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Adaptive time-frequency Kernel Local Fisher Discriminant Analysis to distinguish range deception jamming

机译:自适应时频内核局部Fisher判别分析以区分距离欺骗

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A deception jamming recognition method is proposed based on Adaptive Kernel Local Fisher Discriminant Analysis. The digital radio frequency memory (DRFM) in jammer creates multiple repeat false targets, are commonly utilized in practical applications for limitation of defense radar tracking and discrimination unit. So as to face with decision scheme groups of discriminating among targets and RGPO signals, an analytic form of the embedding transformation and the solution is resorted which can be simply calculated by solving a generalized eigenvalue problem. The practical utility and scalability of the LFDA algorithm can diminish non-linear dimensionality states by applying the kernel trick. The experimental consequences demonstrate that the probability of recognition accuracy performance of the proposed KLFDA in RGPO deception jamming algorithm is greater than 90% when SNR is higher than 4dB.
机译:提出了一种基于自适应核局部Fisher判别分析的欺骗干扰识别方法。干扰器中的数字射频存储器(DRFM)会创建多个重复的错误目标,在实际应用中通常用于限制防御雷达跟踪和识别单元。为了面对区分目标和RGPO信号的决策方案组,提出了一种嵌入变换和解的解析形式,可以通过解决广义特征值问题来简单地进行计算。 LFDA算法的实用性和可扩展性可以通过应用内核技巧来减少非线性维数状态。实验结果表明,当SNR高于4dB时,所提出的KLFDA在RGPO欺骗干扰算法中的识别准确度性能的可能性大于90%。

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