Hybrid driver monitoring system based on Internet of Things and machine learning

Lian Zhu, Yijing Xiao, Xiang Li
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Abstract

With the rapid development of intelligent mobile terminal equipment, more and more intelligent mobile terminal platforms are constantly emerging, and the types are gradually diversified. This process has also slowly promoted the spring up of the Internet of things (IOT). which can collect more information from more edge devices. Thanks to the increasing amount of data that can be collected, machine learning (ML) technology can make existing applications more intelligent and analyze more complex situations. This article reviews the existing popular methods developed in vehicles, consumer electronics products and smart transportation to assess driver state, detect the driver’s environment, as well as vehicle performance, and propose a hybrid driver state monitoring system model. This model is designed to use IoT to collect all-round data from each edge devices to ensure the reliability and validity of the data, and then analyze it through ML technology, and finally give the driver appropriate instructions to help the driver in the safest driving conditions.
基于物联网和机器学习的混合驾驶员监控系统
随着智能移动终端设备的快速发展,越来越多的智能移动终端平台不断涌现,类型也逐渐多样化。这个过程也慢慢推动了物联网(IOT)的兴起。它可以从更多的边缘设备收集更多的信息。由于可以收集的数据量不断增加,机器学习(ML)技术可以使现有的应用程序更加智能,并分析更复杂的情况。本文回顾了目前在汽车、消费电子产品和智能交通中发展起来的用于评估驾驶员状态、检测驾驶员环境以及车辆性能的流行方法,并提出了一种混合动力驾驶员状态监测系统模型。该模型旨在利用IoT从各个边缘设备采集全方位的数据,保证数据的可靠性和有效性,然后通过ML技术进行分析,最后给予驾驶员适当的指令,帮助驾驶员在最安全的驾驶条件下驾驶。
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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