Micro-Doppler-Radar-Based UAV Detection Using Inception-Residual Neural Network

Hai-Nam Le, Van-Sang Doan, D. Le, Huu-Hung Nguyen, Thien Huynh-The, Khanh Le-Ha, Van‐Phuc Hoang
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引用次数: 4

Abstract

This paper demonstrates the performance evaluation of UAV detection based on micro-Doppler radar image data with the proposed inception-residual neural network (IRNN). Accordingly, the network is designed and analyzed by changing network hyper-parameters through experiment with the Real Doppler RAD-DAR (RDRD) dataset that is collected by the practical measurements. Numerical analysis results show that the proposed network with 16 filters yield a good trade-off between accuracy and time-consuming performances. Moreover, the network is taken into account for competing with three other networks. Due to inception-residual structure, the proposed network remarkably outperforms other ones.
基于微多普勒雷达的无人机检测
本文利用所提出的初始残差神经网络(IRNN)对基于微多普勒雷达图像数据的无人机检测性能进行了评价。基于此,利用实测收集的Real Doppler雷达雷达(RDRD)数据集,通过改变网络超参数的方法对网络进行设计和分析。数值分析结果表明,该网络具有16个滤波器,在精度和耗时性能之间取得了很好的平衡。此外,该网络还考虑了与其他三个网络的竞争。由于初始-残差结构,该网络的性能明显优于其他网络。
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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