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Radar emitter identification with bispectrum and hierarchical extreme learning machine

机译:利用双光谱和分层极限学习机识别雷达辐射源

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摘要

Radar Emitter Identification (REI) has been broadly used in military and civil fields. In this paper, a novel method is proposed for radar emitter signal identification, where the bispectrum estimation of radar signal is extracted and the recent hierarchical extreme learning machine (BS + H-ELM) is adopted for further feature learning and recognition. Conventional REI methods generally rely on the time-difference-of-arrival, carrier frequency, pulse width, pulse amplitude, direction-of-arrival, etc., for signal representation and recognition. However, the increasingly violent electronic confrontation and the emergence of new types of radar signals generally degrade the recognition performance. With this objective, we explore radar emitter signal representation and classification method with the high order spectrum and deep network based H-ELM. After extracting the bispectrum of radar signals, the sparse autoencoder (AE) in H-ELM is employed for feature learning. Simulations on four representative radar signals, namely, the continuous wave (CW), linear frequency modulation wave(LFM), nonlinear frequency modulation wave(NLFM) and binary phase shift keying wave (BPSK), are conducted for performance validation. In comparison to the existing multilayer ELM algorithm and the popular histogram of gradient (HOG) based feature extraction method are proved that the proposal is feasible and potentially applicable in real applications.
机译:雷达发射器识别(REI)已广泛用于军事和民用领域。本文提出了一种新的雷达发射器信号识别方法,该方法提取了雷达信号的双谱估计,并采用了最新的分层极限学习机(BS + H-ELM)进行特征学习和识别。常规的REI方法通常依靠到达时间差,载波频率,脉冲宽度,脉冲幅度,到达方向等来进行信号表示和识别。但是,日益激烈的电子对抗和新型雷达信号的出现通常会降低识别性能。为此,我们探索了基于高阶谱和基于深度网络的H-ELM的雷达辐射源信号表示和分类方法。提取雷达信号的双谱后,将H-ELM中的稀疏自动编码器(AE)用于特征学习。为了进行性能验证,对连续波(CW),线性调频波(LFM),非线性调频波(NLFM)和二进制相移键控波(BPSK)四个代表性雷达信号进行了仿真。与现有的多层ELM算法和基于流行的梯度直方图(HOG)的特征提取方法相比,该建议是可行的,并且有可能在实际应用中应用。

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