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Synthetic Aperture Radar Target Recognition with Feature Fusion Based on a Stacked Autoencoder

机译:基于堆叠自动编码器的特征融合合成孔径雷达目标识别

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Feature extraction is a crucial step for any automatic target recognition process, especially in the interpretation of synthetic aperture radar (SAR) imagery. In order to obtain distinctive features, this paper proposes a feature fusion algorithm for SAR target recognition based on a stacked autoencoder (SAE). The detailed procedure presented in this paper can be summarized as follows: firstly, 23 baseline features and Three-Patch Local Binary Pattern (TPLBP) features are extracted. These features can describe the global and local aspects of the image with less redundancy and more complementarity, providing richer information for feature fusion. Secondly, an effective feature fusion network is designed. Baseline and TPLBP features are cascaded and fed into a SAE. Then, with an unsupervised learning algorithm, the SAE is pre-trained by greedy layer-wise training method. Capable of feature expression, SAE makes the fused features more distinguishable. Finally, the model is fine-tuned by a softmax classifier and applied to the classification of targets. 10-class SAR targets based on Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset got a classification accuracy up to 95.43%, which verifies the effectiveness of the presented algorithm.
机译:特征提取是任何自动目标识别过程的关键步骤,尤其是在合成孔径雷达(SAR)图像的解释中。为了获得鲜明的特征,提出了一种基于堆叠自动编码器(SAE)的SAR目标识别特征融合算法。本文提出的详细过程可以概括如下:首先,提取23个基线特征和三补丁局部二进制模式(TPLBP)特征。这些特征可以描述图像的全局和局部方面,从而减少冗余,增强互补性,从而为特征融合提供更丰富的信息。其次,设计了有效的特征融合网络。基线和TPLBP功能被级联并输入到SAE中。然后,采用无监督学习算法,通过贪婪分层训练方法对SAE进行预训练。具有特征表达功能,SAE使融合的特征更具区别性。最后,通过softmax分类器对模型进行微调,并将其应用于目标分类。基于动静目标获取与识别(MSTAR)数据集的10类SAR目标的分类精度高达95.43%,验证了所提算法的有效性。

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