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An Adaptive Deep Ensemble Learning for Specific Emitter Identification
by
Wang, Xue
, Guo, Lishu
, Zou, Decai
, Gao, Shuaihe
, Shang, Peng
, Liu, Pengfei
in
adaptive deep ensemble learners
/ Aircraft
/ Algorithms
/ Asymmetry
/ Communications equipment
/ Datasets
/ Decision-making
/ Deep learning
/ Entropy
/ Fourier transforms
/ hybrid losses
/ Neural networks
/ Noise control
/ Optimization
/ radio frequency fingerprints
/ specific emitter identification
/ Spectrum analysis
/ Wavelet transforms
2025
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An Adaptive Deep Ensemble Learning for Specific Emitter Identification
by
Wang, Xue
, Guo, Lishu
, Zou, Decai
, Gao, Shuaihe
, Shang, Peng
, Liu, Pengfei
in
adaptive deep ensemble learners
/ Aircraft
/ Algorithms
/ Asymmetry
/ Communications equipment
/ Datasets
/ Decision-making
/ Deep learning
/ Entropy
/ Fourier transforms
/ hybrid losses
/ Neural networks
/ Noise control
/ Optimization
/ radio frequency fingerprints
/ specific emitter identification
/ Spectrum analysis
/ Wavelet transforms
2025
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Do you wish to request the book?
An Adaptive Deep Ensemble Learning for Specific Emitter Identification
by
Wang, Xue
, Guo, Lishu
, Zou, Decai
, Gao, Shuaihe
, Shang, Peng
, Liu, Pengfei
in
adaptive deep ensemble learners
/ Aircraft
/ Algorithms
/ Asymmetry
/ Communications equipment
/ Datasets
/ Decision-making
/ Deep learning
/ Entropy
/ Fourier transforms
/ hybrid losses
/ Neural networks
/ Noise control
/ Optimization
/ radio frequency fingerprints
/ specific emitter identification
/ Spectrum analysis
/ Wavelet transforms
2025
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An Adaptive Deep Ensemble Learning for Specific Emitter Identification
Journal Article
An Adaptive Deep Ensemble Learning for Specific Emitter Identification
2025
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Overview
Specific emitter identification (SEI), which classifies radio transmitters by extracting hardware-intrinsic radio frequency fingerprints (RFFs), faces critical challenges in noise robustness, generalization under limited training data and class imbalance. To address these limitations, we propose adaptive deep ensemble learning (ADEL)—a framework that integrates heterogeneous neural networks including convolutional neural networks (CNN), multilayer perception (MLP) and transformer for hierarchical feature extraction. Crucially, ADEL also adopts adaptive weighted predictions of the three base classifiers based on reconstruction errors and hybrid losses for robust classification. The methodology employs (1) three heterogeneous neural networks for robust feature extraction; (2) the hybrid losses refine feature space structure and preserve feature integrity for better feature generalization; and (3) collaborative decision-making via adaptive weighted reconstruction errors of the base learners for precise inference. Extensive experiments are performed to validate the effectiveness of ADEL. The results indicate that the proposed method significantly outperforms other competing methods. ADEL establishes a new SEI paradigm through robust feature extraction and adaptive decision integrity, enabling potential deployment in space target identification and situational awareness under limited training samples and imbalanced classes conditions.
Publisher
MDPI AG
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