基于机器学习的学生实时困倦检测系统

Dilipkumar Borikar, Himani Dighorikar, Shridhar Ashtikar, Ishika Bajaj, Shivam Gupta
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引用次数: 0

摘要

目前国内外对疲劳检测的研究主要集中在不同技术的试验上。基于机器视觉的驾驶员疲劳检测系统用于预防事故和提高道路安全性。我们建议为学生设计一个警报系统,该系统将使用一个人的实时视频来捕捉困倦程度,并在学生处于疲劳状态时向学生发出警报信号。一个设备,如果启用了该系统,将启动网络摄像头并跟踪该人。当连续的一组帧被检测为困倦时,将根据设置的帧速率生成警报。传统的方法无法捕捉复杂的表情,然而深度学习模型的可用性使得实时检测人的状态的大量研究成为可能。我们的系统在自然光条件下运行,即使在面部被眼镜、帽子等覆盖的情况下也能准确预测。该系统使用YOLOv5模型(You Look Only Once)实现,这是一种非常快速和准确的检测模型。
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Real-Time Drowsiness Detection System for Student Tracking using Machine Learning
Many studies on fatigue detection have been carried out that were focused on experimention over different technologies. Machine vision based driver fatigue detection systems are used to prevent accidents and improve safety on roads. We propose the design of an alerting system for the students that will use real time video of a person to capture the drowsiness level and will signal alert to the student when the student is in that state of fatigue. A device, if enabled with the system, will start the webcam and track the person. An alert will be generated based on the set frame rate when a continuous set of frames are detected as drowsy. The  conventional methods cannot capture complex expressions, however the vailability of deep learning models has enabled a substantial research on detection of states of a person in real time. Our system operates in natural lighting conditions and can predict accurately even when the face is covered with glasses, head caps, etc. The system is implemented using YOLOv5 models (You Look Only Once) is an extremely fast and accurate detection model.
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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