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作 者:Shanmeng Zhao Yaxue Peng Yaqing Wang Gang Li Mohammed Al-Mahbashi
机构地区:[1]School of Electronics and Control Engineering,Chang’an University,Xi’an,710064,China [2]Digital Business Department,Shaanxi Expressway Engineering Testing Inspection & Testing Co.,Ltd.,Xi’an,710086,China [3]School of Energy and Electrical Engineering,Chang’an University,Xi’an,710064,China
出 处:《Computers, Materials & Continua》2025年第3期4995-5017,共23页计算机、材料和连续体(英文)
基 金:supported by the Science and Technology Bureau of Xi’an project(24KGDW0049);the Key Research and Development Programof Shaanxi(2023-YBGY-264);the Key Research and Development Program of Guangxi(GK-AB20159032).
摘 要:In recent years,the country has spent significant workforce and material resources to prevent traffic accidents,particularly those caused by fatigued driving.The current studies mainly concentrate on driver physiological signals,driving behavior,and vehicle information.However,most of the approaches are computationally intensive and inconvenient for real-time detection.Therefore,this paper designs a network that combines precision,speed and lightweight and proposes an algorithm for facial fatigue detection based on multi-feature fusion.Specifically,the face detection model takes YOLOv8(You Only Look Once version 8)as the basic framework,and replaces its backbone network with MobileNetv3.To focus on the significant regions in the image,CPCA(Channel Prior Convolution Attention)is adopted to enhance the network’s capacity for feature extraction.Meanwhile,the network training phase employs the Focal-EIOU(Focal and Efficient Intersection Over Union)loss function,which makes the network lightweight and increases the accuracy of target detection.Ultimately,the Dlib toolkit was employed to annotate 68 facial feature points.This study established an evaluation metric for facial fatigue and developed a novel fatigue detection algorithm to assess the driver’s condition.A series of comparative experiments were carried out on the self-built dataset.The suggested method’s mAP(mean Average Precision)values for object detection and fatigue detection are 96.71%and 95.75%,respectively,as well as the detection speed is 47 FPS(Frames Per Second).This method can balance the contradiction between computational complexity and model accuracy.Furthermore,it can be transplanted to NVIDIA Jetson Orin NX and quickly detect the driver’s state while maintaining a high degree of accuracy.It contributes to the development of automobile safety systems and reduces the occurrence of traffic accidents.
关 键 词:Fatigue driving facial feature lightweight network MobileNetv3-YOLOv8 dlib toolkit REAL-TIME
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