adaptive features. Automated lighting, adaptive cruise control, and pedestrian crash avoidance mitigation (PCAM) are features that incorporate navigational warnings to alert drivers to potential dangers, such as vehicles in blind spots, lane departures, and more.
Sensors have the potential to self-calibrate in the future to focus on the inherent safety and dependability of these systems.
Technical Details of Final DeliverableTools and Technology used
• Flask
• Cloud
• Python
• Cameras
• AI modules
• machine learning model
Final Deliverable of the Project HW/SW integrated systemCore Industry ITOther IndustriesCore Technology Artificial Intelligence(AI)Other TechnologiesSustainable Development Goals Industry, Innovation and InfrastructureRequired Resources| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| Total in (Rs) | 69400 | |||
| Stereo Camera | Equipment | 1 | 37000 | 37000 |
| Dash Cam | Equipment | 1 | 30000 | 30000 |
| Printing | Miscellaneous | 4 | 600 | 2400 |