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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Drone Classification Using Convolutional Neural Networks With Merged Doppler Images
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Drone Classification Using Convolutional Neural Networks With Merged Doppler Images

机译:使用卷积神经网络合并多普勒图像的无人机分类

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摘要

We propose a drone classification method based on convolutional neural network (CNN) and micro-Doppler signature (MDS). The MDS only presents Doppler information in time domain. The frequency domain representation of MDS is called as cadence-velocity diagram (CVD). To analyze the Doppler information of drone in time and frequency domain, we propose a new image by merging MDS and CVD, as merged Doppler image. GoogLeNet, a CNN structure, is utilized for the proposed image data set because of its high performance and optimized computing resources. The image data set is generated by the returned Ku-band frequency modulation continuous wave radar signal. Proposed approach is tested and verified in two different environments, anechoic chamber and outdoor. First, we tested our approach with different numbers of operating motor and aspect angle of a drone. The proposed method improved the accuracy from 89.3% to 94.7%. Second, two types of drone at the 50 and 100 m height are classified and showed 100% accuracy due to distinct difference in the result images.
机译:我们提出了一种基于卷积神经网络(CNN)和微多普勒签名(MDS)的无人机分类方法。 MDS仅在时域中显示多普勒信息。 MDS的频域表示形式称为节奏速度图(CVD)。为了在时域和频域上分析无人机的多普勒信息,我们提出了通过合并MDS和CVD的新图像作为合并的多普勒图像。 GoogLeNet是一种CNN结构,由于其高性能和优化的计算资源而被用于所提出的图像数据集。图像数据集由返回的Ku波段调频连续波雷达信号生成。在消声室和室外两种不同环境中对所提出的方法进行了测试和验证。首先,我们用不同数量的操作马达和无人机的长宽比测试了我们的方法。所提出的方法将准确性从89.3%提高到了94.7%。其次,对两种类型的无人机进行了分类,分别在高度为50和100 m时,由于结果图像存在明显差异,因此显示出100%的准确性。

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