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Multi-view classification with semi-supervised learning for SAR target recognition

机译:SAR目标识别半监督学习多视图分类

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摘要

A large number of labeled samples are required for convolutional neural network (CNN) to train a deep network model with satisfactory generalization ability. However, it is fairly expensive to obtain sufficient labeled samples in most synthetic aperture radar (SAR) applications. To deal with the problem, in this paper, we propose a novel multi-view classification method with semi-supervised learning for SAR target recognition, which mainly contains a CNN model with the label propagation ability (CNN-LP) and a new expectation maximization (EM) based multi-view fusion strategy. In the training phase, an initial CNN model is trained with limited labeled samples, which is further used to assign pseudo labels for unla-beled samples by the label propagation. Then we can obtain a robust CNN-LP model by alternately updating the model and propagating labels. In the testing phase, the CNN-LP model is used to generate the classification probabilities. To further alleviate the sensitivity of the model towards large depression angle variations, we construct a multi-view label set (MLS) by selecting possible labels adaptively according to the predicted probabilities. Finally, a new EM-based strategy is designed to give the predicted labels. Unlike most of existing multi-view methods which have strict constraints on the angle interval among multiple views, the proposed strategy is free from the aspect interval limitation. Experiments conducted on different datasets all demonstrate the robustness and effectiveness of the proposed method for SAR target recognition.
机译:卷积神经网络(CNN)需要大量标记的样品,以训练具有令人满意的泛化能力的深网络模型。然而,在大多数合成孔径雷达(SAR)应用中获得足够的标记样品是相当昂贵的。为了解决问题,在本文中,我们提出了一种新的多视图分类方法,具有SAR目标识别的半监督学习,主要包含标签传播能力(CNN-LP)和新期望最大化的CNN模型。 (EM)基于多视图融合策略。在训练阶段,初始CNN模型培训,具有有限标记的样本,其进一步用于通过标签传播分配用于UNLABED样本的伪标签。然后,我们可以通过交替更新模型和传播标签来获得强大的CNN-LP模型。在测试阶段,CNN-LP模型用于生成分类概率。为了进一步减轻模型朝向大凹陷角变化的灵敏度,我们通过根据预测概率自适应地选择可能的标签来构造多视图标签集(MLS)。最后,旨在提供新的基于EM的策略来提供预测的标签。与大多数现有的多视图方法不同,这对多个视图之间的角度间隔具有严格的约束,所提出的策略是不受方面的间隔限制。在不同的数据集上进行的实验均证明了SAR目标识别的提出方法的稳健性和有效性。

著录项

  • 来源
    《Signal processing 》 |2021年第6期| 108030.1-108030.12| 共12页
  • 作者单位

    School of Information and Communication Engineering University of Electronic Science and Technology of China (UESTC) Chengdu 611731 China;

    School of Information and Communication Engineering University of Electronic Science and Technology of China (UESTC) Chengdu 611731 China;

    School of Information and Communication Engineering University of Electronic Science and Technology of China (UESTC) Chengdu 611731 China;

    School of Information and Communication Engineering University of Electronic Science and Technology of China (UESTC) Chengdu 611731 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Semi-supervised learning; Multiple views; Label propagation; Expectation maximization; Convolutional neural networks; Synthetic aperture radar;

    机译:半监督学习;多种观点;标签传播;期望最大化;卷积神经网络;合成孔径雷达;

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