A radar-based blind spot detection and warning system for driver assistance

Guiru Liu, Lulin Wang, Sha Zou
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引用次数: 29

Abstract

This paper proposed a blind spot detection & warning system (BSDWS) for daytime and nighttime conditions. The proposed BSDWS included system architecture, radar system structure and algorithms, Intermediate frequency (IF) signal processor, motive target detector and blind spot area calibration method and system control strategy. Line frequency modulated continuous wave (LFMCW) millimeter-wave radar system was used to monitor the moving targets which were into the blind spot warning area behind the vehicle. Based on clutter distribution model, a cell greatest, smallest and averaging constant false-alarm rate (CGSA-CFAR) detector was proposed to maintain higher detection rate and low false detection rate by adjustment threshold in time based on the noise intensity, which was estimated according to the mean and standard deviation. The BSDWS was implemented on ADI DSP-based embedded platform. System was calibrated and tested on the Chery Arrizo7 car. Under daytime and nighttime conditions, the early average warning rates were up to respectively 98.38% and 98.34%. The experimental results show that the proposed BSDWS can really detect the moving targets which were into the behind warning area of the vehicle and give warning to driver effectively in various daytime and nighttime environments.
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一种基于雷达的盲点探测和警告系统,用于驾驶员辅助
提出了一种适用于白天和夜间的盲点检测与预警系统(BSDWS)。提出的BSDWS包括系统架构、雷达系统结构与算法、中频(IF)信号处理器、动机目标检测器与盲区标定方法以及系统控制策略。采用线调频连续波(LFMCW)毫米波雷达系统对车辆后方进入盲点预警区的运动目标进行监测。在杂波分布模型的基础上,提出了一种单元最大、最小和平均恒定虚警率(CGSA-CFAR)检测器,通过根据均值和标准差估计噪声强度,及时调整阈值,保持较高的检测率和较低的虚警率。BSDWS在基于ADI dsp的嵌入式平台上实现。系统在奇瑞Arrizo7轿车上进行了标定和测试。在白天和夜间条件下,早期平均预警率分别高达98.38%和98.34%。实验结果表明,所提出的BSDWS在各种白天和夜间环境下都能真实地检测到进入车辆后方预警区域的运动目标,并有效地对驾驶员进行预警。
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