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Precession Period Extraction of Axisymmetric Space Target from RCS Sequence via Convolutional Neural Network

机译:通过卷积神经网络从RCS序列中提取轴对称空间目标的进动周期

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The precession period was used to identify space targets in radar target recognition, especially the axisymmetric ballistic missile warheads and the similar shaped decoys. There are many precession period extraction methods based on RCS sequence. However, these methods have many restrictions and often yield poor results under noise condition. Aiming at extracting the precession period from RCS sequence, this paper designed a one-dimensional convolutional neural network. The precession period extraction is converted to a signal parameter estimation problem where the RCS sequence is the input signal and the period is the expected parameter. The proposed method was trained and validated on simulated RCS sequences and compared with spectral method, including CAUTOC, CAMDF, CAUTOC/CAMDF and trigonometric fitting method. The results showed that the proposed method yielded more accurate estimation results. Moreover, it can tell that there is no valid period by yielding a value that is not in the range [2, N/2] where N is the length of the RCS sequence.
机译:进动期间被用来识别雷达目标识别中的空间目标,特别是轴对称弹道导弹弹头和类似形状的诱饵。基于RCS序列的进动周期提取方法很多。但是,这些方法有很多限制,并且在噪声条件下经常产生较差的结果。为了从RCS序列中提取进动周期,本文设计了一维卷积神经网络。进动周期提取被转换为信号参数估计问题,其中RCS序列是输入信号,周期是预期参数。在模拟的RCS序列上对该方法进行了训练和验证,并与包括CAUTOC,CAMDF,CAUTOC / CAMDF和三角拟合法在内的光谱方法进行了比较。结果表明,提出的方法产生了更准确的估计结果。此外,通过产生不在[2,N / 2]范围内的值(其中N是RCS序列的长度),可以判断出没有有效时段。

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