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Rejection of road clutter using mean-variance method with OS-CFAR for automotive applications

机译:使用OS-CFAR的均值方差方法抑制道路杂波,用于汽车应用

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In order to improve the accuracy of target detection, two main conditions are required. One is the high signal to interference ratio (SIR) and the other is the signal processing that classifies signals into echo from targets and clutters accurately. Constant false alarm rate (CFAR) is the step to classify them by adaptive threshold value. However, there are limitations because of the unexpected power of clutter signals which cause a target missing and a false alarm. In this paper, we propose additional simple step after order statistic-CFAR (OS-CFAR) to reduce the false alarm. It can be analyzed by the mean-variance of the neighboring cells of the target declared. There are two major assumptions. First, clutters spread its power wider than targets' power. Next, reflected power from targets is larger than from clutters. These assumptions are supported by real data sets obtained with 24GHz near-range radar designed for frontal collision mitigation. Experimental result shows that false alarms are reduced by new scheme.
机译:为了提高目标检测的准确性,需要两个主要条件。一种是高信噪比(SIR),另一种是信号处理,可将信号准确分类为来自目标和杂波的回波。恒定误报率(CFAR)是根据自适应阈值对它们进行分类的步骤。但是,由于杂波信号的意外功率会导致目标丢失和错误警报,因此存在局限性。在本文中,我们提出了一个额外的简单步骤,即阶次统计CFAR(OS-CFAR),以减少误报。可以通过声明的目标的相邻单元格的均值方差进行分析。有两个主要假设。首先,混乱使它的力量散布得比目标的力量大。其次,来自目标的反射功率大于来自杂波的反射功率。这些假设得到了为缓解正面碰撞而设计的24GHz近距离雷达获得的真实数据集的支持。实验结果表明,新方案减少了误报。

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