Shipborne Multi-Function Radar Working Mode Recognition Based on DP-ATCN

Remote. Sens. Pub Date : 2023-07-05 DOI:10.3390/rs15133415
Tian Tian, Qianrong Zhang, Zhizhong Zhang, Feng Niu, Xinyi Guo, Feng Zhou
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引用次数: 1

Abstract

There has been increased interest in recognizing the dynamic and flexible changes in shipborne multi-function radar (MFR) working modes. The working modes determine the distribution of pulse descriptor words (PDWs). However, building the mapping relationship from PDWs to working modes in reconnaissance systems presents many challenges, such as the duration of the working modes not being fixed, incomplete temporal features in short PDW slices, and delayed feedback of the reconnaissance information in long PDW slices. This paper recommends an MFR working mode recognition method based on the ShakeDrop regularization dual-path attention temporal convolutional network (DP-ATCN) with prolonged temporal feature preservation. The method uses a temporal feature extraction network with the Convolutional Block Attention Module (CBAM) and ShakeDrop regularization to acquire a high-dimensional space mapping of temporal features of the PDWs in a short time slice. Additionally, with prolonged PDW accumulation, an enhanced TCN is introduced to attain the temporal variation of long-term dependence. This way, secondary correction of MFR working mode recognition results is achieved with both promptness and accuracy. Experimental results and analysis confirm that, despite the presence of missing and spurious pulses, the recommended method performs effectively and consistently in shipborne MFR working mode recognition tasks.
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基于DP-ATCN的舰载多功能雷达工作模式识别
舰载多功能雷达(MFR)工作模式的动态和柔性变化已引起越来越多的关注。工作模式决定了脉冲描述词(pdw)的分布。然而,在侦察系统中建立PDW与工作模式的映射关系存在着工作模式持续时间不固定、PDW短片时间特征不完整、PDW长片侦察信息反馈滞后等问题。本文提出了一种基于长时间特征保存的ShakeDrop正则化双路径注意时间卷积网络(DP-ATCN)的MFR工作模式识别方法。该方法利用卷积块注意模块(CBAM)和ShakeDrop正则化相结合的时间特征提取网络,在短时间片内获得PDWs时间特征的高维空间映射。此外,随着PDW积累的延长,TCN的增强可以获得长期依赖的时间变化。这样可以实现对MFR工作模式识别结果的二次校正,既及时又准确。实验结果和分析证实,尽管存在缺失脉冲和伪脉冲,但所推荐的方法在舰载MFR工作模式识别任务中仍然有效且一致。
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