Automotive synthetic aperture radar (SAR) can achieve a significant angular resolution enhancement for detecting static objects, which is essential for automated driving. Obtaining high resolution SAR images requires precise ego vehicle velocity estimation. A small velocity estimation error can result in a focused SAR image with objects at offset angles. In this paper, we consider an automotive SAR system that produces SAR images of static objects based on ego vehicle velocity estimation from the radar return signal without the overhead in complexity and cost of using an auxiliary global navigation satellite system (GNSS) and inertial measurement unit (IMU). We derive a novel analytical approximation for the automotive SAR angle estimation error variance when the velocity is estimated by the radar. The developed analytical analysis closely predicts the true SAR angle estimation variance, and also provides insights on the effects of the radar parameters and the environment condition on the automotive SAR angle estimation error. We evaluate via the analytical analysis and simulation tests the radar settings and environment condition in which the automotive SAR attains a significant performance gain over the angular resolution of the short aperture physical antenna array. We show that, perhaps surprisingly, when the velocity is estimated by the radar the performance advantage of automotive SAR is realized only in limited conditions. Hence since its implementation comes with an increase in computation and system complexity as well as an increase in the detection delay it should be used carefully and selectively.
翻译:汽车合成孔径雷达(SAR)可实现一个显著的角分辨率增强,用于探测静态物体,这是自动驾驶所必需的。获得高分辨率合成孔径雷达图像需要精确的自我车速估计。一个小速度估计错误可能导致以偏角为对象的焦点合成孔径雷达图像。在本文中,我们考虑一个汽车合成孔径雷达系统系统,该系统根据自我车辆速度估计,用雷达返回信号生成静态物体的合成孔径雷达图像,而无需使用辅助全球导航卫星系统(GNSS)和惯性测量单位的间接费用,在复杂性和费用方面不增加。我们为汽车合成孔径雷达角度估计误差得出新的分析近似值,而雷达角度估计误差的速度由雷达估计时,需要精确地预测真实的合成孔径雷达角度估计差异,并提供关于雷达参数和环境条件对汽车合成孔径雷达角度估计错误的影响和环境条件的深入了解。我们通过分析与模拟测试雷达设置和环境条件,在使用短孔径物理天线阵阵阵阵阵阵阵阵阵后取得显著的性效果。我们可能感到,当雷达对速度进行精确测测测测测算后,其速度的优势才得以实现。