A Robust Complex-Valued Deep Neural Network for Target Recognition of UAV SAR Imagery

Cheng Fang;Yumeng Song;Fangheng Guan;Feifei Liang;Lei Yang
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引用次数: 1

Abstract

Unmanned aerial vehicle (UAV) synthetic aperture radar (SAR) plays an important role in modern remote sensing for its characteristics of all weather, all day-and-night, zero casualty, flying flexibility, and low cost. However, the atmospheric turbulence will cause motion errors to UAV SAR, resulting in unmodeled phase errors. The phase errors will degrade the focusing quality of the image and bring difficulties to the recognition task. Meanwhile, it is difficult for a convolution neural network (CNN) to extract and utilize the back-scattering information for target recognition. To this end, a novel defocusing adaptive complex CNN (DA-CCNN) is proposed, which can realize the overall computation of the network in the complex-valued data domain and effectively extract the phase history information of the complex-valued data. Furthermore, it is the first time that the image entropy metric is introduced into the fully complex deep neural network to improve the focusing quality of the image and the interpretability of the network. The experiment is carried out using the benchmark dataset of MSTAR 10. In order to simulate the defocused images generated by UAV SAR and certify the robustness to phase errors, datasets with the contamination are also applied. The results show that on the benchmark data, the recognition accuracy of DA-CCNN is comparable to that of the existing methods. On the data with phase errors, DA-CCNN shows stronger robustness and higher accuracy in terms of recognition than the reported networks.
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基于鲁棒复值深度神经网络的无人机SAR图像目标识别
无人机合成孔径雷达(SAR)具有全天候、全天候、零伤亡、飞行灵活、成本低等特点,在现代遥感中发挥着重要作用。然而,大气湍流会对无人机SAR产生运动误差,导致未建模的相位误差。相位误差会降低图像的聚焦质量,给识别任务带来困难。同时,卷积神经网络(CNN)很难提取和利用背散射信息进行目标识别。为此,提出了一种新的散焦自适应复CNN(DA-CCNN),它可以实现网络在复值数据域的整体计算,并有效地提取复值数据的相位历史信息。此外,首次将图像熵度量引入完全复杂的深度神经网络,以提高图像的聚焦质量和网络的可解释性。实验使用MSTAR10的基准数据集进行。为了模拟无人机SAR产生的散焦图像并证明其对相位误差的鲁棒性,还应用了带有污染的数据集。结果表明,在基准数据上,DA-CCNN的识别精度与现有方法相当。在具有相位误差的数据上,DA-CCNN在识别方面表现出比所报道的网络更强的鲁棒性和更高的准确性。
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2024 Index IEEE Journal on Miniaturization for Air and Space Systems Vol. 5 Table of Contents Front Cover The Journal of Miniaturized Air and Space Systems Broadband Miniaturized Antenna Based on Enhanced Magnetic Field Convergence in UAV
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