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In this project, we present a hybrid deep learning model for real-time driver activity recognition in both day and nighttime conditions. For full details and insights, refer to the published journal article titled "An Intelligent Real-Time Driver Activity Recognition System Using Spatio-Temporal Features."

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Deep-Learning-Approach-for-Advanced-Driver-Assistance-System [국책 과제/National Project, South Korea]

In this project a hybrid deep learning tool is utilized to detect up to nine various distracted driver activities including driving, drinking, texting, smoking, talking with rising hands, adjusting the navigation system, looking outside, nodding off to sleep, fainting inside a real vehicle cabin during the daytime and nighttime conditions. The developed model is integrated with an alert system in a real vehicles and tested to give a real-time warning system when the drivers engage in distraction activities while driving.

Real-Time Driver Activity Detection in DayTime(RGB Sensor)

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Real-Time Driver Activity Detection in NightTime(Thermal Infrared Sensor)

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In this project, we present a hybrid deep learning model for real-time driver activity recognition in both day and nighttime conditions. For full details and insights, refer to the published journal article titled "An Intelligent Real-Time Driver Activity Recognition System Using Spatio-Temporal Features."

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