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A Concurrent and Hierarchy Target Learning Architecture for Classification in SAR Application

机译:SAR应用中用于分类的并行层次目标学习体系

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摘要

This article discusses the issue of Automatic Target Recognition (ATR) on Synthetic Aperture Radar (SAR) images. Through learning the hierarchy of features automatically from a massive amount of training data, learning networks such as Convolutional Neural Networks (CNN) has recently achieved state-of-the-art results in many tasks. To extract better features about SAR targets, and to obtain better accuracies, a new framework is proposed: First, three CNN models based on different convolution and pooling kernel sizes are proposed. Second, they are applied simultaneously on the SAR images to generate image features via extracting CNN features from different layers in two scenarios. In the first scenario, the activation vectors obtained from fully connected layers are considered as the final image features; in the second scenario, dense features are extracted from the last convolutional layer and then encoded into global image features through one of the commonly used feature coding approaches, which is Fisher Vectors (FVs). Finally, different combination and fusion approaches between the two sets of experiments are considered to construct the final representation of the SAR images for final classification. Extensive experiments on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset are conducted. Experimental results prove the capability of the proposed method, as compared to several state-of-the-art methods.
机译:本文讨论了合成孔径雷达(SAR)图像上的自动目标识别(ATR)问题。通过从大量的训练数据中自动学习功能的层次结构,诸如卷积神经网络(CNN)之类的学习网络最近在许多任务中取得了最新的成果。为了提取有关SAR目标的更好特征并获得更好的精度,提出了一个新的框架:首先,提出了三种基于不同卷积和池核大小的CNN模型。其次,将它们同时应用于SAR图像,以在两种情况下通过从不同层提取CNN特征来生成图像特征。在第一种情况下,将从完全连接的图层获得的激活向量视为最终图像特征;在第二种情况下,从最后一个卷积层中提取密集特征,然后通过一种常用的特征编码方法,即Fisher向量(FV)将其编码为全局图像特征。最后,考虑两组实验之间的不同组合和融合方法来构造SAR图像的最终表示形式,以进行最终分类。在移动和固定目标获取和识别(MSTAR)数据集上进行了广泛的实验。与几种最新方法相比,实验结果证明了该方法的能力。

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