期刊论文详细信息
Sensors
A Deep Learning-Based Satellite Target Recognition Method Using Radar Data
Wang Lu1  Yurong Huo1  Can Xu2  Caiyong Lin2  Yasheng Zhang2 
[1] Graduate School, Space Engineering University, Beijing 101416, China;Space Engineering University, Beijing 101416, China;
关键词: radar automatic target recognition (RATR);    high resolution range profile (HRRP);    deep learning;    radar data partition;    gated recurrent unit (GRU);   
DOI  :  10.3390/s19092008
来源: DOAJ
【 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.

【 授权许可】

Unknown   

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