基于神经网络的驾驶员预警系统

Ishan Jain, Snehangsu Biswas, Hrishita Singh, Prakriti Aggarwal
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引用次数: 0

摘要

据报道,根据美国国家睡眠基金会的数据,69%的成年司机报告说,在过去的一年里,他们每月至少有一次在昏昏欲睡的状态下开车。在当今这个快速发展的世界里,人们通常会因为高要求的工作而感到压力和睡眠不足。因此,这些人在开车时睡着了。视觉疲劳和困倦导致许多事故,因此在世界各地发生许多死亡和受伤事件。为了提高车辆的安全性,我们提出了一种先进的驾驶辅助系统(ADAS)。该系统旨在通过摄像头定位和估计驾驶员的眼睛状况和头部位置,从而显示驾驶员的困倦程度。我们还提出了一种速度控制系统,可以检测道路上的指示牌,并根据机器学习指示驾驶员继续保持相同的速度或减速。该系统还计算两辆车之间的距离,根据距离指示驾驶员继续保持相同的速度或减速。随着该系统在多辆车上的应用,出行的安全性提高,由于驾驶员疏忽造成的事故率将会降低。
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Neural Network Based Driver Warning System
According to reports, an astounding 69% of adult drivers report driving while drowsy at least once a month in the previous year according to The National Sleep Foundation. In today's fast-moving world people are usually stressed and sleep-deprived due to their demanding career. As a result of this such people fall asleep behind the wheel. Visual fatigue and drowsiness cause many accidents due to which many deaths and injuries are taking place around the world. To increase vehicle security, we propose an advanced driver assistance system (ADAS). This system aims to locate and estimate the driver's eye condition and head position using a camera that will be an indication of his drowsiness level. We also propose a speed control system to detect signboards on the way and instruct the driver either to continue with the same speed or to decelerate the vehicle based on machine learning. This system also calculates the distance between two vehicles, based on the distance it instructs the driver either to continue with the same speed or to slow down. With the system on board of multiple vehicles the safety of the travel increases and the rate of accidents caused due to driver negligence will be reduced.
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