A Multi-Target Detection Method Based on Improved U-Net for UWB MIMO Through-Wall Radar

Remote. Sens. Pub Date : 2023-07-06 DOI:10.3390/rs15133434
Jun Pan, Zhijie Zheng, Di Zhao, Kunyu Yan, Jinliang Nie, Bin Zhou, Guangyou Fang
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Abstract

Ultra-wideband (UWB) multiple-input multiple-output (MIMO) through-wall radar is widely used in through-wall human target detection for its good penetration characteristics and resolution. However, in actual detection scenarios, weak target masking and adjacent target unresolving will occur in through-wall imaging due to factors such as resolution limitations and differences in human reflectance, which will reduce the probability of target detection. An improved U-Net model is proposed in this paper to improve the detection probability of through-wall targets. In the proposed detection method, a ResNet module and a squeeze-and-excitation (SE) module are integrated in the traditional U-Net model. The ResNet module can reduce the difficulty of feature learning and improve the accuracy of detection. The SE module allows the network to perform feature recalibration and learn to use global information to emphasize useful features selectively and suppress less useful features. The effectiveness of the proposed method is verified via simulations and experiments. Compared with the order statistics constant false alarm rate (OS-CFAR), the fully convolutional networks (FCN) and the traditional U-Net, the proposed method can detect through-wall weak targets and adjacent unresolving targets effectively. The detection precision of the through-wall target is improved, and the missed detection rate is minimized.
基于改进U-Net的超宽带MIMO穿壁雷达多目标检测方法
超宽带(UWB)多输入多输出(MIMO)穿壁雷达以其良好的突防特性和分辨率被广泛应用于穿壁人体目标探测。但在实际检测场景中,由于分辨率限制和人体反射率差异等因素,穿壁成像会出现弱目标掩蔽和相邻目标不分辨的情况,降低了目标检测的概率。本文提出了一种改进的U-Net模型,以提高穿透壁目标的检测概率。在该检测方法中,在传统的U-Net模型中集成了一个ResNet模块和一个挤压激励(SE)模块。ResNet模块可以降低特征学习的难度,提高检测的准确率。SE模块允许网络进行特征重新校准,并学习使用全局信息选择性地强调有用的特征,抑制不太有用的特征。仿真和实验验证了该方法的有效性。与阶统计常数虚警率(OS-CFAR)、全卷积网络(FCN)和传统的U-Net相比,该方法可以有效地检测出穿壁弱目标和相邻的不可分辨目标。提高了穿壁目标的检测精度,最大限度地降低了漏检率。
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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