水平凝视眼球震颤传输联锁系统

Chase Coleman, Matthew Jenkins, William Roberts, Charlie Thomas, William Westerkamp, Rod MacDonald, A. Salman
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引用次数: 0

摘要

在美国,醉酒驾驶仍然是一个病态的问题,造成了大约三分之一的致命车祸,每年造成11,000人死亡。心理学研究表明,酒后驾车的人很可能是惯犯。该项目的目标是通过建立一种技术解决方案来解决交通部指定的需求,从而消除人为错误。在被动HGN测试的基础上,结合生理分析来确定清醒程度,如果一个人试图在醉酒状态下驾驶,将针对该个人校准个性化机器学习算法,以测试他们的清醒程度,同时保护他们的隐私。清醒测试的结果将决定个人是否能够操作车辆,暂时固定车辆,如果司机喝醉了。我们通过我们的结果表明,我们的系统可以在很短的时间内,在不损害用户隐私的情况下,以明确的区分识别驾驶员是否受到损害。
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Horizontal Gaze Nystagmus Transmission Interlock System
Driving while intoxicated continues to be a morbid issue in the United States, responsible for causing approximately one-third of all fatal car crashes, claiming 11,000 victims each year. Psychological studies have shown that those who drive under the influence are likely to be repeat-offenders. The objective of this project is to remove human error from the equation by building a technological solution to address the needs specified by the Department of Transportation. While incorporating physiological analysis to determine sobriety based upon a passive HGN test, if an individual is attempting to drive while intoxicated, a personalized machine-learning algorithm will be calibrated to said individual to test their sobriety while protecting their privacy. The result of the sobriety test will determine if the individual is able to operate the vehicle, immobilizing the vehicle temporarily, if the driver is intoxicated. We show through our results that our system can identify whether or not a driver is impaired with a clear distinction in a very short amount of time without compromising on the user’s privacy.
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