A Brain Wave-Verified Driver Alert System for Vehicle Collision Avoidance

IF 0.7 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY SAE International Journal of Transportation Safety Pub Date : 2021-04-30 DOI:10.4271/09-09-01-0002
P. Riyahi, A. Eskandarian, Ce Zhang
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引用次数: 2

Abstract

Collision alert and avoidance systems (CAS) could help to minimize driver errors. They are instrumental as an advanced driver-assistance system (ADAS) when the vehicle is facing potential hazards. Developing effective ADAS/CAS, which provides alerts to the driver, requires a fundamental understanding of human sensory perception and response capabilities. This research explores the premise that external stimulation can effectively improve drivers’ reaction and response capabilities. Therefore this article proposes a light-emitting diode (LED)-based driver warning system to prevent potential collisions while evaluating novel signal processing algorithms to explore the correlation between driver brain signals and external visual stimulation. When the vehicle approaches emerging obstacles or potential hazards, an LED light box flashes to warn the driver through visual stimulation to avoid the collision through braking. Thirty (30) subjects completed a driving simulator experiment under different near-collision scenarios. The Steady-State Visually Evoked Potentials (SSVEP) of the drivers’ brain signals and their collision mitigation (control performance) data were analyzed to evaluate the LED warning system’s effectiveness. The results show that (1) The proposed modified canonical correlation analysis evaluation (CCA-EVA) algorithm can detect SSVEP responses with 4.68% higher accuracy than the Adaptive Kalman filter; (2) The proposed driver monitoring and alert system produce on average a 52% improvement in time to collision (TTC), 54% improvement in reaction distance (RD), and an overall 26% reduction in collision rate as compared to similar tests without the LED warning.
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一种基于脑电波验证的车辆防撞驾驶员报警系统
碰撞警报和规避系统(CAS)可以帮助最大限度地减少驾驶员的错误。当车辆面临潜在危险时,它们作为高级驾驶员辅助系统(ADAS)发挥着重要作用。开发有效的ADAS/neneneba CAS,为驾驶员提供警报,需要对人类感官感知和反应能力有基本的了解。本研究探讨了外部刺激可以有效提高驾驶员反应和反应能力的前提。因此,本文提出了一种基于发光二极管(LED)的驾驶员警告系统,以防止潜在的碰撞,同时评估新的信号处理算法,以探索驾驶员大脑信号与外部视觉刺激之间的相关性。当车辆接近新出现的障碍物或潜在危险时,LED灯箱会闪烁,通过视觉刺激警告驾驶员,以避免通过制动发生碰撞。三十(30)名受试者在不同的近距离碰撞场景下完成了驾驶模拟器实验。分析驾驶员大脑信号的稳态视觉诱发电位(SSVEP)及其碰撞缓解(控制性能)数据,以评估LED报警系统的有效性。结果表明:(1)所提出的改进的正则相关分析评价(CCA-EVA)算法检测SSVEP响应的准确率比自适应卡尔曼滤波器高4.68%;(2) 与没有LED警告的类似测试相比,所提出的驾驶员监测和警报系统在碰撞时间(TTC)方面平均提高了52%,在反应距离(RD)方面提高了54%,碰撞率总体降低了26%。
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来源期刊
SAE International Journal of Transportation Safety
SAE International Journal of Transportation Safety TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
1.10
自引率
0.00%
发文量
21
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