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Passive in-vehicle driver breath alcohol detection using advanced sensor signal acquisition and fusion

机译:使用先进的传感器信号采集和融合技术的被动式车载驾驶员呼气酒精检测

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摘要

Objective: The research objective of the present investigation is to demonstrate the present status of passive in-vehicle driver breath alcohol detection and highlight the necessary conditions for large-scale implementation of such a system. Completely passive detection has remained a challenge mainly because of the requirements on signal resolution combined with the constraints of vehicle integration. The work is part of the Driver Alcohol Detection System for Safety (DADSS) program aiming at massive deployment of alcohol sensing systems that could potentially save thousands of American lives annually. Method: The work reported here builds on earlier investigations, in which it has been shown that detection of alcohol vapor in the proximity of a human subject may be traced to that subject by means of simultaneous recording of carbon dioxide (CO2) at the same location. Sensors based on infrared spectroscopy were developed to detect and quantify low concentrations of alcohol and CO2. In the present investigation, alcohol and CO2 were recorded at various locations in a vehicle cabin while human subjects were performing normal in-step procedures and driving preparations. A video camera directed to the driver position was recording images of the driver's upper body parts, including the face, and the images were analyzed with respect to features of significance to the breathing behavior and breath detection, such as mouth opening and head direction. Results: Improvement of the sensor system with respect to signal resolution including algorithm and software development, and fusion of the sensor and camera signals was successfully implemented and tested before starting the human study. In addition, experimental tests and simulations were performed with the purpose of connecting human subject data with repeatable experimental conditions. The results include occurrence statistics of detected breaths by signal peaks of CO2 and alcohol. From the statistical data, the accuracy of breath alcohol estimation and timing related to initial driver routines (door opening, taking a seat, door closure, buckling up, etc.) can be estimated.The investigation confirmed the feasibility of passive driver breath alcohol detection using our present system. Trade-offs between timing and sensor signal resolution requirements will become critical. Further improvement of sensor resolution and system ruggedness is required before the results can be industrialized. Conclusions: It is concluded that a further important step toward completely passive detection of driver breath alcohol has been taken. If required, the sniffer function with alcohol detection capability can be combined with a subsequent highly accurate breath test to confirm the driver's legal status using the same sensor device. The study is relevant to crash avoidance, in particular driver monitoring systems and driver-vehicle interface design.
机译:目的:本研究的研究目的是证明被动式车载驾驶员呼气酒精检测的现状,并强调大规模实施该系统的必要条件。完全无源检测仍然是一个挑战,主要是因为对信号分辨率的要求以及车辆集成的限制。这项工作是驾驶员安全酒精检测系统(DADSS)计划的一部分,该计划旨在大规模部署酒精感测系统,该系统每年可能挽救成千上万的美国人的生命。方法:此处报道的工作建立在较早的研究基础之上,其中已表明,通过在同一位置同时记录二氧化碳(CO2),可以追溯到检测到人类受试者附近的酒精蒸气。 。开发了基于红外光谱的传感器,以检测和量化低浓度的酒精和二氧化碳。在本次调查中,当人类受试者进行正常的脚步操作和驾驶准备时,在车厢内的各个位置记录了酒精和二氧化碳。对准驾驶员位置的摄像机正在记录包括面部在内的驾驶员上半身部位的图像,并分析了这些图像对呼吸行为和呼吸检测的重要特征,例如张口和头部方向。结果:在开始进行人体研究之前,已成功实施并测试了传感器系统在信号分辨率方面的改进,包括算法和软件开发,以及传感器和摄像机信号的融合。此外,进行了实验测试和模拟,目的是将人类受试者数据与可重复的实验条件联系起来。结果包括通过CO2和酒精的信号峰检测到的呼吸的发生统计信息。根据统计数据,可以估算出酒精度估算的准确性和与驾驶员初始程序(门打开,座位,门关闭,屈曲等)有关的时机,这项研究证实了被动驾驶员酒精度检测的可行性使用我们现有的系统。时序和传感器信号分辨率要求之间的权衡将变得至关重要。在将结果工业化之前,需要进一步提高传感器分辨率和系统耐用性。结论:结论是,朝着完全被动检测驾驶员呼吸酒精迈出了又重要的一步。如果需要,可以将具有酒精检测功能的嗅探器功能与随后的高精度呼气测验结合使用,以使用同一传感器设备确认驾驶员的合法身份。该研究与避免撞车有关,特别是驾驶员监控系统和驾驶员车辆界面设计。

著录项

  • 作者

    Ljungblad, Jonas;

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  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 eng
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