A Multi-scale Radar HRRP Target Recognition Method Based on Pyramid Depthwise Separable Convolution Network

Jiaxing He, Xiaodan Wang, Yafei Song, Qian Xiang
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引用次数: 0

Abstract

Radar high resolution range profile (HRRP) contains important structural features such as target size and scattering center distribution, which has attracted extensive attention in the field of radar target recognition. In order to solve the problem of feature extraction and recognition in HRRP target recognition, we propose an HRRP target recognition method based on one-dimensional Pyramid Depthwise Separable Convolutional (PyDSC) neural network. For the processed data, pyramid convolution is selected, and convolution kernels of different sizes are used on different input channels, which can better extract the features of different scales and improve the overall recognition ability. At the same time, Depthwise Separable Convolution (DSC) technology is applied to PyConv network, a standard convolution operation is divided into two steps: deep convolution and point convolution, which can reduce the network complexity, reduce the amount of parameters and improve the speed of HRRP target recognition. Finally, we verify the effectiveness of the proposed method through experiments. The experimental results show that: 1) compared with the other three convolutional neural networks, our proposed PyDSC can significantly improve the recognition accuracy with a small increase in overhead; 2) Compared with the original PyConv, PyDSC can effectively reduce the complexity of the model.
基于金字塔深度可分离卷积网络的多尺度雷达HRRP目标识别方法
雷达高分辨距离像包含目标尺寸和散射中心分布等重要结构特征,在雷达目标识别领域受到广泛关注。为了解决HRRP目标识别中的特征提取和识别问题,提出了一种基于一维金字塔深度可分离卷积(PyDSC)神经网络的HRRP目标识别方法。对于处理后的数据,选择金字塔卷积,在不同的输入通道上使用不同大小的卷积核,可以更好地提取不同尺度的特征,提高整体识别能力。同时,将深度可分卷积(DSC)技术应用于PyConv网络,将一个标准的卷积运算分为深度卷积和点卷积两步,可以降低网络的复杂度,减少参数的数量,提高HRRP目标识别的速度。最后,通过实验验证了所提方法的有效性。实验结果表明:1)与其他三种卷积神经网络相比,我们提出的PyDSC可以显著提高识别精度,开销增加很小;2)与原来的PyConv相比,PyDSC可以有效地降低模型的复杂性。
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