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一种便携式模糊驱动睡意估计系统。

A Portable Fuzzy Driver Drowsiness Estimation System.

机构信息

Electrical Engineering Department, PUC-Rio, Rio de Janeiro 22451900, Brazil.

Department of Informatics and Computer Science, Institute of Mathematics and Statistics, State University of Rio de Janeiro (UERJ), Rio de Janeiro 20550-900, Brazil.

出版信息

Sensors (Basel). 2020 Jul 23;20(15):4093. doi: 10.3390/s20154093.

Abstract

The adequate automatic detection of driver fatigue is a very valuable approach for the prevention of traffic accidents. Devices that can determine drowsiness conditions accurately must inherently be portable, adaptable to different vehicles and drivers, and robust to conditions such as illumination changes or visual occlusion. With the advent of a new generation of computationally powerful embedded systems such as the Raspberry Pi, a new category of real-time and low-cost portable drowsiness detection systems could become standard tools. Usually, the proposed solutions using this platform are limited to the definition of thresholds for some defined drowsiness indicator or the application of computationally expensive classification models that limits their use in real-time. In this research, we propose the development of a new portable, low-cost, accurate, and robust drowsiness recognition device. The proposed device combines complementary drowsiness measures derived from a temporal window of eyes (PERCLOS, ECD) and mouth (AOT) states through a fuzzy inference system deployed in a Raspberry Pi with the capability of real-time response. The system provides three degrees of drowsiness (Low-Normal State, Medium-Drowsy State, and High-Severe Drowsiness State), and was assessed in terms of its computational performance and efficiency, resulting in a significant accuracy of 95.5% in state recognition that demonstrates the feasibility of the approach.

摘要

准确自动检测驾驶员疲劳是预防交通事故的非常有价值的方法。能够准确确定困倦状态的设备必须具有便携性,能够适应不同的车辆和驾驶员,并且能够适应光照变化或视觉遮挡等条件。随着新一代计算能力强大的嵌入式系统(如 Raspberry Pi)的出现,新一代实时、低成本的便携式困倦检测系统可能成为标准工具。通常,使用此平台的提出的解决方案仅限于为一些定义的困倦指标定义阈值,或者应用计算成本高昂的分类模型,这限制了它们在实时应用中的使用。在这项研究中,我们提出开发一种新的便携式、低成本、准确和鲁棒的困倦识别设备。该设备通过在 Raspberry Pi 上部署模糊推理系统,结合来自眼睛(PERCLOS、ECD)和嘴巴(AOT)状态的时间窗口的互补困倦测量,实现实时响应。该系统提供三种困倦程度(低正常状态、中困倦状态和高严重困倦状态),并根据其计算性能和效率进行评估,状态识别的准确率达到 95.5%,证明了该方法的可行性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/98e5/7435375/826d9beae14d/sensors-20-04093-g001.jpg

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