一款用人工智能检测疲劳驾驶的智能手机应用程序

T. Xiao, Yu Sun
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引用次数: 0

摘要

昏睡驾驶是致命的——793人死于与昏睡驾驶有关的事故,2010年发生了91000起与昏睡驾驶有关的事故。然而,疲劳驾驶和与疲劳驾驶有关的事故是可以预防的。在本文中,我们通过一个应用程序来解决这个问题,该应用程序使用人工智能来检测用户的眼睛开放性。该应用程序可以通过计算机视觉检测用户的眼睛。根据用户的眼睛睁开度和频率,该应用程序可以推断出困倦的驾驶状态。我们将我们的应用程序应用于高速公路上的实际驾驶环境,包括白天和黑夜,以及使用定性评估方法的正常控制情况。结果表明,白天和夜间的有效率分别为88%和75%。结果表明,在受控测试条件下,白天应用时检测的有效性和准确性,比以往的工作更加灵活和高效。夜间探测和有其他干扰的探测的有效性和准确性可以进一步提高。
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 Mobile App to Detect Drowsy Driving with Artificial Intelligence
Drowsy driving is lethal- 793 died from accidents related to drowsy driving and 91000 accidents related to drowsy driving occurred [1]. However, drowsy driving and accidents related to drowsy driving are preventable. In this paper, we address the problem through an application that uses artificial intelligence to detect the eye openness of the user. The application can detect the eyes of the user via computer vision. Based on the user’s eye openness and frequencies, the sleepy driving condition can be inferred by this application. We applied our application to actual driving environments on the highway, both day and night, as well as within a normal control situation using a qualitative evaluation approach. The result shows that it is 88% effective during the day and 75% effective during nighttime. This result reveals effectiveness and accuracy of detection during daytime application under controlled testing, which is more flexible and efficient comparing to previous works. Effectiveness and accuracy for nighttime detection and detections with the presence of other distractions can be further improved.
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