A Comparative Study of Classification Models for Predicting Monotonous Driver Drowsiness

K. Chitra, C. Shanthi
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引用次数: 1

Abstract

Early Drowsiness is the main cause for the majority fatigue accidents directly connected to vehicle crashes. This may lead to severe vehicle accidents for the on-road drivers. A major vehicle accident happens based on a microsleep collision by sensing and alerting system. Road accidents occur due to multiple reasons and the fatigue of the driver is amongst the predominant factors. The analysis identified a wide range of models capable of predicting road accident effective interventions A device for detecting the severity of the crash prior to an accident and the parameters obtained by sensors from the pre-crash vehicle. It must be anticipated and averted based on the extent of the upcoming collision. Machine Learning could identify the reality of significance of a driver’s state of mind and predict the collision. The alert would show the severity of the drowsiness and to know the state of the driver by automatic notifications. These lives could have been spared if clinical offices are given at the opportune time.
单调驾驶员睡意预测分类模型的比较研究
早睡是大多数与车辆碰撞直接相关的疲劳事故的主要原因。这可能会导致严重的交通事故的道路上的司机。重大交通事故的发生是基于微睡眠碰撞的传感预警系统。道路交通事故的发生有多种原因,驾驶员的疲劳是其中的主要因素。该分析确定了一系列能够预测道路事故的模型,有效的干预措施,一种在事故发生前检测碰撞严重程度的装置,以及从碰撞前车辆的传感器获得的参数。它必须根据即将到来的碰撞的程度来预测和避免。机器学习可以识别驾驶员精神状态的现实意义,并预测碰撞。警报将显示困倦的严重程度,并通过自动通知了解驾驶员的状态。如果在适当的时候提供临床服务,这些生命本来是可以挽救的。
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