Aircraft Target Classification Based on CNN

Qingyuan Zhao, Xin Du, Yao-bing Lu
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引用次数: 1

Abstract

In this paper, we applied the idea of deep learning to aircraft targets recognition based on time-frequency diagram. Firstly we introduced application of Convolutional Neural Network (CNN), and the methods of radar target recognition. Secondly, Short Time Fourier Transformation (STFT) was introduced. Thirdly, the structure of improved LeNet CNN was described, considering the character of radar echo wave. Fourthly, 4 kinds of aircraft targets were introduced. Then, the algorithm based on CNN and STFT was validated based on measured data, and was compared with Support Vector Machine (SVM). The accuracy rate could reaches up to 99.98%, 25% higher than SVM. Finally, we summarized advantages of the method proposed in this paper and give the suggestion in engineering application.
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基于CNN的飞机目标分类
首先介绍了卷积神经网络(CNN)在雷达目标识别中的应用。其次,介绍了短时傅里叶变换(STFT)。第三,介绍了考虑雷达回波特性的改进LeNet CNN的结构。第四,介绍了4种飞机目标。然后基于实测数据对基于CNN和STFT的算法进行验证,并与支持向量机(SVM)进行比较。准确率可达99.98%,比SVM提高25%。最后,总结了本文方法的优点,并对工程应用提出了建议。
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