The inevitable feature deviation of synthetic aperture radar (SAR) image due to the special imaging principle (depression angle variation) leads to poor recognition accuracy, especially in few-shot learning (FSL). To deal with this problem, we propose a dense graph prototype network (DGP-Net) to eliminate the feature deviation by learning potential features, and classify by learning feature distribution. The role of the prototype in this model is to solve the problem of large distance between congeneric samples taken due to the contingency of single sampling in FSL, and enhance the robustness of the model. Experimental results on the MSTAR dataset show that the DGP-Net has good classification results for SAR images with different depression angles and the recognition accuracy of it is higher than typical FSL methods.
翻译:合成孔径雷达(SAR)图像因特殊成像原理(抑郁角变异)而不可避免地出现特征偏差,导致识别准确性差,特别是在一些短片学习(FSL)中。为了解决这一问题,我们提议建立一个密度图形原型网络(DGP-Net),通过学习潜在特征消除特征偏差,并通过学习特征分布进行分类。这一模型的原型的作用是解决由于FSL中单一取样的意外情况而采集的同源样品之间的距离大问题,并加强模型的稳健性。MSTAR数据集的实验结果表明,DGP-Net对具有不同压抑角度的合成孔径雷达图像具有良好的分类结果,其识别准确性高于典型FSL方法。