一种智能系统来检测驾驶时的困倦

A. Antunes, Miguel V. P. R. Meneses, Joaquim Gonçalves, A. C. Braga
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引用次数: 3

摘要

嗜睡是导致交通事故死亡率较高的原因之一,尽管多年来人们一直在研究这一问题,但从低成本的角度来看,仍然没有办法缓解这一问题。因此,人工智能将被用于预测睡意,并开发一种非侵入性的低成本系统,该系统使用可穿戴设备,能够在驾驶员出现任何迹象之前提醒驾驶员。这项工作的目的是展示第一阶段取得的成果,其中进行了驾驶模拟,并收集了视频信息、主观报告和基于生理的数据。研究人员从参与者的视频分析中提取了困倦程度和眨眼次数,此外还提取了基于模拟的信息,如速度变化和道路交通事故,从而可以对驾驶员的状态进行分类。考虑心率变异性(HRV)和脑电图(EEG)信息,采用多元统计过程控制方法。使用这种方法,它能够检测到不同睡意阶段之间的过渡。尽管结果很有希望,但仍然缺少分析,例如应用机器学习(ML)技术对困倦状态进行分类,并确定能够检测这种状态的最佳特征子集。除此之外,还必须进行数据分析,以了解如何预测困倦。最后,建议的解决方案必须在实际环境中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent System to Detect Drowsiness at the Wheel
Drowsiness is one of the causes of road accidents with higher fatality rate and even though it has been studied over the years, there is still no solution that can mitigate this problem from a low cost perspective. Thereby, artificial intelligence will be used to predict drowsiness and develop a non-intrusive and low-cost system using a wearable device that is capable of alerting the driver before they exhibit any signs. The aim of this work is to present the results achieved in the first stage, where driving simulations were conducted and video information, subjective reporting and physiological-based data were collected. Drowsiness levels and eye blinks were extracted from analysis of the participants’ videos, in addition to simulation based information, such as speed variations and road accidents, allowing to classify the driver’s state. Multivariate statistical process control was the method implemented, considering the Heart Rate Variability (HRV) and Electroencephalography (EEG) information. Using this methodology, it was able to detect the transition between the different drowsiness phases. Although the results are promising, there are still missing analyses, such as the application of Machine Learning (ML) techniques to classify the drowsy state and identify the best subset of features capable of detecting this state. Besides this, data analysis must be done to understand how drowsiness can be predicted. Finally, the proposed solution must be implemented in a real environment.
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