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Comparative of signal processing techniques for Micro-Doppler signature extraction with automotive radar systems

机译:汽车雷达系统微多普勒信号提取信号处理技术的比较

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摘要

In recent years, the automotive industry has experienced an evolution toward more powerful driver assistance systems that provide enhanced vehicle safety. These systems typically operate in the optical and microwave regions of the electromagnetic spectrum and have demonstrated high efficiency in collision and risk avoidance. Microwave radar systems are particularly relevant due to their operational robustness under adverse weather or illumination conditions. Our objective is to study different signal processing techniques suitable for extraction of accurate micro-Doppler signatures of slow moving objects in dense urban environments. Selection of the appropriate signal processing technique is crucial for the extraction of accurate micro-Doppler signatures that will lead to better results in a radar classifier system. For this purpose, we perform simulations of typical radar detection responses in common driving situations and conduct the analysis with several signal processing algorithms, including short time Fourier Transform, continuous wavelet or Kernel based analysis methods. We take into account factors such as the relative movement between the host vehicle and the target, and the non-stationary nature of the target's movement. A comparison of results reveals that short time Fourier Transform would be the best approach for detection and tracking purposes, while the continuous wavelet would be the best suited for classification purposes.
机译:近年来,汽车行业经历了向功能更强大的驾驶员辅助系统的演进,该系统可增强车辆的安全性。这些系统通常在电磁波谱的光学和微波区域内工作,并且在碰撞和规避风险方面表现出很高的效率。微波雷达系统由于在恶劣天气或光照条件下的运行稳定性而特别重要。我们的目标是研究适用于在稠密城市环境中提取缓慢移动物体的精确微多普勒信号的不同信号处理技术。选择合适的信号处理技术对于提取准确的微多普勒信号至关重要,这将在雷达分类器系统中带来更好的结果。为此,我们对常见驾驶情况下的典型雷达检测响应进行仿真,并使用多种信号处理算法进行分析,包括短时傅立叶变换,连续小波或基于核的分析方法。我们考虑到诸如宿主车辆与目标之间的相对运动以及目标运动的非平稳性等因素。结果比较表明,短时傅立叶变换将是检测和跟踪目的的最佳方法,而连续小波将最适合分类的目的。

著录项

  • 来源
    《Radar sensor technology XVIII》|2014年|90771A.1-90771A.14|共14页
  • 会议地点 Baltimore MD(US)
  • 作者单位

    Electrical and Computer Engineering Department, The University of Texas at El Paso, El Paso, TX, 79968, USA Autonomous Driving North America, Mercedes-Benz Research and Development North America, Sunnyvale, CA, 94085, USA;

    Electrical and Computer Engineering Department, The University of Texas at El Paso, El Paso, TX, 79968, USA Autonomous Driving North America, Mercedes-Benz Research and Development North America, Sunnyvale, CA, 94085, USA;

    Electrical and Computer Engineering Department, The University of Texas at El Paso, El Paso, TX, 79968, USA Autonomous Driving North America, Mercedes-Benz Research and Development North America, Sunnyvale, CA, 94085, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Automotive systems; Micro-Doppler signature; non-stationary; Time-Frequency analysis; FMCW Radar; Signal Processing techniques;

    机译:汽车系统;微多普勒签名;非平稳时频分析; FMCW雷达;信号处理技术;

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