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Multi-dimensional Feature Fusion Modulation Classification System Based on Self-training Network

机译:基于自培训网络的多维特征融合调制分类系统

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To solve the problem that the single feature extraction method cannot fully express the radar signal at low SNR and the large-scale deep learning network cannot deal with small sample size of radar signal, this paper proposes a multi-dimensional feature fusion modulation classification system, which can classify radar signals including CW, BPSK, LFM, COSTAS, FRANK, T1, T2, T3 and T4. The machine could extract time-frequency feature of radar signal automatically through small self-training network. Combined with the idea of multi-dimensional feature fusion, the time-frequency entropy feature, the higher-order statistics feature and network self-extraction feature are normalized and fused by non-negative matrix factorization (NMF), which improves the classification performance of the proposed system at low SNR. The simulation results show that the recognition rate of the proposed system is 78% at - 3 dB. Compared with the traditional method, the recognition rate of proposed system has a significant improvement.
机译:为了解决单一特征提取方法不能完全表达低SNR的雷达信号的问题,大规模的深度学习网络无法处理雷达信号的小样本大小,本文提出了多维特征融合调制分类系统,这可以对包括CW,BPSK,LFM,COSTAS,Frank,T1,T2,T3和T4的雷达信号进行分类。通过小型自培网,机器可以自动提取雷达信号的时频特征。结合多维特征融合的思想,时频熵特征,高阶统计特征和网络自提取特征是由非负矩阵分解(NMF)的归一化和融合,从而提高了分类性能低SNR的提出系统。仿真结果表明,所提出的系统的识别率为78%,3 dB。与传统方法相比,所提出的系统的识别率具有显着的改善。

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