This is the code of paper entitled "AFM3D: An Asynchronous Federated Meta-learning Framework for Driver Distraction Detection".
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Updated
Jun 1, 2023 - Python
This is the code of paper entitled "AFM3D: An Asynchronous Federated Meta-learning Framework for Driver Distraction Detection".
Implemantion of a lightweight neural network architecture for the detection of distracted driving among drivers.
Certainly! The Head-Eye Tracker model consists of several components and functionalities to enable head pose estimation, eye tracking, glasses detection, gaze estimation, and intersection with a 3D representation of the car's interior.
Real-time driver distraction detection using time-distributed convolutional LSTM network for mobile platforms
Driver Distraction Detection with CNN and Transfer Learning (VGG19, EfficientNet)
Infothon 3.0
Project for "Computer Vision and Cognitive Systems" course @ Unimore
[ICASSP 2025]RAPID: Recognition of Any-Possible DrIver Distraction via Multi-view Pose Generation Models
This work was supported in part by the MOTIE (Ministry of Trade, Industry & Energy), Republic of Korea, under the Technology Innovation Program, and in part by the MSIT (Ministry of Science and ICT), Republic of Korea, under the Grand ICT Research Center Support Program.For full details, refer the published journal article using the link below.
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