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Enhancing Driver Monitoring Systems Based on Novel Multi-Task Fusion Algorithm
by
Dada, Ibidapo Dare
, Abayomi-Alli, Adebayo A.
, Raudonis, Vidas
, Vijeikis, Romas
in
Accident prevention
/ Accidents, Traffic - prevention & control
/ Accuracy
/ Adult
/ Algorithms
/ Analysis
/ Artificial intelligence
/ Attention
/ Automobile drivers
/ Automobile Driving
/ Autonomous vehicles
/ Behavior
/ Cameras
/ Comparative analysis
/ computer vision
/ Datasets as Topic
/ Deep learning
/ Digital video
/ Distracted driving
/ driver activity recognition
/ driver attention analysis
/ driver monitoring
/ Humans
/ Identification and classification
/ Literature reviews
/ Machine vision
/ Methods
/ Middle Aged
/ Monitoring systems
/ multi-perspective learning
/ multi-task fusion
/ Multitasking Behavior
/ Neural networks
/ Neural Networks, Computer
/ Observations
/ Sensors
/ Traffic accidents & safety
/ Young Adult
2025
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Enhancing Driver Monitoring Systems Based on Novel Multi-Task Fusion Algorithm
by
Dada, Ibidapo Dare
, Abayomi-Alli, Adebayo A.
, Raudonis, Vidas
, Vijeikis, Romas
in
Accident prevention
/ Accidents, Traffic - prevention & control
/ Accuracy
/ Adult
/ Algorithms
/ Analysis
/ Artificial intelligence
/ Attention
/ Automobile drivers
/ Automobile Driving
/ Autonomous vehicles
/ Behavior
/ Cameras
/ Comparative analysis
/ computer vision
/ Datasets as Topic
/ Deep learning
/ Digital video
/ Distracted driving
/ driver activity recognition
/ driver attention analysis
/ driver monitoring
/ Humans
/ Identification and classification
/ Literature reviews
/ Machine vision
/ Methods
/ Middle Aged
/ Monitoring systems
/ multi-perspective learning
/ multi-task fusion
/ Multitasking Behavior
/ Neural networks
/ Neural Networks, Computer
/ Observations
/ Sensors
/ Traffic accidents & safety
/ Young Adult
2025
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Enhancing Driver Monitoring Systems Based on Novel Multi-Task Fusion Algorithm
by
Dada, Ibidapo Dare
, Abayomi-Alli, Adebayo A.
, Raudonis, Vidas
, Vijeikis, Romas
in
Accident prevention
/ Accidents, Traffic - prevention & control
/ Accuracy
/ Adult
/ Algorithms
/ Analysis
/ Artificial intelligence
/ Attention
/ Automobile drivers
/ Automobile Driving
/ Autonomous vehicles
/ Behavior
/ Cameras
/ Comparative analysis
/ computer vision
/ Datasets as Topic
/ Deep learning
/ Digital video
/ Distracted driving
/ driver activity recognition
/ driver attention analysis
/ driver monitoring
/ Humans
/ Identification and classification
/ Literature reviews
/ Machine vision
/ Methods
/ Middle Aged
/ Monitoring systems
/ multi-perspective learning
/ multi-task fusion
/ Multitasking Behavior
/ Neural networks
/ Neural Networks, Computer
/ Observations
/ Sensors
/ Traffic accidents & safety
/ Young Adult
2025
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Enhancing Driver Monitoring Systems Based on Novel Multi-Task Fusion Algorithm
Journal Article
Enhancing Driver Monitoring Systems Based on Novel Multi-Task Fusion Algorithm
2025
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Overview
Distracted driving continues to be a major contributor to road accidents, highlighting the growing research interest in advanced driver monitoring systems for enhanced safety. This paper seeks to improve the overall performance and effectiveness of such systems by highlighting the importance of recognizing the driver’s activity. This paper introduces a novel methodology for assessing driver attention by using multi-perspective information using videos that capture the full driver body, hands, and face and focusing on three driver tasks: distracted actions, gaze direction, and hands-on-wheel monitoring. The experimental evaluation was conducted in two phases: first, assessing driver distracted activities, gaze direction, and hands-on-wheel using a CNN-based model and videos from three cameras that were placed inside the vehicle, and second, evaluating the multi-task fusion algorithm, considering the aggregated danger score, which was introduced in this paper, as a representation of the driver’s attentiveness based on the multi-task data fusion algorithm. The proposed methodology was built and evaluated using a DMD dataset; additionally, model robustness was tested on the AUC_V2 and SAMDD driver distraction datasets. The proposed algorithm effectively combines multi-task information from different perspectives and evaluates the attention level of the driver.
Publisher
MDPI AG,Multidisciplinary Digital Publishing Institute (MDPI)
Subject
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