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SAR image classification based on CNN in real and simulation datasets

机译:基于CNN的SAR图像分类在Real和仿真数据集中的CNN

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Convolution neural network (CNN) has made great success in image classification tasks. Even in the field of synthetic aperture radar automatic target recognition (SAR-ATR), state-of-art results has been obtained by learning deep representation of features on the MSTAR benchmark. However, the raw data of MSTAR have shortcomings in training a SAR-ATR model because of high similarity in background among the SAR images of each kind. This indicates that the CNN would learn the hierarchies of features of backgrounds as well as the targets. To validate the influence of the background, some other SAR images datasets have been made which contains the simulation SAR images of 10 manufactured targets such as tank and fighter aircraft, and the backgrounds of simulation SAR images are sampled from the whole original MSTAR data. The simulation datasets contain the dataset that the backgrounds of each kind images correspond to the one kind of backgrounds of MSTAR targets or clutters and the dataset that each image shares the random background of whole MSTAR targets or clutters. In addition, mixed datasets of MSTAR and simulation datasets had been made to use in the experiments. The CNN architecture proposed in this paper are trained on all datasets mentioned above. The experimental results shows that the architecture can get high performances on all datasets even the backgrounds of the images are miscellaneous, which indicates the architecture can learn a good representation of the targets even though the drastic changes on background.
机译:卷积神经网络(CNN)在图像分类任务中取得了巨大成功。即使在合成孔径雷达自动目标识别(SAR-ATR)领域,也通过学习MSTAR基准测试的深入表达来获得最先进的结果。然而,MSTAR的原始数据具有培训SAR-ATR模型的缺点,因为每个类型的SAR图像中的背景中的背景相似。这表明CNN将学习背景的特征层次以及目标。为了验证背景的影响,已经制定了一些其他SAR图像数据集,其包含10个制造的目标的模拟SAR图像,例如罐和战斗机,以及模拟SAR图像的背景从整个原始MSTAR数据采样。仿真数据集包含数据集,该数据集是每个种类图像的背景对应于MSTAR目标或Clutters的一种背景和数据集,每个图像共享全部MSTAR目标或Clutters的随机背景。此外,已经在实验中使用了MSTAR和仿真数据集的混合数据集。本文提出的CNN架构培训在上述所有数据集上。实验结果表明,即使图像的背景是杂项,架构也可以在所有数据集上获得高性能,这表明架构可以学习目标的良好表示,即使背景上的急剧变化也是如此。

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