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A performance analysis of convolutional neural network models in SAR target recognition

机译:SAR目标识别卷积神经网络模型的性能分析

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In recent years, the deep learning method represented by Convolutional Neural Network (CNN) has made great progress in the field of image recognition. In this paper, the representative convolution neural network models such as AlexNet, VGGNet, GoogLeNet, ResNet, DenseNet, SENet and so on are applied to SAR image target recognition. According to the accuracy, parameter quantity, training time and other indicators, the performance of different CNN models are analyzed and compared on MSTAR data set, the superiority of CNN model in SAR image target recognition is verified, and it also provides a reference for the follow-up work in this field.
机译:近年来,卷积神经网络(CNN)表示的深度学习方法在图像识别领域取得了很大进展。在本文中,代表卷积神经网络模型,如AlexNet,VGGNet,Googlenet,Reset,DenSenet,Senet等应用于SAR图像目标识别。根据准确性,参数数量,培训时间和其他指示器,分析了不同CNN模型的性能并在MSTAR数据集中进行了比较,验证了SAR图像目标识别中的CNN模型的优势,并且还为此提供了参考这一领域的后续工作。

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