License Detection and Accident Prevention System

P.D.R. Dewmin, P. Yapa, S. Lokuge, M. Pemadasa, N.C Amarasena
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Abstract

According to census and statistics department of Sri Lanka, more than 30,000 accidents occurred from 2013 to 2019. More than two thousand are fatal in this time-period. When considering the top 10 causes of deaths in Sri Lanka, road accidents is at 10th place. Drink and drive, fatigue, drowsiness, distracted driving and driving without a valid license are root causes to these accidents. 20% of the accidents are caused by the drivers without a valid driving license. Currently there is no automated system built using IoT to verify driver’s license. A system to check drowsy driving, distracted driving and driver intoxication is also lacking in the society. By analyzing the data, smart license detection and accident prevention system was proposed to identify and validate driver’s license using RFID. The proposed system also facilitates sub-systems to check driver’s drowsiness, fatigue, alcohol level and driver distracted or not using Raspberry Pi camera module based on computer vision using TensorFlow Lite. An initialized sub-system detects the intensity of the brake pedal being engaged using pressure sensor. The system analyzes the pressure and indicate the intensity level accordingly using the brake light brightness. While these sub systems reduce the probability of occurring an accident, airbag detection sub system reduce the fatality rate of an accident by detecting the deployment of airbags and informing the nearest police station and hospital about an accident using GSM module and SMS Gateway API. The proposed system will reduce the number of accidents occurring throughout the year.
许可证检测和事故预防系统
根据斯里兰卡人口统计部门的数据,从2013年到2019年,斯里兰卡发生了3万多起事故。在此期间,超过2000人死亡。在考虑斯里兰卡的十大死亡原因时,道路交通事故排在第10位。酒后驾车、疲劳、困倦、分心驾驶和无证驾驶是造成这些事故的根本原因。20%的交通事故是由没有有效驾照的司机造成的。目前还没有使用物联网建立自动化系统来验证驾驶执照。对于疲劳驾驶、分心驾驶、醉酒驾驶,社会上也缺乏相应的制度。通过对数据的分析,提出了智能驾照检测与事故预防系统,利用RFID技术对驾照进行识别与验证。该系统还利用基于TensorFlow Lite的计算机视觉的树莓派相机模块,方便子系统检测驾驶员的困倦、疲劳、酒精水平和驾驶员分心或不分心。初始化的子系统使用压力传感器检测制动踏板的强度。系统利用制动灯的亮度来分析压力并相应地指示强度等级。虽然这些子系统降低了发生事故的概率,但安全气囊检测子系统通过检测安全气囊的部署并使用GSM模块和SMS网关API通知最近的警察局和医院,从而降低了事故的死亡率。拟议的系统将减少全年发生的事故数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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