基于归一化时频图像和残差网络的舰船雷达小目标分类

Jing-Yi Li, P. Shui
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引用次数: 0

摘要

本文提出了一种小目标分类方法,可以有效区分不同海况和不同雷达下的不同类型海面目标。本文提出的分类方法主要基于归一化时频谱图和残差网络(ResNet)。雷达回波的时频图像反映了目标的运动特性、目标雷达截面(RCS)的波动以及目标与波的关系。通过对雷达回波的距离分辨率和载波频率进行标准化处理,可以消除不同雷达参数对目标分类的影响。利用ResNet,该方法可以有效地提取归一化时频图像的深度隐藏特征,解决深度网络中梯度消失、梯度爆炸和梯度退化问题。构建了浮球、浮艇、游艇和低空无人机四种目标的数据集,对该方法进行了性能测试。实验结果表明,与现有的分类方法相比,该分类器将归一化时频图像与ResNet相结合,获得了更好的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Marine Radar Small Target Classification Based on Normalized Time-Frequency Image and Residual Network
In this article, a small target classification method is proposed, which can effectively distinguish different types of sea surface targets under different sea states and different radars. The proposed classification method is mainly based on normalized time-frequency spectrograms and Residual Network (ResNet). The time-frequency images of the radar returns reflect the motion characteristics of the target, the fluctuation of the target Radar Cross Section (RCS) and the relationship between the target and the wave. The effect of different radar parameters on target classification can be eliminated by standardizing range resolution and carrier frequency of radar returns. By exploiting ResNet, the proposed method can effectively extract the deeply hidden features of normalized time-frequency images and solve the problems of gradient disappearance, gradient explosion and degradation in deep network. Datasets consisting of four types of targets, floating ball, floating boat, yacht and low altitude Unmanned Aerial Vehicle (UAV) are constructed to test the performance of the proposed method. The experiment results show that the proposed classifier combines normalized time-frequency images and ResNet attains better classification performance compared with the existing classification methods.
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