Real-time-Driver-Drowsiness-Detection-System-Using-Deep-Learning and ML-enabled-Driver-Drowsiness-Detection
Maintenance
0/25
Adoption
6/25
Maturity
16/25
Community
15/25
Maintenance
10/25
Adoption
0/25
Maturity
11/25
Community
0/25
Stars: 21
Forks: 4
Downloads: —
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
Stars: —
Forks: —
Downloads: —
Commits (30d): 0
Language: Jupyter Notebook
License: Apache-2.0
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About Real-time-Driver-Drowsiness-Detection-System-Using-Deep-Learning
Pratham-mehta/Real-time-Driver-Drowsiness-Detection-System-Using-Deep-Learning
CS-GY 6953 Deep Learning Major Project
This system helps prevent road accidents by detecting driver drowsiness in real-time. It takes live video footage of a driver's face as input and outputs an alert when signs of drowsiness, like closed eyes or yawning, are detected. This tool is designed for anyone who operates a vehicle, especially professional drivers or individuals embarking on long journeys.
road-safety
driver-monitoring
fatigue-detection
accident-prevention
About ML-enabled-Driver-Drowsiness-Detection
us-utkarshsri07/ML-enabled-Driver-Drowsiness-Detection
Real-time driver drowsiness detection using MobileNetV2 and OpenCV
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Real-time-Driver-Drowsiness-Detection-System-Using-Deep-Learning and DL_Driver-drowsiness-detection
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