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Automatic Radar Intra-Pulse Signal Modulation Classification Using the Supervised Contrastive Learning
by
Guo, Yicheng
, Cai, Jingjing
, Cao, Xianghai
in
Accuracy
/ Analysis
/ class
/ Classification
/ Computational linguistics
/ contrastive learning
/ Deep learning
/ Electronic countermeasures
/ Image retrieval
/ Information processing
/ Labels
/ Language processing
/ Learning
/ Methods
/ Modulation
/ Multilayer perceptrons
/ Natural language interfaces
/ neural networks
/ Radar
/ Radar systems
/ Self-supervised learning
/ Signal classification
/ signal modulation classification
/ Signal quality
/ supervised contrastive loss
/ Technology application
/ Training
/ two-stage training
2024
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Automatic Radar Intra-Pulse Signal Modulation Classification Using the Supervised Contrastive Learning
by
Guo, Yicheng
, Cai, Jingjing
, Cao, Xianghai
in
Accuracy
/ Analysis
/ class
/ Classification
/ Computational linguistics
/ contrastive learning
/ Deep learning
/ Electronic countermeasures
/ Image retrieval
/ Information processing
/ Labels
/ Language processing
/ Learning
/ Methods
/ Modulation
/ Multilayer perceptrons
/ Natural language interfaces
/ neural networks
/ Radar
/ Radar systems
/ Self-supervised learning
/ Signal classification
/ signal modulation classification
/ Signal quality
/ supervised contrastive loss
/ Technology application
/ Training
/ two-stage training
2024
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Do you wish to request the book?
Automatic Radar Intra-Pulse Signal Modulation Classification Using the Supervised Contrastive Learning
by
Guo, Yicheng
, Cai, Jingjing
, Cao, Xianghai
in
Accuracy
/ Analysis
/ class
/ Classification
/ Computational linguistics
/ contrastive learning
/ Deep learning
/ Electronic countermeasures
/ Image retrieval
/ Information processing
/ Labels
/ Language processing
/ Learning
/ Methods
/ Modulation
/ Multilayer perceptrons
/ Natural language interfaces
/ neural networks
/ Radar
/ Radar systems
/ Self-supervised learning
/ Signal classification
/ signal modulation classification
/ Signal quality
/ supervised contrastive loss
/ Technology application
/ Training
/ two-stage training
2024
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Automatic Radar Intra-Pulse Signal Modulation Classification Using the Supervised Contrastive Learning
Journal Article
Automatic Radar Intra-Pulse Signal Modulation Classification Using the Supervised Contrastive Learning
2024
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Overview
The modulation classification technology for radar intra-pulse signals is important in the electronic countermeasures field. As the high quality labeled radar signals are difficult to be captured in the real applications, the signal modulation classification base on the limited number of labeled samples is playing a more and more important role. To relieve the requirement of the labeled samples, many self-supervised learning (SeSL) models exist. However, as they cannot fully explore the information of the labeled samples and rely significantly on the unlabeled samples, highly time-consuming processing of the pseudo-labels of the unlabeled samples is caused. To solve these problems, a supervised learning (SL) model, using the contrastive learning (CL) method (SL-CL), is proposed in this paper, which achieves a high classification accuracy, even adopting limited number of labeled training samples. The SL-CL model uses a two-stage training structure, in which the CL method is used in the first stage to effectively capture the features of samples, then the multilayer perceptron is applied in the second stage for the classification. Especially, the supervised contrastive loss is constructed to fully exploring the label information, which efficiently increases the classification accuracy. In the experiments, the SL-CL outperforms the comparison models in the situation of limited number of labeled samples available, which reaches 94% classification accuracy using 50 samples per class at 5 dB SNR.
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