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基于MAE及改进CRN的跨时间域辐射源个体识别

张建 贾勇 钟晓玲 张伟 姚光乐 赵少坤

指挥控制与仿真2026,Vol.48Issue(3):68-75,8.
指挥控制与仿真2026,Vol.48Issue(3):68-75,8.DOI:10.3969/j.issn.1673-3819.2026.03.008

基于MAE及改进CRN的跨时间域辐射源个体识别

Cross-time domain emitter source identification method based on MAE and improved CRN

张建 1贾勇 2钟晓玲 1张伟 3姚光乐 1赵少坤1

作者信息

  • 1. 成都理工大学,四川 成都 610059
  • 2. 成都理工大学,四川 成都 610059||电子科技大学长三角研究院,浙江 衢州 324000
  • 3. 电子科技大学,四川 成都 611731||电磁空间安全全国重点实验室,四川 成都 610036
  • 折叠

摘要

Abstract

In order to solve the problems of weak model generalization ability and low signal recognition accuracy of existing emitter identification methods in cross-time domain scenarios,an emitter identification method based on a masked autoencod-er(MAE)and an improved Compression Residual Network(CRN)is proposed.The emitter identification effect is improved through a two-stage processing strategy:In the first stage,MAE with Vision Transformer(VIT)architecture is adopted.The random masking pre-training is performed on unlabeled data to infer global characteristics of the signal from local spectral in-formation,and the attention mechanism is utilized to establish effective correlations between them,thereby enhancing the model's generalization ability.In the second stage,the pre-trained VIT encoder is combined with CRN as the backbone net-work.Labeled data is used to fine-tune the model,capture more critical subtle features of the signal,learn more structured latent representations of the data,and improve the overall representation ability and recognition performance.Experimental results show that the proposed method improves the signal recognition rate of 6 types of radio emitters by 3.81%-16.18%compared with existing VIT-based methods under four different time batches.

关键词

掩码自编码器/注意力机制/压缩残差网络/辐射源个体识别

Key words

masked autoencoder/attention mechanisms/compression residual network/radiation source identification

分类

信息技术与安全科学

引用本文复制引用

张建,贾勇,钟晓玲,张伟,姚光乐,赵少坤..基于MAE及改进CRN的跨时间域辐射源个体识别[J].指挥控制与仿真,2026,48(3):68-75,8.

基金项目

国家自然科学基金(U20B2070) (U20B2070)

指挥控制与仿真

1673-3819

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