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首页> 外文期刊>Journal of Applied Remote Sensing >Deep feature extraction and combination for synthetic aperture radar target classification
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Deep feature extraction and combination for synthetic aperture radar target classification

机译:深色特征提取与合成孔径雷达目标分类的组合

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摘要

Feature extraction has always been a difficult problem in the classification performance of synthetic aperture radar automatic target recognition (SAR-ATR). It is very important to select discriminative features to train a classifier, which is a prerequisite. Inspired by the great success of convolutional neural network (CNN), we address the problem of SAR target classification by proposing a feature extraction method, which takes advantage of exploiting the extracted deep features from CNNs on SAR images to introduce more powerful discriminative features and robust representation ability for them. First, the pretrained VGG-S net is fine-tuned on moving and stationary target acquisition and recognition (MSTAR) public release database. Second, after a simple preprocessing is performed, the fine-tuned network is used as a fixed feature extractor to extract deep features from the processed SAR images. Third, the extracted deep features are fused by using a traditional concatenation and a discriminant correlation analysis algorithm. Finally, for target classification, K-nearest neighbors algorithm based on LogDet divergence-based metric learning triplet constraints is adopted as a baseline classifier. Experiments on MSTAR are conducted, and the classification accuracy results demonstrate that the proposed method outperforms the state-of-the-art methods.
机译:特征提取始终是合成孔径雷达自动目标识别(SAR-ATR)的分类性能中的难题。选择要培训分类器的歧视功能非常重要,这是一个先决条件。受到卷积神经网络(CNN)的巨大成功的启发,我们通过提出一种特征提取方法来解决SAR目标分类的问题,这利用了从SAR图像上的CNNS中提取的深度特征来引入更强大的鉴别特征和强大他们的表现能力。首先,预先训练的VGG-S网对移动和静止目标采集和识别(MSTAR)公开发布数据库进行微调。其次,在执行简单的预处理之后,微调网络用作固定特征提取器,以从处理的SAR图像中提取深度特征。第三,通过使用传统的级联和判别相关分析算法来融合提取的深度特征。最后,对于目标分类,基于基于LOGDET发散的度量学习三重态约束的K-最近邻居算法被用作基线分类器。进行了MSTAR的实验,分类准确性结果表明,所提出的方法优于最先进的方法。

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