首页> 外文会议>IEEE International Workshop on Human-Computer Interaction >Drowsy Driver Detection Through Facial Movement Analysis
【24h】

Drowsy Driver Detection Through Facial Movement Analysis

机译:通过面部运动分析昏迷的驱动器检测

获取原文

摘要

The advance of computing technology has provided the means for building intelligent vehicle systems. Drowsy driver detection system is one of the potential applications of intelligent vehicle systems. Previous approaches to drowsiness detection primarily make pre-assumptions about the relevant behavior, focusing on blink rate, eye closure, and yawning. Here we employ machine learning to datamine actual human behavior during drowsiness episodes. Automatic classifiers for 30 facial actions from the Facial Action Coding system were developed using machine learning on a separate database of spontaneous expressions. These facial actions include blinking and yawn motions, as well as a number of other facial movements. In addition, head motion was collected through automatic eye tracking and an accelerometer. These measures were passed to learning-based classifiers such as Adaboost and multinomial ridge regression. The system was able to predict sleep and crash episodes during a driving computer game with 96% accuracy within subjects and above 90% accuracy across subjects. This is the highest prediction rate reported to date for detecting real drowsiness. Moreover, the analysis revealed new information about human behavior during drowsy driving.
机译:计算技术的进步已经为建立智能车辆系统提供了手段。昏昏欲睡的驱动器检测系统是智能车辆系统的潜在应用之一。以前的嗜睡检测方法主要是关于相关行为的预先假设,专注于眨眼率,眼睛闭合和打开。在这里,我们在嗜睡中使用机器学习到Datamine实际的人类行为。使用机器学习在单独的自发表达式数据库上使用来自面部动作编码系统的30个面部动作的自动分类器。这些面部行动包括眨眼和打哈欠的运动,以及许多其他面部运动。此外,通过自动眼睛跟踪和加速度计收集头部运动。这些措施被传递给基于学习的分类器,如adaboost和多项脊山脉回归。该系统能够在驾驶计算机游戏期间预测睡眠和碰撞事件,在受试者内具有96%的精度,并且跨对象的精度高于90%。这是迄今为止检测真实嗜睡的最高预测率。此外,分析揭示了昏昏欲睡期间人类行为的新信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号