APPLIED GEOPHYSICS
 
        首页  |  版权声明  |  期刊介绍  |  编 委 会  |  收录情况  |  期刊订阅  |  下载中心  |  联系我们  |  English
应用地球物理  2025, Vol. 22 Issue (4): 944-956    DOI: 10.1007/s11770-025-1209-9
论文 最新目录 | 下期目录 | 过刊浏览 | 高级检索 Previous Articles  |  Next Articles  
基于域自适应与深度特征聚类伪标签去噪的异源SAR图像分类方法
罗晟杰,刘志刚,李夕海,王艺婷,曾小牛,郑志昊,黎恒
1. 火箭军工程大学,陕西西安 710025
Domain Adaptation with Deep Feature Clustering for Pseudo-Label Denoising in Heterogeneous SAR Image Classification
Luo Sheng-Jie, Liu Zhi-Gang*, Li Xi-Hai, Wang Yi-Ting, Zeng Xiao-Niu, Zheng Zhi-Hao, and Li Heng
1. Rocket Force University of Engineering, Xi’an 710025, China
 全文: PDF (0 KB)   HTML ( KB)   输出: BibTeX | EndNote (RIS)      背景资料
摘要 近年来,在合成孔径雷达自动目标识别 (SyntheticA pertureRadarAutomaticTargetRecognition,SAR-ATR) 领域,仿真数据训练-测量数据测试的异源SAR 图像分类任务受到了越来越多的关注。尽管当前主流的域自适应方法在解决域偏移问题上取了较大的突破,但算法的模型复杂度和任务复杂度上不断提升,使得模型部署与应用场景受限。针对这一问题,本文提出了一种基于线性核最大均值差异 (MaximumMeanDiscrepancy,MMD) 的域自适应框架,并融合了一种基于深度特征聚类的近零成本 (Near-zero cost) 伪标签去噪技术。我们的方法完全摒弃了数据增强和手工特征设计,端到端地实现了伪标签自训练。在SAMPLE数据集的三个典型场景下均取得了有竞争力的表现,并场景III中获得了 98.65%的最高精度。相关代码可访问:https://github.com/ TheGreatTreatsby/SAMPLE_MMD获取。
服务
把本文推荐给朋友
加入我的书架
加入引用管理器
E-mail Alert
RSS
作者相关文章
关键词SAR-ATR    域自适应   无监督学习   深度特征   SAMPLE     
Abstract: In recent years, the heterogeneous SAR image classification task of "training on simulated data and testing on measured data" has garnered increasing attention in the field of Synthetic Aperture Radar Automatic Target Recognition (SAR-ATR). Although current mainstream domain adaptation methods have made significant breakthroughs in addressing domain shift problems, the escalating model complexity and task complexity have constrained their deployment in real-world applications. To tackle this challenge, this paper proposes a domain adaptation framework based on linear-kernel Maximum Mean Discrepancy (MMD),integrated with a near-zero-cost pseudo-label denoising technique leveraging deep feature clustering. Our method completely eliminates the need for data augmentation and handcrafted feature design, achieving endto-end pseudo-label self-training. Competitive performance is demonstrated across three typical scenarios in the SAMPLE dataset, with the highest accuracy of 98.65% achieved in Scenario III. The relevant code is available at: https://github.com/TheGreatTreatsby/SAMPLE_MMD.
Key wordsSAR-ATR    domain adaptation    unsupervised learning    deep features    SAMPLE   
收稿日期: 2025-04-07;
通讯作者: 刘志刚 (Email: dennylzg@163.com).     E-mail: dennylzg@163.com
作者简介: Luo Sheng-Jie, Ph.D. candidate, obtained a master's degree in nuclear science and technology from Rocket Force University of Engineering in 2023. At present, he is studying for a doctorate in nuclear science and technology at Rocket Force University of Engineering. Committed to the research of SAR target automatic recognition and SAR image simulation
引用本文:   
. 基于域自适应与深度特征聚类伪标签去噪的异源SAR图像分类方法[J]. 应用地球物理, 2025, 22(4): 944-956.
. Domain Adaptation with Deep Feature Clustering for Pseudo-Label Denoising in Heterogeneous SAR Image Classification[J]. APPLIED GEOPHYSICS, 2025, 22(4): 944-956.
 
没有本文参考文献
[1] 陈学华, 杨威, 贺振华, 钟文丽, 文晓涛. 三维多尺度体曲率的算法及应用[J]. 应用地球物理, 2012, 9(1): 65-72.
版权所有 © 2011 应用地球物理
技术支持 北京玛格泰克科技发展有限公司