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High-Resolution Radar Target Recognition via Inception-Based VGG (IVGG) Networks

机译:基于初始空间的VGG(IVGG)网络的高分辨率雷达目标识别

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摘要

Aiming at high-resolution radar target recognition, new convolutional neural networks, namely, Inception-based VGG (IVGG) networks, are proposed to classify and recognize different targets in high range resolution profile (HRRP) and synthetic aperture radar (SAR) signals. The IVGG networks have been improved in two aspects. One is to adjust the connection mode of the full connection layer. The other is to introduce the Inception module into the visual geometry group (VGG) network to make the network structure more suik / for radar target recognition. After the Inception module, we also add a point convolutional layer to strengthen the nonlinearity of the network. Compared with the VGG network, IVGG networks are simpler and have fewer parameters. The experiments are compared with GoogLeNet, ResNet18, DenseNet121, and VGG on 4 datasets. The experimental results show that the IVGG networks have better accuracies than the existing convolutional neural networks.
机译:针对高分辨率雷达目标识别,该文提出一种新的卷积神经网络,即基于初始空间的VGG(IVGG)网络,用于对高距离分辨率剖面(HRRP)和合成孔径雷达(SAR)信号中的不同目标进行分类和识别。IVGG网络在两个方面得到了改进。一是调整全连接层的连接方式。另一种是将Inception模块引入视觉几何群(VGG)网络,使网络结构更简洁/用于雷达目标识别。在 Inception 模块之后,我们还增加了一个点卷积层来加强网络的非线性。与VGG网络相比,IVGG网络更简单,参数更少。在4个数据集上与GoogLeNet、ResNet18、DenseNet121和VGG进行了实验比较。实验结果表明,IVGG网络比现有的卷积神经网络具有更好的精度。

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