Application of Machine Learning and Image Recognition for Driver Attention Monitoring

Manav Tailor, J. Ali, Xinrui Yu, Won-Jae Yi, J. Saniie
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Abstract

This paper presents a real-time prototype system for monitoring the distraction levels of the driver. Due to the nature of high traffic conditions commonly seen nowadays, accidents are highly likely to occur as drivers cannot always recognize their exhaustion levels themselves. We utilize a single low-cost camera facing the driver connected to a single-board computer; a series of frame captures from the camera are fed to a neural network, and a pattern detection algorithm to predict the driver's distraction level is utilized. All training is conducted under personalized training sets to increase accuracy and to match an individual's driving patterns as accurately as possible. This system is designed to serve as a baseline for further system development, and many vital sub-components can be changed regarding input data type and choices of machine learning algorithms.
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机器学习和图像识别在驾驶员注意力监测中的应用
本文提出了一种实时监测驾驶员分心程度的原型系统。由于高交通状况的性质,现在普遍看到,事故很可能发生,因为司机不能总是认识到自己的疲惫程度。我们利用一个低成本的摄像头,面对连接到单板计算机的驱动程序;将相机捕捉到的一系列图像输入到神经网络中,利用模式检测算法预测驾驶员的分心程度。所有的训练都是在个性化的训练集下进行的,以提高准确性,并尽可能准确地匹配个人的驾驶模式。该系统旨在作为进一步系统开发的基线,并且可以根据输入数据类型和机器学习算法的选择更改许多重要的子组件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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