An Intelligent Denoising Method for Jamming Pattern Recognition under Noisy Conditions

C. H. Yao, Y. Li, Y. F. Chen, K. X. Cheng

An Intelligent Denoising Method for Jamming Pattern Recognition under Noisy Conditions

Číslo: 2/2024
Periodikum: Radioengineering Journal
DOI: 10.13164/re.2024.0322

Klíčová slova: Jamming pattern recognition, automatic threshold denoising, shallow layer denoising, convolutional neural network

Pro získání musíte mít účet v Citace PRO.

Přečíst po přihlášení

Anotace: Accurate identification of jamming patterns is a crucial decision-making basis for anti-jamming in wireless communication systems. Current works still face challenges in fully considering the substantial influence of environmental noise on identification performance. To address the issue, this paper proposes an automatic threshold denoising-based deep learning model. The proposed method aims to mitigate the impact of noise on recognition performance within the feature space. Considering the challenges posed by non-linear transformations in deep denoising, a shallow denoising approach based on deep learning is proposed. By constructing a dataset of 12 jamming patterns under noisy conditions, the proposed method exhibits excellent recognition performance and maintains a low computational cost.