English

SSwsrNet: A Semi-Supervised Few-Shot Learning Framework for Wireless Signal Recognition

Signal Processing 2024-04-04 v1

Abstract

Wireless signal recognition (WSR) is crucial in modern and future wireless communication networks since it aims to identify properties of the received signal. Although many deep learning-based WSR models have been developed, they still rely on a large amount of labeled training data. Thus, they cannot tackle the few-sample problem in the practically and dynamically changing wireless communication environment. To overcome this challenge, a novel SSwsrNet framework is proposed by using the deep residual shrinkage network (DRSN) and semi-supervised learning. The DRSN can learn discriminative features from noisy signals. Moreover, a modular semi-supervised learning method that combines labeled and unlabeled data using MixMatch is exploited to further improve the classification performance under few-sample conditions. Extensive simulation results on automatic modulation classification (AMC) and wireless technology classification (WTC) demonstrate that our proposed WSR scheme can achieve better performance than the benchmark schemes in terms of classification accuracy. This novel method enables more robust and adaptive signal recognition for next-generation wireless networks.

Keywords

Cite

@article{arxiv.2404.02467,
  title  = {SSwsrNet: A Semi-Supervised Few-Shot Learning Framework for Wireless Signal Recognition},
  author = {Hao Zhang and Fuhui Zhou and Qihui Wu and Naofal Al-Dhahir},
  journal= {arXiv preprint arXiv:2404.02467},
  year   = {2024}
}

Comments

accpeted by IEEE Transactions on Communications

R2 v1 2026-06-28T15:42:38.040Z