Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Drowsiness Detection and Alert System

View through CrossRef
Drowsiness detection is a solution for identifying signs of fatigue or sleepiness in individuals. One of the key features of our model is that it can detect drowsiness at night as well using Mobile cameras (infrared sensors). The system captures infrared images of the person's face and analyzes the physiological and behavioral cues related to drowsiness. Infrared sensors allow for drowsiness detection in low-light conditions, making it particularly useful for night-time scenarios such as night driving. The system can trigger alerts or interventions if drowsiness is detected, helping to prevent accidents or mistakes. We will be using libraries like OpenCV, TensorFlow, CNN, and VGG19 features in our model. By combining the accessibility of Android devices with the advanced capabilities of the Deep Learning algorithm, drowsiness detection using infrared sensors has the potential to greatly improve the safety and productivity of individuals in their daily lives.
Title: Drowsiness Detection and Alert System
Description:
Drowsiness detection is a solution for identifying signs of fatigue or sleepiness in individuals.
One of the key features of our model is that it can detect drowsiness at night as well using Mobile cameras (infrared sensors).
The system captures infrared images of the person's face and analyzes the physiological and behavioral cues related to drowsiness.
Infrared sensors allow for drowsiness detection in low-light conditions, making it particularly useful for night-time scenarios such as night driving.
The system can trigger alerts or interventions if drowsiness is detected, helping to prevent accidents or mistakes.
We will be using libraries like OpenCV, TensorFlow, CNN, and VGG19 features in our model.
By combining the accessibility of Android devices with the advanced capabilities of the Deep Learning algorithm, drowsiness detection using infrared sensors has the potential to greatly improve the safety and productivity of individuals in their daily lives.

Related Results

Driver Drowsiness Detection Using Smartphone
Driver Drowsiness Detection Using Smartphone
Abstract: Transition state between being awake and asleep is called drowsiness. Driver drowsiness is the major cause of traffic crashes and financial losses. This abstract presents...
Real-time driver drowsiness detection using transformer architectures: a novel deep learning approach
Real-time driver drowsiness detection using transformer architectures: a novel deep learning approach
Abstract Driver drowsiness is a leading cause of road accidents, resulting in significant societal, economic, and emotional losses. This paper introduces a novel and robu...
Habit and Automaticity in Medical Alert Override: Cohort Study (Preprint)
Habit and Automaticity in Medical Alert Override: Cohort Study (Preprint)
BACKGROUND Prior literature suggests that alert dismissal could be linked to physicians’ habits and automaticity. The evidence for this perspective has been...
EEG based Drowsiness Prediction Using Machine Learning Approach
EEG based Drowsiness Prediction Using Machine Learning Approach
Drowsiness is the main cause of road accidents and it leads to severe physical injury, death, and significant economic losses. To monitor driver drowsiness various methods like Beh...
Real-time driver drowsiness and distraction detection using convolutional neural network with multiple behavioral features
Real-time driver drowsiness and distraction detection using convolutional neural network with multiple behavioral features
Road accidents caused by driver drowsiness and distraction represent significant threats to worldwide road safety, with fatalities and injuries at alarming rates in the Philippines...
Driver drowsiness detection system
Driver drowsiness detection system
In contemporary times, the escalating incidence of accidents attributable to drowsy driving presents a formidable challenge. Acknowledging the pivotal role of driver fatigue and in...
Driver Drowsiness Detection Using Wearable Brain Sensing Headband and Three-Level Voting Model
Driver Drowsiness Detection Using Wearable Brain Sensing Headband and Three-Level Voting Model
<p>Drowsiness is the leading cause of many fatal accidents and a substantial financial burden for the economy. Efforts have been made to develop techniques to prevent major a...
Driver Drowsiness Detection Using Wearable Brain Sensing Headband and Three-Level Voting Model
Driver Drowsiness Detection Using Wearable Brain Sensing Headband and Three-Level Voting Model
<p>Drowsiness is the leading cause of many fatal accidents and a substantial financial burden for the economy. Efforts have been made to develop techniques to prevent major a...

Back to Top