Detection of MMW Radar Target Based on Doppler Characteristics and Deep Learning

Chen Wang, Z. X. Chen, Xin Chen, Xiaojie Tang, Futai Liang
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引用次数: 2

Abstract

In recent years, unmanned technology has been continuously developed. millimeter - wave (MMW)radar has been widely used in driverless vehicles because of its performance characteristics. Target detection is also one of the hot issues studied by experts and scholars in the field of driverless driving. According to the target detection problem of millimeter - wave radar, a deep learning - based target detection method is proposed. It uses 77G HZ on - board millimeter - wave radar Spectro graph data to mark the target existence area and form a standard data set through data preprocessing. An improved model of Doppler image detection of RetinaNet radar was subsequently proposed. The model uses ResNet101 as a feature extraction network, uses group normalization (GN) as a normalization method, improves the network accuracy and convergence speed, introduces the attention mechanism in the feature extraction network, and enhances the feature expression capability of the model. The improved RetinaNet model improves the average accuracy of radar Doppler image detection by 7.2 % and 91.5%, which provides ideas for the development of radar target detection and unmanned driving technology, and has engineering application value.
基于多普勒特性和深度学习的毫米波雷达目标检测
近年来,无人驾驶技术不断发展。毫米波雷达以其优异的性能在无人驾驶汽车中得到了广泛的应用。目标检测也是无人驾驶领域专家学者研究的热点问题之一。针对毫米波雷达的目标检测问题,提出了一种基于深度学习的目标检测方法。采用77G HZ机载毫米波雷达谱图数据标记目标存在区域,经过数据预处理形成标准数据集。提出了一种改进的retanet雷达多普勒图像检测模型。该模型采用ResNet101作为特征提取网络,采用组归一化(group normalization, GN)作为归一化方法,提高了网络的精度和收敛速度,在特征提取网络中引入了注意机制,增强了模型的特征表达能力。改进后的retanet模型将雷达多普勒图像检测的平均精度分别提高了7.2%和91.5%,为雷达目标检测和无人驾驶技术的发展提供了思路,具有工程应用价值。
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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