Driver Inattentiveness Detection Techniques for Intelligent Transportation Systems: A Review

Anwesha Patel, Rishu Chhabra, C. Krishna
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Abstract

Due to technical advancement, Intelligent Transportation System (ITS) aims to maximize driver safety and security. ITS helps us increase the safety and convenience of the overall transportation system. It aims to incorporate new technology into an already existing traditional transportation system to create a more efficient traffic system that both drivers and others in-charge of managing the traffic can use conveniently. ITS plays a crucial role in development of future smart cities. The core of any transportation system is its drivers. Multiple factors, including distracted driving while using a smartphone, driving while intoxicated, driving while talking on the phone, and many more, have dramatically increased the number of traffic accidents. Driver fatigue is another factor that negatively affects driving attention. Hence, detecting the driver's inattentiveness is an integral part of the ITS as it heavily ensures the safety of both drivers and passengers on the road. In this paper, we present a survey of various driver inattentiveness detection techniques using IoT, Machine Learning, or Deep Learning detection techniques. We initially require input before we can implement any of the detection strategies. Specific wearables, bio-signal sensors, cameras, and smartphone sensors, which include the magnetometer, gyroscope, GPS, and accelerometer, which are embedded into a smartphone, can be used to collect the required input. A comparative analysis has been carried out based on the benefits, drawbacks, and methods used in various techniques. Furthermore, new research directions for driver inattentiveness detection on the road have been discussed.
智能交通系统中驾驶员注意力不集中检测技术综述
由于技术的进步,智能交通系统(ITS)的目标是最大限度地提高驾驶员的安全性。智能交通系统帮助我们提高整个交通系统的安全性和便利性。它旨在将新技术融入现有的传统交通系统,创造一个更高效的交通系统,让司机和其他负责管理交通的人都能方便地使用。智能交通系统在未来智慧城市的发展中起着至关重要的作用。任何交通系统的核心都是司机。多种因素,包括使用智能手机时分心驾驶、醉酒驾驶、打电话驾驶等等,都大大增加了交通事故的数量。驾驶员疲劳是影响驾驶注意力的另一个负面因素。因此,检测驾驶员的注意力不集中是ITS的一个组成部分,因为它在很大程度上确保了道路上驾驶员和乘客的安全。在本文中,我们介绍了使用物联网,机器学习或深度学习检测技术的各种驾驶员注意力不集中检测技术的调查。在实现任何检测策略之前,我们首先需要输入。特定的可穿戴设备、生物信号传感器、摄像头和智能手机传感器,包括嵌入智能手机的磁力计、陀螺仪、GPS和加速度计,可用于收集所需的输入。对各种技术的优点、缺点和方法进行了比较分析。最后,对道路驾驶人注意力检测的新研究方向进行了探讨。
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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