BlinkRadar: Non-Intrusive Driver Eye-Blink Detection with UWB Radar

Jingyang Hu, Hongbo Jiang, Daibo Liu, Zhu Xiao, S. Dustdar, Jiangchuan Liu, Geyong Min
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引用次数: 3

Abstract

The eye-blink pattern is crucial for drowsy driving diagnostics, which has become an increasingly serious social issue. However, traditional methods (e.g., with EOG, camera, wearable, and acoustic sensors) are less applicable to real-life scenarios due to the disharmony between user-friendliness, monitoring accuracy, and privacy-preserving. In this work, we design and implement BlinkRadar as a low-cost and contact-free system to conduct fine-grained eye-blink monitoring in a driving situation using a customized impulse-radio ultra-wideband (IR-UWB) radar which has superior spatial resolution with the ultra-wide bandwidth. BlinkRadar leverages an IR-UWB radar to achieve contact-free sensing, and it fully exploits the complex radar signal for data augmentation. BlinkRadar aims to single out the eye-blink induced waveforms modulated by body movements and vehicle status. It solves the serious interference caused by the unique characteristics of blinking (i.e., subtle, sparse, and non-periodic) and from the human target itself and surrounding objects. We evaluate BlinkRadar in a laboratory environment and during actual road testing. Experimental results show that BlinkRadar can achieve a robust performance of drowsy driving with a median detection accuracy of 92.2% and eye blink detection of 95.5%.
BlinkRadar:基于超宽带雷达的非侵入式驾驶员眨眼检测
眨眼模式对于疲劳驾驶的诊断至关重要,这已经成为日益严重的社会问题。然而,传统的方法(如EOG、相机、可穿戴和声学传感器)由于用户友好性、监控准确性和隐私保护之间的不协调而不太适用于现实场景。在这项工作中,我们设计并实现了BlinkRadar作为一种低成本和非接触式系统,使用定制的脉冲无线电超宽带(IR-UWB)雷达在驾驶情况下进行细粒度的眨眼监测,该雷达具有超宽带宽和优越的空间分辨率。BlinkRadar利用IR-UWB雷达实现无接触传感,并充分利用复杂的雷达信号进行数据增强。BlinkRadar的目标是挑出由身体运动和车辆状态调制的眨眼波形。它解决了闪烁的独特特性(即微妙、稀疏、非周期性)以及人类目标本身和周围物体的严重干扰。我们在实验室环境和实际道路测试中对BlinkRadar进行了评估。实验结果表明,BlinkRadar可以实现对疲劳驾驶的鲁棒性检测,中值检测准确率为92.2%,眨眼检测准确率为95.5%。
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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