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A Deep Learning-Based Satellite Target Recognition Method Using Radar Data

机译:基于深度学习的雷达数据卫星目标识别方法

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摘要

A novel satellite target recognition method based on radar data partition and deep learning techniques is proposed in this paper. For the radar satellite recognition task, orbital altitude is introduced as a distinct and accessible feature to divide radar data. On this basis, we design a new distance metric for HRRPs called normalized angular distance divided by correlation coefficient (NADDCC), and a hierarchical clustering method based on this distance metric is applied to segment the radar observation angular domain. Using the above technology, the radar data partition is completed and multiple HRRP data clusters are obtained. To further mine the essential features in HRRPs, a GRU-SVM model is designed and firstly applied for radar HRRP target recognition. It consists of a multi-layer GRU neural network as a deep feature extractor and linear SVM as a classifier. By training, GRU neural network successfully extracts effective and highly distinguishable features of HRRPs, and feature visualization technology shows its advantages. Furthermore, the performance testing and comparison experiments also demonstrate that GRU neural network possesses better comprehensive performance for HRRP target recognition than LSTM neural network and conventional RNN, and the recognition performance of our method is almost better than that of other several common feature extraction methods or no data partition.
机译:提出了一种基于雷达数据划分和深度学习技术的卫星目标识别新方法。对于雷达卫星识别任务,引入轨道高度作为划分雷达数据的独特且可访问的功能。在此基础上,我们设计了一种新的HRRP距离度量标准,称为归一化角距离除以相关系数(NADDCC),并基于该距离度量的分层聚类方法对雷达观测角域进行了分割。利用以上技术,完成了雷达数据划分,并获得了多个HRRP数据簇。为了进一步挖掘HRRPs的基本特征,设计了GRU-SVM模型并将其首先用于雷达HRRP目标识别。它由作为深度特征提取器的多层GRU神经网络和作为分类器的线性SVM组成。通过训练,GRU神经网络成功地提取了HRRP的有效且高度可区分的特征,并且特征可视化技术显示了其优势。此外,性能测试和比较实验还表明,GRU神经网络在HRRP目标识别方面具有比LSTM神经网络和传统RNN更好的综合性能,并且我们的方法的识别性能几乎优于其他几种常见特征提取方法或没有数据分区。

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