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Robust Radar Emitter Recognition Based on the Three-Dimensional Distribution Feature and Transfer Learning

机译:基于三维分布特征和传递学习的鲁棒雷达辐射源识别

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摘要

Due to the increasing complexity of electromagnetic signals, there exists a significant challenge for radar emitter signal recognition. To address this challenge, multi-component radar emitter recognition under a complicated noise environment is studied in this paper. A novel radar emitter recognition approach based on the three-dimensional distribution feature and transfer learning is proposed. The cubic feature for the time-frequency-energy distribution is proposed to describe the intra-pulse modulation information of radar emitters. Furthermore, the feature is reconstructed by using transfer learning in order to obtain the robust feature against signal noise rate (SNR) variation. Last, but not the least, the relevance vector machine is used to classify radar emitter signals. Simulations demonstrate that the approach proposed in this paper has better performances in accuracy and robustness than existing approaches.
机译:由于电磁信号的复杂性不断提高,因此对雷达发射器信号的识别存在重大挑战。为了应对这一挑战,本文研究了复杂噪声环境下的多分量雷达辐射源识别。提出了一种基于三维分布特征和传递学习的雷达辐射源识别新方法。提出了时频能量分布的三次方特征,以描述雷达辐射源的脉冲内调制信息。此外,通过使用转移学习来重构特征,以获得针对信号噪声率(SNR)变化的鲁棒特征。最后但并非最不重要的是,相关性矢量机用于对雷达发射器信号进行分类。仿真表明,本文提出的方法在准确性和鲁棒性方面比现有方法具有更好的性能。

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