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Radar Signal Recognition Based on Transfer Learning and Feature Fusion

机译:基于传输学习和特征融合的雷达信号识别

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摘要

This study proposes a system for the automatic recognition of radar waveforms. This system mainly uses the obvious difference in Choi-Williams distribution (CWD) images of different modulated signals. We successfully convert problems related to radar signal recognition into problems related to image recognition. The classification system uses CWD time-frequency analysis of the detected radar signal to obtain its CWD image, which can be recognized by deep neural networks. To verify this method, a database containing 1800 images and 8 types of radar signal CWD images is established. Although a convolutional neural network exhibits strong expression, it is not suitable for training a small-scale database. To solve this inadequacy, an image classification algorithm based on transfer learning and design experiments is proposed. This algorithm is intended to fine-tune three different pre-training models. This study also integrates the texture features of the image with the depth features extracted using the depth neural network to compensate for the shortcomings of the depth features in expressing image information. The simulation results indicate that the method can still be used to effectively recognize radar signals at a low SNR.
机译:本研究提出了一种用于自动识别雷达波形的系统。该系统主要使用不同调制信号的Choi-Williams分布(CWD)图像的明显差异。我们成功地将与雷达信号识别有关的问题转换为与图像识别有关的问题。分类系统使用检测到的雷达信号的CWD时频分析,以获得其CWD图像,其可以通过深神经网络识别。为了验证这种方法,建立了包含1800张图像和8种雷达信号CWD图像的数据库。虽然卷积神经网络表现出强烈的表达,但它不适合训练小规模数据库。为了解决这种不足,提出了一种基于转移学习和设计实验的图像分类算法。该算法旨在微调三种不同的预训练模型。本研究还将图像的纹理特征与使用深度神经网络提取的深度特征集成,以补偿表达图像信息时深度特征的缺点。仿真结果表明该方法仍然可以用于有效地识别低SNR处的雷达信号。

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