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Dense-connected global covariance network with edge sample constraint for SAR image classification

机译:具有边缘样本约束的密集连接的全局协方差网络SAR图像分类

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摘要

Recently, convolutional neural networks (CNNs) have been widely used for synthetic aperture radar (SAR) image classification because of their powerful feature extraction ability and high performance. However, extracting discriminative features with limited training samples is still a challenge. Moreover, some samples may be image edge samples, which often contain multiple image categories, thus deteriorate classification accuracy. To address these issues, we propose a novel classification framework, named dense-connected global covariance network (DGCNet) with edge sample constraint (ESC). First, a dense-connected sub-network was designed, which can connect different convolutional layers of conventional CNN to strengthen feature propagation, encourage feature reuse, and alleviate gradient vanishing problem. Then, a global covariance pooling layer was introduced to fully exploit the second-order information of deep features and reduce the number of training parameters. Finally, an ESC strategy was integrated into DGCNet to further improve the classification performance by assigning a smaller weight to edge samples than non-edge samples during the training process. Experimental results on two datasets demonstrated that the proposed method achieves better classification results than several popular classification methods with limited training samples.
机译:最近,由于其强大的特征提取能力和高性能,卷积神经网络(CNNS)已被广泛用于合成孔径雷达(SAR)图像分类。然而,用有限的训练样本提取歧视特征仍然是一个挑战。此外,一些样本可以是图像边缘样本,其通常包含多个图像类别,从而恶化分类精度。为了解决这些问题,我们提出了一个小型分类框架,名为密集连接的全局协方差网络(DGCNet),具有边缘样本约束(ESC)。首先,设计了密集的子网,可以连接传统CNN的不同卷积层以加强特征传播,鼓励特征重用,并减轻梯度消失问题。然后,引入了全局协方差汇总层以充分利用深度特征的二阶信息并减少训练参数的数量。最后,将ESC策略集成到DGCNET中,以进一步提高分类性能,通过在训练过程中为非边缘样本分配较小的重量来提高分类性能。两个数据集上的实验结果表明,该方法的分类结果比具有有限训练样本的几个流行的分类方法实现了更好的分类结果。

著录项

  • 来源
    《Remote sensing letters》 |2021年第6期|553-562|共10页
  • 作者单位

    Hefei Univ Technol Sch Comp & Informat Hefei Anhui Peoples R China|Anhui Prov Key Lab Ind Safety & Emergency Technol Hefei Anhui Peoples R China;

    Anhui Prov Key Lab Ind Safety & Emergency Technol Hefei Anhui Peoples R China|Hefei Univ Technol Sch Software Hefei Anhui Peoples R China;

    Anhui Prov Key Lab Ind Safety & Emergency Technol Hefei Anhui Peoples R China|Huangshan Univ Sch Informat Engn Huangshan Anhui Peoples R China;

    Hefei Univ Technol Sch Comp & Informat Hefei Anhui Peoples R China|Anhui Prov Key Lab Ind Safety & Emergency Technol Hefei Anhui Peoples R China;

    Hefei Univ Technol Sch Comp & Informat Hefei Anhui Peoples R China|Anhui Prov Key Lab Ind Safety & Emergency Technol Hefei Anhui Peoples R China;

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  • 正文语种 eng
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